LIVIVO - The Search Portal for Life Sciences

zur deutschen Oberfläche wechseln
Advanced search

Search results

Result 1 - 10 of total 43

Search options

  1. Book ; Online: Tensor Programs V

    Yang, Greg / Hu, Edward J. / Babuschkin, Igor / Sidor, Szymon / Liu, Xiaodong / Farhi, David / Ryder, Nick / Pachocki, Jakub / Chen, Weizhu / Gao, Jianfeng

    Tuning Large Neural Networks via Zero-Shot Hyperparameter Transfer

    2022  

    Abstract: Hyperparameter (HP) tuning in deep learning is an expensive process, prohibitively so for neural networks (NNs) with billions of parameters. We show that, in the recently discovered Maximal Update Parametrization (muP), many optimal HPs remain stable ... ...

    Abstract Hyperparameter (HP) tuning in deep learning is an expensive process, prohibitively so for neural networks (NNs) with billions of parameters. We show that, in the recently discovered Maximal Update Parametrization (muP), many optimal HPs remain stable even as model size changes. This leads to a new HP tuning paradigm we call muTransfer: parametrize the target model in muP, tune the HP indirectly on a smaller model, and zero-shot transfer them to the full-sized model, i.e., without directly tuning the latter at all. We verify muTransfer on Transformer and ResNet. For example, 1) by transferring pretraining HPs from a model of 13M parameters, we outperform published numbers of BERT-large (350M parameters), with a total tuning cost equivalent to pretraining BERT-large once; 2) by transferring from 40M parameters, we outperform published numbers of the 6.7B GPT-3 model, with tuning cost only 7% of total pretraining cost. A Pytorch implementation of our technique can be found at github.com/microsoft/mup and installable via `pip install mup`.

    Comment: NeurIPS 2021
    Keywords Computer Science - Machine Learning ; Condensed Matter - Disordered Systems and Neural Networks ; Computer Science - Neural and Evolutionary Computing
    Subject code 612
    Publishing date 2022-03-07
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

    More links

    Kategorien

  2. Book ; Online: Unsupervised Neural Machine Translation with Generative Language Models Only

    Han, Jesse Michael / Babuschkin, Igor / Edwards, Harrison / Neelakantan, Arvind / Xu, Tao / Polu, Stanislas / Ray, Alex / Shyam, Pranav / Ramesh, Aditya / Radford, Alec / Sutskever, Ilya

    2021  

    Abstract: We show how to derive state-of-the-art unsupervised neural machine translation systems from generatively pre-trained language models. Our method consists of three steps: few-shot amplification, distillation, and backtranslation. We first use the zero- ... ...

    Abstract We show how to derive state-of-the-art unsupervised neural machine translation systems from generatively pre-trained language models. Our method consists of three steps: few-shot amplification, distillation, and backtranslation. We first use the zero-shot translation ability of large pre-trained language models to generate translations for a small set of unlabeled sentences. We then amplify these zero-shot translations by using them as few-shot demonstrations for sampling a larger synthetic dataset. This dataset is distilled by discarding the few-shot demonstrations and then fine-tuning. During backtranslation, we repeatedly generate translations for a set of inputs and then fine-tune a single language model on both directions of the translation task at once, ensuring cycle-consistency by swapping the roles of gold monotext and generated translations when fine-tuning. By using our method to leverage GPT-3's zero-shot translation capability, we achieve a new state-of-the-art in unsupervised translation on the WMT14 English-French benchmark, attaining a BLEU score of 42.1.

    Comment: 10 pages
    Keywords Computer Science - Computation and Language ; Computer Science - Artificial Intelligence
    Subject code 410
    Publishing date 2021-10-11
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

    More links

    Kategorien

  3. Article ; Online: Competition-level code generation with AlphaCode.

    Li, Yujia / Choi, David / Chung, Junyoung / Kushman, Nate / Schrittwieser, Julian / Leblond, Rémi / Eccles, Tom / Keeling, James / Gimeno, Felix / Dal Lago, Agustin / Hubert, Thomas / Choy, Peter / de Masson d'Autume, Cyprien / Babuschkin, Igor / Chen, Xinyun / Huang, Po-Sen / Welbl, Johannes / Gowal, Sven / Cherepanov, Alexey /
    Molloy, James / Mankowitz, Daniel J / Sutherland Robson, Esme / Kohli, Pushmeet / de Freitas, Nando / Kavukcuoglu, Koray / Vinyals, Oriol

    Science (New York, N.Y.)

    2022  Volume 378, Issue 6624, Page(s) 1092–1097

    Abstract: Programming is a powerful and ubiquitous problem-solving tool. Systems that can assist programmers or even generate programs themselves could make programming more productive and accessible. Recent transformer-based neural network models show impressive ... ...

    Abstract Programming is a powerful and ubiquitous problem-solving tool. Systems that can assist programmers or even generate programs themselves could make programming more productive and accessible. Recent transformer-based neural network models show impressive code generation abilities yet still perform poorly on more complex tasks requiring problem-solving skills, such as competitive programming problems. Here, we introduce AlphaCode, a system for code generation that achieved an average ranking in the top 54.3% in simulated evaluations on recent programming competitions on the Codeforces platform. AlphaCode solves problems by generating millions of diverse programs using specially trained transformer-based networks and then filtering and clustering those programs to a maximum of just 10 submissions. This result marks the first time an artificial intelligence system has performed competitively in programming competitions.
    MeSH term(s) Artificial Intelligence
    Language English
    Publishing date 2022-12-08
    Publishing country United States
    Document type Journal Article
    ZDB-ID 128410-1
    ISSN 1095-9203 ; 0036-8075
    ISSN (online) 1095-9203
    ISSN 0036-8075
    DOI 10.1126/science.abq1158
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  4. Book ; Online: Unsupervised Doodling and Painting with Improved SPIRAL

    Mellor, John F. J. / Park, Eunbyung / Ganin, Yaroslav / Babuschkin, Igor / Kulkarni, Tejas / Rosenbaum, Dan / Ballard, Andy / Weber, Theophane / Vinyals, Oriol / Eslami, S. M. Ali

    2019  

    Abstract: We investigate using reinforcement learning agents as generative models of images (extending arXiv:1804.01118). A generative agent controls a simulated painting environment, and is trained with rewards provided by a discriminator network simultaneously ... ...

    Abstract We investigate using reinforcement learning agents as generative models of images (extending arXiv:1804.01118). A generative agent controls a simulated painting environment, and is trained with rewards provided by a discriminator network simultaneously trained to assess the realism of the agent's samples, either unconditional or reconstructions. Compared to prior work, we make a number of improvements to the architectures of the agents and discriminators that lead to intriguing and at times surprising results. We find that when sufficiently constrained, generative agents can learn to produce images with a degree of visual abstraction, despite having only ever seen real photographs (no human brush strokes). And given enough time with the painting environment, they can produce images with considerable realism. These results show that, under the right circumstances, some aspects of human drawing can emerge from simulated embodiment, without the need for external supervision, imitation or social cues. Finally, we note the framework's potential for use in creative applications.

    Comment: See https://learning-to-paint.github.io for an interactive version of this paper, with videos
    Keywords Computer Science - Computer Vision and Pattern Recognition ; Computer Science - Machine Learning ; Statistics - Machine Learning ; I.2 ; I.4
    Subject code 006 ; 004
    Publishing date 2019-10-02
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

    More links

    Kategorien

  5. Book ; Online: Competition-Level Code Generation with AlphaCode

    Li, Yujia / Choi, David / Chung, Junyoung / Kushman, Nate / Schrittwieser, Julian / Leblond, Rémi / Eccles, Tom / Keeling, James / Gimeno, Felix / Lago, Agustin Dal / Hubert, Thomas / Choy, Peter / d'Autume, Cyprien de Masson / Babuschkin, Igor / Chen, Xinyun / Huang, Po-Sen / Welbl, Johannes / Gowal, Sven / Cherepanov, Alexey /
    Molloy, James / Mankowitz, Daniel J. / Robson, Esme Sutherland / Kohli, Pushmeet / de Freitas, Nando / Kavukcuoglu, Koray / Vinyals, Oriol

    2022  

    Abstract: Programming is a powerful and ubiquitous problem-solving tool. Developing systems that can assist programmers or even generate programs independently could make programming more productive and accessible, yet so far incorporating innovations in AI has ... ...

    Abstract Programming is a powerful and ubiquitous problem-solving tool. Developing systems that can assist programmers or even generate programs independently could make programming more productive and accessible, yet so far incorporating innovations in AI has proven challenging. Recent large-scale language models have demonstrated an impressive ability to generate code, and are now able to complete simple programming tasks. However, these models still perform poorly when evaluated on more complex, unseen problems that require problem-solving skills beyond simply translating instructions into code. For example, competitive programming problems which require an understanding of algorithms and complex natural language remain extremely challenging. To address this gap, we introduce AlphaCode, a system for code generation that can create novel solutions to these problems that require deeper reasoning. In simulated evaluations on recent programming competitions on the Codeforces platform, AlphaCode achieved on average a ranking of top 54.3% in competitions with more than 5,000 participants. We found that three key components were critical to achieve good and reliable performance: (1) an extensive and clean competitive programming dataset for training and evaluation, (2) large and efficient-to-sample transformer-based architectures, and (3) large-scale model sampling to explore the search space, followed by filtering based on program behavior to a small set of submissions.

    Comment: 74 pages
    Keywords Computer Science - Programming Languages ; Computer Science - Artificial Intelligence ; Computer Science - Machine Learning
    Subject code 000
    Publishing date 2022-02-08
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

    More links

    Kategorien

  6. Book ; Online: Evaluating Large Language Models Trained on Code

    Chen, Mark / Tworek, Jerry / Jun, Heewoo / Yuan, Qiming / Pinto, Henrique Ponde de Oliveira / Kaplan, Jared / Edwards, Harri / Burda, Yuri / Joseph, Nicholas / Brockman, Greg / Ray, Alex / Puri, Raul / Krueger, Gretchen / Petrov, Michael / Khlaaf, Heidy / Sastry, Girish / Mishkin, Pamela / Chan, Brooke / Gray, Scott /
    Ryder, Nick / Pavlov, Mikhail / Power, Alethea / Kaiser, Lukasz / Bavarian, Mohammad / Winter, Clemens / Tillet, Philippe / Such, Felipe Petroski / Cummings, Dave / Plappert, Matthias / Chantzis, Fotios / Barnes, Elizabeth / Herbert-Voss, Ariel / Guss, William Hebgen / Nichol, Alex / Paino, Alex / Tezak, Nikolas / Tang, Jie / Babuschkin, Igor / Balaji, Suchir / Jain, Shantanu / Saunders, William / Hesse, Christopher / Carr, Andrew N. / Leike, Jan / Achiam, Josh / Misra, Vedant / Morikawa, Evan / Radford, Alec / Knight, Matthew / Brundage, Miles / Murati, Mira / Mayer, Katie / Welinder, Peter / McGrew, Bob / Amodei, Dario / McCandlish, Sam / Sutskever, Ilya / Zaremba, Wojciech

    2021  

    Abstract: We introduce Codex, a GPT language model fine-tuned on publicly available code from GitHub, and study its Python code-writing capabilities. A distinct production version of Codex powers GitHub Copilot. On HumanEval, a new evaluation set we release to ... ...

    Abstract We introduce Codex, a GPT language model fine-tuned on publicly available code from GitHub, and study its Python code-writing capabilities. A distinct production version of Codex powers GitHub Copilot. On HumanEval, a new evaluation set we release to measure functional correctness for synthesizing programs from docstrings, our model solves 28.8% of the problems, while GPT-3 solves 0% and GPT-J solves 11.4%. Furthermore, we find that repeated sampling from the model is a surprisingly effective strategy for producing working solutions to difficult prompts. Using this method, we solve 70.2% of our problems with 100 samples per problem. Careful investigation of our model reveals its limitations, including difficulty with docstrings describing long chains of operations and with binding operations to variables. Finally, we discuss the potential broader impacts of deploying powerful code generation technologies, covering safety, security, and economics.

    Comment: corrected typos, added references, added authors, added acknowledgements
    Keywords Computer Science - Machine Learning
    Subject code 005
    Publishing date 2021-07-07
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

    More links

    Kategorien

  7. Article ; Online: Grandmaster level in StarCraft II using multi-agent reinforcement learning.

    Vinyals, Oriol / Babuschkin, Igor / Czarnecki, Wojciech M / Mathieu, Michaël / Dudzik, Andrew / Chung, Junyoung / Choi, David H / Powell, Richard / Ewalds, Timo / Georgiev, Petko / Oh, Junhyuk / Horgan, Dan / Kroiss, Manuel / Danihelka, Ivo / Huang, Aja / Sifre, Laurent / Cai, Trevor / Agapiou, John P / Jaderberg, Max /
    Vezhnevets, Alexander S / Leblond, Rémi / Pohlen, Tobias / Dalibard, Valentin / Budden, David / Sulsky, Yury / Molloy, James / Paine, Tom L / Gulcehre, Caglar / Wang, Ziyu / Pfaff, Tobias / Wu, Yuhuai / Ring, Roman / Yogatama, Dani / Wünsch, Dario / McKinney, Katrina / Smith, Oliver / Schaul, Tom / Lillicrap, Timothy / Kavukcuoglu, Koray / Hassabis, Demis / Apps, Chris / Silver, David

    Nature

    2019  Volume 575, Issue 7782, Page(s) 350–354

    Abstract: Many real-world applications require artificial agents to compete and coordinate with other agents in complex environments. As a stepping stone to this goal, the domain of StarCraft has emerged as an important challenge for artificial intelligence ... ...

    Abstract Many real-world applications require artificial agents to compete and coordinate with other agents in complex environments. As a stepping stone to this goal, the domain of StarCraft has emerged as an important challenge for artificial intelligence research, owing to its iconic and enduring status among the most difficult professional esports and its relevance to the real world in terms of its raw complexity and multi-agent challenges. Over the course of a decade and numerous competitions
    MeSH term(s) Artificial Intelligence ; Humans ; Learning ; Reinforcement, Psychology ; Video Games
    Language English
    Publishing date 2019-10-30
    Publishing country England
    Document type Journal Article
    ZDB-ID 120714-3
    ISSN 1476-4687 ; 0028-0836
    ISSN (online) 1476-4687
    ISSN 0028-0836
    DOI 10.1038/s41586-019-1724-z
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  8. Book ; Online: GPT-4 Technical Report

    OpenAI / : / Achiam, Josh / Adler, Steven / Agarwal, Sandhini / Ahmad, Lama / Akkaya, Ilge / Aleman, Florencia Leoni / Almeida, Diogo / Altenschmidt, Janko / Altman, Sam / Anadkat, Shyamal / Avila, Red / Babuschkin, Igor / Balaji, Suchir / Balcom, Valerie / Baltescu, Paul / Bao, Haiming / Bavarian, Mo /
    Belgum, Jeff / Bello, Irwan / Berdine, Jake / Bernadett-Shapiro, Gabriel / Berner, Christopher / Bogdonoff, Lenny / Boiko, Oleg / Boyd, Madelaine / Brakman, Anna-Luisa / Brockman, Greg / Brooks, Tim / Brundage, Miles / Button, Kevin / Cai, Trevor / Campbell, Rosie / Cann, Andrew / Carey, Brittany / Carlson, Chelsea / Carmichael, Rory / Chan, Brooke / Chang, Che / Chantzis, Fotis / Chen, Derek / Chen, Sully / Chen, Ruby / Chen, Jason / Chen, Mark / Chess, Ben / Cho, Chester / Chu, Casey / Chung, Hyung Won / Cummings, Dave / Currier, Jeremiah / Dai, Yunxing / Decareaux, Cory / Degry, Thomas / Deutsch, Noah / Deville, Damien / Dhar, Arka / Dohan, David / Dowling, Steve / Dunning, Sheila / Ecoffet, Adrien / Eleti, Atty / Eloundou, Tyna / Farhi, David / Fedus, Liam / Felix, Niko / Fishman, Simón Posada / Forte, Juston / Fulford, Isabella / Gao, Leo / Georges, Elie / Gibson, Christian / Goel, Vik / Gogineni, Tarun / Goh, Gabriel / Gontijo-Lopes, Rapha / Gordon, Jonathan / Grafstein, Morgan / Gray, Scott / Greene, Ryan / Gross, Joshua / Gu, Shixiang Shane / Guo, Yufei / Hallacy, Chris / Han, Jesse / Harris, Jeff / He, Yuchen / Heaton, Mike / Heidecke, Johannes / Hesse, Chris / Hickey, Alan / Hickey, Wade / Hoeschele, Peter / Houghton, Brandon / Hsu, Kenny / Hu, Shengli / Hu, Xin / Huizinga, Joost / Jain, Shantanu / Jain, Shawn / Jang, Joanne / Jiang, Angela / Jiang, Roger / Jin, Haozhun / Jin, Denny / Jomoto, Shino / Jonn, Billie / Jun, Heewoo / Kaftan, Tomer / Kaiser, Łukasz / Kamali, Ali / Kanitscheider, Ingmar / Keskar, Nitish Shirish / Khan, Tabarak / Kilpatrick, Logan / Kim, Jong Wook / Kim, Christina / Kim, Yongjik / Kirchner, Hendrik / Kiros, Jamie / Knight, Matt / Kokotajlo, Daniel / Kondraciuk, Łukasz / Kondrich, Andrew / Konstantinidis, Aris / Kosic, Kyle / Krueger, Gretchen / Kuo, Vishal / Lampe, Michael / Lan, Ikai / Lee, Teddy / Leike, Jan / Leung, Jade / Levy, Daniel / Li, Chak Ming / Lim, Rachel / Lin, Molly / Lin, Stephanie / Litwin, Mateusz / Lopez, Theresa / Lowe, Ryan / Lue, Patricia / Makanju, Anna / Malfacini, Kim / Manning, Sam / Markov, Todor / Markovski, Yaniv / Martin, Bianca / Mayer, Katie / Mayne, Andrew / McGrew, Bob / McKinney, Scott Mayer / McLeavey, Christine / McMillan, Paul / McNeil, Jake / Medina, David / Mehta, Aalok / Menick, Jacob / Metz, Luke / Mishchenko, Andrey / Mishkin, Pamela / Monaco, Vinnie / Morikawa, Evan / Mossing, Daniel / Mu, Tong / Murati, Mira / Murk, Oleg / Mély, David / Nair, Ashvin / Nakano, Reiichiro / Nayak, Rajeev / Neelakantan, Arvind / Ngo, Richard / Noh, Hyeonwoo / Ouyang, Long / O'Keefe, Cullen / Pachocki, Jakub / Paino, Alex / Palermo, Joe / Pantuliano, Ashley / Parascandolo, Giambattista / Parish, Joel / Parparita, Emy / Passos, Alex / Pavlov, Mikhail / Peng, Andrew / Perelman, Adam / Peres, Filipe de Avila Belbute / Petrov, Michael / Pinto, Henrique Ponde de Oliveira / Michael / Pokorny / Pokrass, Michelle / Pong, Vitchyr / Powell, Tolly / Power, Alethea / Power, Boris / Proehl, Elizabeth / Puri, Raul / Radford, Alec / Rae, Jack / Ramesh, Aditya / Raymond, Cameron / Real, Francis / Rimbach, Kendra / Ross, Carl / Rotsted, Bob / Roussez, Henri / Ryder, Nick / Saltarelli, Mario / Sanders, Ted / Santurkar, Shibani / Sastry, Girish / Schmidt, Heather / Schnurr, David / Schulman, John / Selsam, Daniel / Sheppard, Kyla / Sherbakov, Toki / Shieh, Jessica / Shoker, Sarah / Shyam, Pranav / Sidor, Szymon / Sigler, Eric / Simens, Maddie / Sitkin, Jordan / Slama, Katarina / Sohl, Ian / Sokolowsky, Benjamin / Song, Yang / Staudacher, Natalie / Such, Felipe Petroski / Summers, Natalie / Sutskever, Ilya / Tang, Jie / Tezak, Nikolas / Thompson, Madeleine / Tillet, Phil / Tootoonchian, Amin / Tseng, Elizabeth / Tuggle, Preston / Turley, Nick / Tworek, Jerry / Uribe, Juan Felipe Cerón / Vallone, Andrea / Vijayvergiya, Arun / Voss, Chelsea / Wainwright, Carroll / Wang, Justin Jay / Wang, Alvin / Wang, Ben / Ward, Jonathan / Wei, Jason / Weinmann, CJ / Welihinda, Akila / Welinder, Peter / Weng, Jiayi / Weng, Lilian / Wiethoff, Matt / Willner, Dave / Winter, Clemens / Wolrich, Samuel / Wong, Hannah / Workman, Lauren / Wu, Sherwin / Wu, Jeff / Wu, Michael / Xiao, Kai / Xu, Tao / Yoo, Sarah / Yu, Kevin / Yuan, Qiming / Zaremba, Wojciech / Zellers, Rowan / Zhang, Chong / Zhang, Marvin / Zhao, Shengjia / Zheng, Tianhao / Zhuang, Juntang / Zhuk, William / Zoph, Barret

    2023  

    Abstract: We report the development of GPT-4, a large-scale, multimodal model which can accept image and text inputs and produce text outputs. While less capable than humans in many real-world scenarios, GPT-4 exhibits human-level performance on various ... ...

    Abstract We report the development of GPT-4, a large-scale, multimodal model which can accept image and text inputs and produce text outputs. While less capable than humans in many real-world scenarios, GPT-4 exhibits human-level performance on various professional and academic benchmarks, including passing a simulated bar exam with a score around the top 10% of test takers. GPT-4 is a Transformer-based model pre-trained to predict the next token in a document. The post-training alignment process results in improved performance on measures of factuality and adherence to desired behavior. A core component of this project was developing infrastructure and optimization methods that behave predictably across a wide range of scales. This allowed us to accurately predict some aspects of GPT-4's performance based on models trained with no more than 1/1,000th the compute of GPT-4.

    Comment: 100 pages; updated authors list
    Keywords Computer Science - Computation and Language ; Computer Science - Artificial Intelligence
    Publishing date 2023-03-15
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

    More links

    Kategorien

  9. Article: Studies of the resonance structure in

    Aaij, R / Adeva, B / Adinolfi, M / Ajaltouni, Z / Akar, S / Albrecht, J / Alessio, F / Alexander, M / Alfonso Albero, A / Ali, S / Alkhazov, G / Alvarez Cartelle, P / Alves, A A / Amato, S / Amerio, S / Amhis, Y / An, L / Anderlini, L / Andreassi, G /
    Andreotti, M / Andrews, J E / Appleby, R B / Archilli, F / d'Argent, P / Arnau Romeu, J / Artamonov, A / Artuso, M / Aslanides, E / Atzeni, M / Auriemma, G / Baalouch, M / Babuschkin, I / Bachmann, S / Back, J J / Badalov, A / Baesso, C / Baker, S / Balagura, V / Baldini, W / Baranov, A / Barlow, R J / Barschel, C / Barsuk, S / Barter, W / Baryshnikov, F / Batozskaya, V / Battista, V / Bay, A / Beaucourt, L / Beddow, J / Bedeschi, F / Bediaga, I / Beiter, A / Bel, L J / Beliy, N / Bellee, V / Belloli, N / Belous, K / Belyaev, I / Ben-Haim, E / Bencivenni, G / Benson, S / Beranek, S / Berezhnoy, A / Bernet, R / Berninghoff, D / Bertholet, E / Bertolin, A / Betancourt, C / Betti, F / Bettler, M O / van Beuzekom, M / Bezshyiko, Ia / Bifani, S / Billoir, P / Birnkraut, A / Bizzeti, A / Bjørn, M / Blake, T / Blanc, F / Blusk, S / Bocci, V / Boettcher, T / Bondar, A / Bondar, N / Bordyuzhin, I / Borghi, S / Borisyak, M / Borsato, M / Bossu, F / Boubdir, M / Bowcock, T J V / Bowen, E / Bozzi, C / Braun, S / Brodzicka, J / Brundu, D / Buchanan, E / Burr, C / Bursche, A / Buytaert, J / Byczynski, W / Cadeddu, S / Cai, H / Calabrese, R / Calladine, R / Calvi, M / Calvo Gomez, M / Camboni, A / Campana, P / Campora Perez, D H / Capriotti, L / Carbone, A / Carboni, G / Cardinale, R / Cardini, A / Carniti, P / Carson, L / Carvalho Akiba, K / Casse, G / Cassina, L / Cattaneo, M / Cavallero, G / Cenci, R / Chamont, D / Chapman, M G / Charles, M / Charpentier, Ph / Chatzikonstantinidis, G / Chefdeville, M / Chen, S / Cheung, S F / Chitic, S-G / Chobanova, V / Chrzaszcz, M / Chubykin, A / Ciambrone, P / Cid Vidal, X / Ciezarek, G / Clarke, P E L / Clemencic, M / Cliff, H V / Closier, J / Coco, V / Cogan, J / Cogneras, E / Cogoni, V / Cojocariu, L / Collins, P / Colombo, T / Comerma-Montells, A / Contu, A / Coombs, G / Coquereau, S / Corti, G / Corvo, M / Costa Sobral, C M / Couturier, B / Cowan, G A / Craik, D C / Crocombe, A / Cruz Torres, M / Currie, R / D'Ambrosio, C / Da Cunha Marinho, F / Da Silva, C L / Dall'Occo, E / Dalseno, J / Davis, A / De Aguiar Francisco, O / De Bruyn, K / De Capua, S / De Cian, M / De Miranda, J M / De Paula, L / De Serio, M / De Simone, P / Dean, C T / Decamp, D / Del Buono, L / Dembinski, H-P / Demmer, M / Dendek, A / Derkach, D / Deschamps, O / Dettori, F / Dey, B / Di Canto, A / Di Nezza, P / Dijkstra, H / Dordei, F / Dorigo, M / Dosil Suárez, A / Douglas, L / Dovbnya, A / Dreimanis, K / Dufour, L / Dujany, G / Durante, P / Durham, J M / Dutta, D / Dzhelyadin, R / Dziewiecki, M / Dziurda, A / Dzyuba, A / Easo, S / Ebert, M / Egede, U / Egorychev, V / Eidelman, S / Eisenhardt, S / Eitschberger, U / Ekelhof, R / Eklund, L / Ely, S / Esen, S / Evans, H M / Evans, T / Falabella, A / Farley, N / Farry, S / Fazzini, D / Federici, L / Ferguson, D / Fernandez, G / Fernandez Declara, P / Fernandez Prieto, A / Ferrari, F / Ferreira Lopes, L / Ferreira Rodrigues, F / Ferro-Luzzi, M / Filippov, S / Fini, R A / Fiorini, M / Firlej, M / Fitzpatrick, C / Fiutowski, T / Fleuret, F / Fontana, M / Fontanelli, F / Forty, R / Franco Lima, V / Frank, M / Frei, C / Fu, J / Funk, W / Furfaro, E / Färber, C / Gabriel, E / Gallas Torreira, A / Galli, D / Gallorini, S / Gambetta, S / Gandelman, M / Gandini, P / Gao, Y / Garcia Martin, L M / García Pardiñas, J / Garra Tico, J / Garrido, L / Garsed, P J / Gascon, D / Gaspar, C / Gavardi, L / Gazzoni, G / Gerick, D / Gersabeck, E / Gersabeck, M / Gershon, T / Ghez, Ph / Gianì, S / Gibson, V / Girard, O G / Giubega, L / Gizdov, K / Gligorov, V V / Golubkov, D / Golutvin, A / Gomes, A / Gorelov, I V / Gotti, C / Govorkova, E / Grabowski, J P / Graciani Diaz, R / Granado Cardoso, L A / Graugés, E / Graverini, E / Graziani, G / Grecu, A / Greim, R / Griffith, P / Grillo, L / Gruber, L / Gruberg Cazon, B R / Grünberg, O / Gushchin, E / Guz, Yu / Gys, T / Göbel, C / Hadavizadeh, T / Hadjivasiliou, C / Haefeli, G / Haen, C / Haines, S C / Hamilton, B / Han, X / Hancock, T H / Hansmann-Menzemer, S / Harnew, N / Harnew, S T / Hasse, C / Hatch, M / He, J / Hecker, M / Heinicke, K / Heister, A / Hennessy, K / Henrard, P / Henry, L / van Herwijnen, E / Heß, M / Hicheur, A / Hill, D / Hopchev, P H / Hu, W / Huang, W / Huard, Z C / Hulsbergen, W / Humair, T / Hushchyn, M / Hutchcroft, D / Ibis, P / Idzik, M / Ilten, P / Jacobsson, R / Jalocha, J / Jans, E / Jawahery, A / Jiang, F / John, M / Johnson, D / Jones, C R / Joram, C / Jost, B / Jurik, N / Kandybei, S / Karacson, M / Kariuki, J M / Karodia, S / Kazeev, N / Kecke, M / Keizer, F / Kelsey, M / Kenzie, M / Ketel, T / Khairullin, E / Khanji, B / Khurewathanakul, C / Kirn, T / Klaver, S / Klimaszewski, K / Klimkovich, T / Koliiev, S / Kolpin, M / Kopecna, R / Koppenburg, P / Kosmyntseva, A / Kotriakhova, S / Kozeiha, M / Kravchuk, L / Kreps, M / Kress, F / Krokovny, P / Krzemien, W / Kucewicz, W / Kucharczyk, M / Kudryavtsev, V / Kuonen, A K / Kvaratskheliya, T / Lacarrere, D / Lafferty, G / Lai, A / Lanfranchi, G / Langenbruch, C / Latham, T / Lazzeroni, C / Le Gac, R / Leflat, A / Lefrançois, J / Lefèvre, R / Lemaitre, F / Lemos Cid, E / Leroy, O / Lesiak, T / Leverington, B / Li, P-R / Li, T / Li, Y / Li, Z / Likhomanenko, T / Lindner, R / Lionetto, F / Lisovskyi, V / Liu, X / Loh, D / Loi, A / Longstaff, I / Lopes, J H / Lucchesi, D / Lucio Martinez, M / Luo, H / Lupato, A / Luppi, E / Lupton, O / Lusiani, A / Lyu, X / Machefert, F / Maciuc, F / Macko, V / Mackowiak, P / Maddrell-Mander, S / Maev, O / Maguire, K / Maisuzenko, D / Majewski, M W / Malde, S / Malecki, B / Malinin, A / Maltsev, T / Manca, G / Mancinelli, G / Marangotto, D / Maratas, J / Marchand, J F / Marconi, U / Marin Benito, C / Marinangeli, M / Marino, P / Marks, J / Martellotti, G / Martin, M / Martinelli, M / Martinez Santos, D / Martinez Vidal, F / Massafferri, A / Matev, R / Mathad, A / Mathe, Z / Matteuzzi, C / Mauri, A / Maurice, E / Maurin, B / Mazurov, A / McCann, M / McNab, A / McNulty, R / Mead, J V / Meadows, B / Meaux, C / Meier, F / Meinert, N / Melnychuk, D / Merk, M / Merli, A / Michielin, E / Milanes, D A / Millard, E / Minard, M-N / Minzoni, L / Mitzel, D S / Mogini, A / Molina Rodriguez, J / Mombächer, T / Monroy, I A / Monteil, S / Morandin, M / Morello, M J / Morgunova, O / Moron, J / Morris, A B / Mountain, R / Muheim, F / Mulder, M / Müller, D / Müller, J / Müller, K / Müller, V / Naik, P / Nakada, T / Nandakumar, R / Nandi, A / Nasteva, I / Needham, M / Neri, N / Neubert, S / Neufeld, N / Neuner, M / Nguyen, T D / Nguyen-Mau, C / Nieswand, S / Niet, R / Nikitin, N / Nikodem, T / Nogay, A / O'Hanlon, D P / Oblakowska-Mucha, A / Obraztsov, V / Ogilvy, S / Oldeman, R / Onderwater, C J G / Ossowska, A / Otalora Goicochea, J M / Owen, P / Oyanguren, A / Pais, P R / Palano, A / Palutan, M / Papanestis, A / Pappagallo, M / Pappalardo, L L / Parker, W / Parkes, C / Passaleva, G / Pastore, A / Patel, M / Patrignani, C / Pearce, A / Pellegrino, A / Penso, G / Pepe Altarelli, M / Perazzini, S / Pereima, D / Perret, P / Pescatore, L / Petridis, K / Petrolini, A / Petrov, A / Petruzzo, M / Picatoste Olloqui, E / Pietrzyk, B / Pietrzyk, G / Pikies, M / Pinci, D / Pisani, F / Pistone, A / Piucci, A / Placinta, V / Playfer, S / Plo Casasus, M / Polci, F / Lener, M Poli / Poluektov, A / Polyakov, I / Polycarpo, E / Pomery, G J / Ponce, S / Popov, A / Popov, D / Poslavskii, S / Potterat, C / Price, E / Prisciandaro, J / Prouve, C / Pugatch, V / Puig Navarro, A / Pullen, H / Punzi, G / Qian, W / Qin, J / Quagliani, R / Quintana, B / Rachwal, B / Rademacker, J H / Rama, M / Ramos Pernas, M / Rangel, M S / Raniuk, I / Ratnikov, F / Raven, G / Ravonel Salzgeber, M / Reboud, M / Redi, F / Reichert, S / Dos Reis, A C / Remon Alepuz, C / Renaudin, V / Ricciardi, S / Richards, S / Rihl, M / Rinnert, K / Robbe, P / Robert, A / Rodrigues, A B / Rodrigues, E / Rodriguez Lopez, J A / Rogozhnikov, A / Roiser, S / Rollings, A / Romanovskiy, V / Romero Vidal, A / Rotondo, M / Rudolph, M S / Ruf, T / Ruiz Valls, P / Ruiz Vidal, J / Saborido Silva, J J / Sadykhov, E / Sagidova, N / Saitta, B / Salustino Guimaraes, V / Sanchez Mayordomo, C / Sanmartin Sedes, B / Santacesaria, R / Santamarina Rios, C / Santimaria, M / Santovetti, E / Sarpis, G / Sarti, A / Satriano, C / Satta, A / Saunders, D M / Savrina, D / Schael, S / Schellenberg, M / Schiller, M / Schindler, H / Schmelling, M / Schmelzer, T / Schmidt, B / Schneider, O / Schopper, A / Schreiner, H F / Schubiger, M / Schune, M H / Schwemmer, R / Sciascia, B / Sciubba, A / Semennikov, A / Sepulveda, E S / Sergi, A / Serra, N / Serrano, J / Sestini, L / Seyfert, P / Shapkin, M / Shapoval, I / Shcheglov, Y / Shears, T / Shekhtman, L / Shevchenko, V / Siddi, B G / Silva Coutinho, R / Silva de Oliveira, L / Simi, G / Simone, S / Sirendi, M / Skidmore, N / Skwarnicki, T / Smith, I T / Smith, J / Smith, M / Soares Lavra, L / Sokoloff, M D / Soler, F J P / Souza De Paula, B / Spaan, B / Spradlin, P / Sridharan, S / Stagni, F / Stahl, M / Stahl, S / Stefko, P / Stefkova, S / Steinkamp, O / Stemmle, S / Stenyakin, O / Stepanova, M / Stevens, H / Stone, S / Storaci, B / Stracka, S / Stramaglia, M E / Straticiuc, M / Straumann, U / Sun, J / Sun, L / Swientek, K / Syropoulos, V / Szumlak, T / Szymanski, M / T'Jampens, S / Tayduganov, A / Tekampe, T / Tellarini, G / Teubert, F / Thomas, E / van Tilburg, J / Tilley, M J / Tisserand, V / Tobin, M / Tolk, S / Tomassetti, L / Tonelli, D / Tourinho Jadallah Aoude, R / Tournefier, E / Traill, M / Tran, M T / Tresch, M / Trisovic, A / Tsaregorodtsev, A / Tsopelas, P / Tully, A / Tuning, N / Ukleja, A / Usachov, A / Ustyuzhanin, A / Uwer, U / Vacca, C / Vagner, A / Vagnoni, V / Valassi, A / Valat, S / Valenti, G / Vazquez Gomez, R / Vazquez Regueiro, P / Vecchi, S / van Veghel, M / Velthuis, J J / Veltri, M / Veneziano, G / Venkateswaran, A / Verlage, T A / Vernet, M / Vesterinen, M / Viana Barbosa, J V / Vieira, D / Vieites Diaz, M / Viemann, H / Vilasis-Cardona, X / Vitti, M / Volkov, V / Vollhardt, A / Voneki, B / Vorobyev, A / Vorobyev, V / Voß, C / de Vries, J A / Vázquez Sierra, C / Waldi, R / Walsh, J / Wang, J / Wang, Y / Ward, D R / Wark, H M / Watson, N K / Websdale, D / Weiden, A / Weisser, C / Whitehead, M / Wicht, J / Wilkinson, G / Wilkinson, M / Williams, M / Williams, T / Wilson, F F / Wimberley, J / Winn, M / Wishahi, J / Wislicki, W / Witek, M / Wormser, G / Wotton, S A / Wyllie, K / Xie, Y / Xu, M / Xu, Q / Xu, Z / Yang, Z / Yao, Y / Yin, H / Yu, J / Yuan, X / Yushchenko, O / Zarebski, K A / Zavertyaev, M / Zhang, L / Zhang, Y / Zhelezov, A / Zheng, Y / Zhu, X / Zhukov, V / Zonneveld, J B / Zucchelli, S

    The European physical journal. C, Particles and fields

    2018  Volume 78, Issue 6, Page(s) 443

    Abstract: Amplitude models are constructed to describe the resonance structure ... ...

    Abstract Amplitude models are constructed to describe the resonance structure of
    Language English
    Publishing date 2018-06-02
    Publishing country France
    Document type Journal Article
    ZDB-ID 1459069-4
    ISSN 1434-6052 ; 1434-6044
    ISSN (online) 1434-6052
    ISSN 1434-6044
    DOI 10.1140/epjc/s10052-018-5758-4
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  10. Article ; Online: Measurement of the Ratio of Branching Fractions B(B_{c}^{+}→J/ψτ^{+}ν_{τ})/B(B_{c}^{+}→J/ψμ^{+}ν_{μ}).

    Aaij, R / Adeva, B / Adinolfi, M / Ajaltouni, Z / Akar, S / Albrecht, J / Alessio, F / Alexander, M / Alfonso Albero, A / Ali, S / Alkhazov, G / Alvarez Cartelle, P / Alves, A A / Amato, S / Amerio, S / Amhis, Y / An, L / Anderlini, L / Andreassi, G /
    Andreotti, M / Andrews, J E / Appleby, R B / Archilli, F / d'Argent, P / Arnau Romeu, J / Artamonov, A / Artuso, M / Aslanides, E / Atzeni, M / Auriemma, G / Baalouch, M / Babuschkin, I / Bachmann, S / Back, J J / Badalov, A / Baesso, C / Baker, S / Balagura, V / Baldini, W / Baranov, A / Barlow, R J / Barschel, C / Barsuk, S / Barter, W / Baryshnikov, F / Batozskaya, V / Battista, V / Bay, A / Beaucourt, L / Beddow, J / Bedeschi, F / Bediaga, I / Beiter, A / Bel, L J / Beliy, N / Bellee, V / Belloli, N / Belous, K / Belyaev, I / Ben-Haim, E / Bencivenni, G / Benson, S / Beranek, S / Berezhnoy, A / Bernet, R / Berninghoff, D / Bertholet, E / Bertolin, A / Betancourt, C / Betti, F / Bettler, M-O / van Beuzekom, M / Bezshyiko, Ia / Bifani, S / Billoir, P / Birnkraut, A / Bizzeti, A / Bjørn, M / Blake, T / Blanc, F / Blusk, S / Bocci, V / Boettcher, T / Bondar, A / Bondar, N / Bordyuzhin, I / Borghi, S / Borisyak, M / Borsato, M / Bossu, F / Boubdir, M / Bowcock, T J V / Bowen, E / Bozzi, C / Braun, S / Britton, T / Brodzicka, J / Brundu, D / Buchanan, E / Burr, C / Bursche, A / Buytaert, J / Byczynski, W / Cadeddu, S / Cai, H / Calabrese, R / Calladine, R / Calvi, M / Calvo Gomez, M / Camboni, A / Campana, P / Campora Perez, D H / Capriotti, L / Carbone, A / Carboni, G / Cardinale, R / Cardini, A / Carniti, P / Carson, L / Carvalho Akiba, K / Casse, G / Cassina, L / Cattaneo, M / Cavallero, G / Cenci, R / Chamont, D / Chapman, M G / Charles, M / Charpentier, Ph / Chatzikonstantinidis, G / Chefdeville, M / Chen, S / Cheung, S F / Chitic, S-G / Chobanova, V / Chrzaszcz, M / Chubykin, A / Ciambrone, P / Cid Vidal, X / Ciezarek, G / Clarke, P E L / Clemencic, M / Cliff, H V / Closier, J / Cogan, J / Cogneras, E / Cogoni, V / Cojocariu, L / Collins, P / Colombo, T / Comerma-Montells, A / Contu, A / Cook, A / Coombs, G / Coquereau, S / Corti, G / Corvo, M / Costa Sobral, C M / Couturier, B / Cowan, G A / Craik, D C / Crocombe, A / Cruz Torres, M / Currie, R / D'Ambrosio, C / Da Cunha Marinho, F / Dall'Occo, E / Dalseno, J / Davis, A / De Aguiar Francisco, O / De Bruyn, K / De Capua, S / De Cian, M / De Miranda, J M / De Paula, L / De Serio, M / De Simone, P / Dean, C T / Decamp, D / Del Buono, L / Dembinski, H-P / Demmer, M / Dendek, A / Derkach, D / Deschamps, O / Dettori, F / Dey, B / Di Canto, A / Di Nezza, P / Dijkstra, H / Dordei, F / Dorigo, M / Dosil Suárez, A / Douglas, L / Dovbnya, A / Dreimanis, K / Dufour, L / Dujany, G / Durante, P / Dzhelyadin, R / Dziewiecki, M / Dziurda, A / Dzyuba, A / Easo, S / Ebert, M / Egede, U / Egorychev, V / Eidelman, S / Eisenhardt, S / Eitschberger, U / Ekelhof, R / Eklund, L / Ely, S / Esen, S / Evans, H M / Evans, T / Falabella, A / Farley, N / Farry, S / Fazzini, D / Federici, L / Ferguson, D / Fernandez, G / Fernandez Declara, P / Fernandez Prieto, A / Ferrari, F / Ferreira Rodrigues, F / Ferro-Luzzi, M / Filippov, S / Fini, R A / Fiorini, M / Firlej, M / Fitzpatrick, C / Fiutowski, T / Fleuret, F / Fohl, K / Fontana, M / Fontanelli, F / Forshaw, D C / Forty, R / Franco Lima, V / Frank, M / Frei, C / Fu, J / Funk, W / Furfaro, E / Färber, C / Gabriel, E / Gallas Torreira, A / Galli, D / Gallorini, S / Gambetta, S / Gandelman, M / Gandini, P / Gao, Y / Garcia Martin, L M / García Pardiñas, J / Garra Tico, J / Garrido, L / Garsed, P J / Gascon, D / Gaspar, C / Gavardi, L / Gazzoni, G / Gerick, D / Gersabeck, E / Gersabeck, M / Gershon, T / Ghez, Ph / Gianì, S / Gibson, V / Girard, O G / Giubega, L / Gizdov, K / Gligorov, V V / Golubkov, D / Golutvin, A / Gomes, A / Gorelov, I V / Gotti, C / Govorkova, E / Grabowski, J P / Graciani Diaz, R / Granado Cardoso, L A / Graugés, E / Graverini, E / Graziani, G / Grecu, A / Greim, R / Griffith, P / Grillo, L / Gruber, L / Gruberg Cazon, B R / Grünberg, O / Gushchin, E / Guz, Yu / Gys, T / Göbel, C / Hadavizadeh, T / Hadjivasiliou, C / Haefeli, G / Haen, C / Haines, S C / Hamilton, B / Han, X / Hancock, T H / Hansmann-Menzemer, S / Harnew, N / Harnew, S T / Hasse, C / Hatch, M / He, J / Hecker, M / Heinicke, K / Heister, A / Hennessy, K / Henrard, P / Henry, L / van Herwijnen, E / Heß, M / Hicheur, A / Hill, D / Hombach, C / Hopchev, P H / Hu, W / Huard, Z C / Hulsbergen, W / Humair, T / Hushchyn, M / Hutchcroft, D / Ibis, P / Idzik, M / Ilten, P / Jacobsson, R / Jalocha, J / Jans, E / Jawahery, A / Jiang, F / John, M / Johnson, D / Jones, C R / Joram, C / Jost, B / Jurik, N / Kandybei, S / Karacson, M / Kariuki, J M / Karodia, S / Kazeev, N / Kecke, M / Keizer, F / Kelsey, M / Kenzie, M / Ketel, T / Khairullin, E / Khanji, B / Khurewathanakul, C / Kirn, T / Klaver, S / Klimaszewski, K / Klimkovich, T / Koliiev, S / Kolpin, M / Kopecna, R / Koppenburg, P / Kosmyntseva, A / Kotriakhova, S / Kozeiha, M / Kravchuk, L / Kreps, M / Kress, F / Krokovny, P / Kruse, F / Krzemien, W / Kucewicz, W / Kucharczyk, M / Kudryavtsev, V / Kuonen, A K / Kvaratskheliya, T / Lacarrere, D / Lafferty, G / Lai, A / Lanfranchi, G / Langenbruch, C / Latham, T / Lazzeroni, C / Le Gac, R / Leflat, A / Lefrançois, J / Lefèvre, R / Lemaitre, F / Lemos Cid, E / Leroy, O / Lesiak, T / Leverington, B / Li, P-R / Li, T / Li, Y / Li, Z / Likhomanenko, T / Lindner, R / Lionetto, F / Lisovskyi, V / Liu, X / Loh, D / Loi, A / Longstaff, I / Lopes, J H / Lucchesi, D / Lucio Martinez, M / Luo, H / Lupato, A / Luppi, E / Lupton, O / Lusiani, A / Lyu, X / Machefert, F / Maciuc, F / Macko, V / Mackowiak, P / Maddrell-Mander, S / Maev, O / Maguire, K / Maisuzenko, D / Majewski, M W / Malde, S / Malecki, B / Malinin, A / Maltsev, T / Manca, G / Mancinelli, G / Marangotto, D / Maratas, J / Marchand, J F / Marconi, U / Marin Benito, C / Marinangeli, M / Marino, P / Marks, J / Martellotti, G / Martin, M / Martinelli, M / Martinez Santos, D / Martinez Vidal, F / Massacrier, L M / Massafferri, A / Matev, R / Mathad, A / Mathe, Z / Matteuzzi, C / Mauri, A / Maurice, E / Maurin, B / Mazurov, A / McCann, M / McNab, A / McNulty, R / Mead, J V / Meadows, B / Meaux, C / Meier, F / Meinert, N / Melnychuk, D / Merk, M / Merli, A / Michielin, E / Milanes, D A / Millard, E / Minard, M-N / Minzoni, L / Mitzel, D S / Mogini, A / Molina Rodriguez, J / Mombächer, T / Monroy, I A / Monteil, S / Morandin, M / Morello, M J / Morgunova, O / Moron, J / Morris, A B / Mountain, R / Muheim, F / Mulder, M / Müller, D / Müller, J / Müller, K / Müller, V / Naik, P / Nakada, T / Nandakumar, R / Nandi, A / Nasteva, I / Needham, M / Neri, N / Neubert, S / Neufeld, N / Neuner, M / Nguyen, T D / Nguyen-Mau, C / Nieswand, S / Niet, R / Nikitin, N / Nikodem, T / Nogay, A / O'Hanlon, D P / Oblakowska-Mucha, A / Obraztsov, V / Ogilvy, S / Oldeman, R / Onderwater, C J G / Ossowska, A / Otalora Goicochea, J M / Owen, P / Oyanguren, A / Pais, P R / Palano, A / Palutan, M / Papanestis, A / Pappagallo, M / Pappalardo, L L / Parker, W / Parkes, C / Passaleva, G / Pastore, A / Patel, M / Patrignani, C / Pearce, A / Pellegrino, A / Penso, G / Pepe Altarelli, M / Perazzini, S / Perret, P / Pescatore, L / Petridis, K / Petrolini, A / Petrov, A / Petruzzo, M / Picatoste Olloqui, E / Pietrzyk, B / Pikies, M / Pinci, D / Pisani, F / Pistone, A / Piucci, A / Placinta, V / Playfer, S / Plo Casasus, M / Polci, F / Poli Lener, M / Poluektov, A / Polyakov, I / Polycarpo, E / Pomery, G J / Ponce, S / Popov, A / Popov, D / Poslavskii, S / Potterat, C / Price, E / Prisciandaro, J / Prouve, C / Pugatch, V / Puig Navarro, A / Pullen, H / Punzi, G / Qian, W / Quagliani, R / Quintana, B / Rachwal, B / Rademacker, J H / Rama, M / Ramos Pernas, M / Rangel, M S / Raniuk, I / Ratnikov, F / Raven, G / Ravonel Salzgeber, M / Reboud, M / Redi, F / Reichert, S / Dos Reis, A C / Remon Alepuz, C / Renaudin, V / Ricciardi, S / Richards, S / Rihl, M / Rinnert, K / Rives Molina, V / Robbe, P / Robert, A / Rodrigues, A B / Rodrigues, E / Rodriguez Lopez, J A / Rogozhnikov, A / Roiser, S / Rollings, A / Romanovskiy, V / Romero Vidal, A / Ronayne, J W / Rotondo, M / Rudolph, M S / Ruf, T / Ruiz Valls, P / Ruiz Vidal, J / Saborido Silva, J J / Sadykhov, E / Sagidova, N / Saitta, B / Salustino Guimaraes, V / Sanchez Mayordomo, C / Sanmartin Sedes, B / Santacesaria, R / Santamarina Rios, C / Santimaria, M / Santovetti, E / Sarpis, G / Sarti, A / Satriano, C / Satta, A / Saunders, D M / Savrina, D / Schael, S / Schellenberg, M / Schiller, M / Schindler, H / Schmelling, M / Schmelzer, T / Schmidt, B / Schneider, O / Schopper, A / Schreiner, H F / Schubiger, M / Schune, M-H / Schwemmer, R / Sciascia, B / Sciubba, A / Semennikov, A / Sepulveda, E S / Sergi, A / Serra, N / Serrano, J / Sestini, L / Seyfert, P / Shapkin, M / Shapoval, I / Shcheglov, Y / Shears, T / Shekhtman, L / Shevchenko, V / Siddi, B G / Silva Coutinho, R / Silva de Oliveira, L / Simi, G / Simone, S / Sirendi, M / Skidmore, N / Skwarnicki, T / Smith, E / Smith, I T / Smith, J / Smith, M / Soares Lavra, L / Sokoloff, M D / Soler, F J P / Souza De Paula, B / Spaan, B / Spradlin, P / Sridharan, S / Stagni, F / Stahl, M / Stahl, S / Stefko, P / Stefkova, S / Steinkamp, O / Stemmle, S / Stenyakin, O / Stepanova, M / Stevens, H / Stone, S / Storaci, B / Stracka, S / Stramaglia, M E / Straticiuc, M / Straumann, U / Sun, J / Sun, L / Sutcliffe, W / Swientek, K / Syropoulos, V / Szumlak, T / Szymanski, M / T'Jampens, S / Tayduganov, A / Tekampe, T / Tellarini, G / Teubert, F / Thomas, E / van Tilburg, J / Tilley, M J / Tisserand, V / Tobin, M / Tolk, S / Tomassetti, L / Tonelli, D / Toriello, F / Tourinho Jadallah Aoude, R / Tournefier, E / Traill, M / Tran, M T / Tresch, M / Trisovic, A / Tsaregorodtsev, A / Tsopelas, P / Tully, A / Tuning, N / Ukleja, A / Usachov, A / Ustyuzhanin, A / Uwer, U / Vacca, C / Vagner, A / Vagnoni, V / Valassi, A / Valat, S / Valenti, G / Vazquez Gomez, R / Vazquez Regueiro, P / Vecchi, S / van Veghel, M / Velthuis, J J / Veltri, M / Veneziano, G / Venkateswaran, A / Verlage, T A / Vernet, M / Vesterinen, M / Viana Barbosa, J V / Viaud, B / Vieira, D / Vieites Diaz, M / Viemann, H / Vilasis-Cardona, X / Vitti, M / Volkov, V / Vollhardt, A / Voneki, B / Vorobyev, A / Vorobyev, V / Voß, C / de Vries, J A / Vázquez Sierra, C / Waldi, R / Wallace, C / Wallace, R / Walsh, J / Wang, J / Ward, D R / Wark, H M / Watson, N K / Websdale, D / Weiden, A / Weisser, C / Whitehead, M / Wicht, J / Wilkinson, G / Wilkinson, M / Williams, M / Williams, M P / Williams, T / Wilson, F F / Wimberley, J / Winn, M / Wishahi, J / Wislicki, W / Witek, M / Wormser, G / Wotton, S A / Wraight, K / Wyllie, K / Xie, Y / Xu, M / Xu, Z / Yang, Z / Yao, Y / Yin, H / Yu, J / Yuan, X / Yushchenko, O / Zarebski, K A / Zavertyaev, M / Zhang, L / Zhang, Y / Zhelezov, A / Zheng, Y / Zhu, X / Zhukov, V / Zonneveld, J B / Zucchelli, S

    Physical review letters

    2018  Volume 120, Issue 12, Page(s) 121801

    Abstract: A measurement is reported of the ratio of branching fractions R(J/ψ)=B(B_{c}^{+}→J/ψτ^{+}ν_{τ})/B(B_{c}^{+}→J/ψμ^{+}ν_{μ}), where the τ^{+} lepton is identified in the decay mode τ^{+}→μ^{+}ν_{μ}ν[over ¯]_{τ}. This analysis uses a sample of proton-proton ...

    Abstract A measurement is reported of the ratio of branching fractions R(J/ψ)=B(B_{c}^{+}→J/ψτ^{+}ν_{τ})/B(B_{c}^{+}→J/ψμ^{+}ν_{μ}), where the τ^{+} lepton is identified in the decay mode τ^{+}→μ^{+}ν_{μ}ν[over ¯]_{τ}. This analysis uses a sample of proton-proton collision data corresponding to 3.0  fb^{-1} of integrated luminosity recorded with the LHCb experiment at center-of-mass energies of 7 and 8 TeV. A signal is found for the decay B_{c}^{+}→J/ψτ^{+}ν_{τ} at a significance of 3 standard deviations corrected for systematic uncertainty, and the ratio of the branching fractions is measured to be R(J/ψ)=0.71±0.17(stat)±0.18(syst). This result lies within 2 standard deviations above the range of central values currently predicted by the standard model.
    Language English
    Publishing date 2018-03-23
    Publishing country United States
    Document type Journal Article
    ZDB-ID 208853-8
    ISSN 1079-7114 ; 0031-9007
    ISSN (online) 1079-7114
    ISSN 0031-9007
    DOI 10.1103/PhysRevLett.120.121801
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

To top