Katja Hofmann
Katja Hofmann
Microsoft Research
Adresse e-mail validée de microsoft.com - Page d'accueil
Citée par
Citée par
The Malmo Platform for Artificial Intelligence Experimentation.
M Johnson, K Hofmann, T Hutton, D Bignell
IJCAI, 4246-4247, 2016
Towards conversational recommender systems
K Christakopoulou, F Radlinski, K Hofmann
Proceedings of the 22nd ACM SIGKDD international conference on knowledge …, 2016
Fast context adaptation via meta-learning
L Zintgraf, K Shiarli, V Kurin, K Hofmann, S Whiteson
International Conference on Machine Learning, 7693-7702, 2019
Balancing exploration and exploitation in listwise and pairwise online learning to rank for information retrieval
K Hofmann, S Whiteson, M de Rijke
Information Retrieval 16 (1), 63-90, 2013
A probabilistic method for inferring preferences from clicks
K Hofmann, S Whiteson, M de Rijke
CIKM 2011: Proceedings of the Twentieth Conference on Information and …, 2011
Meta reinforcement learning with latent variable gaussian processes
S Sæmundsson, K Hofmann, MP Deisenroth
arXiv preprint arXiv:1803.07551, 2018
Reusing historical interaction data for faster online learning to rank for IR
K Hofmann, A Schuth, S Whiteson, M De Rijke
Proceedings of the sixth ACM international conference on Web search and data …, 2013
Online evaluation for information retrieval
K Hofmann, L Li, F Radlinski
Foundations and trends in information retrieval 10 (1), 1-117, 2016
Generating a non-english subjectivity lexicon: Relations that matter
V Jijkoun, K Hofmann
Proceedings of the 12th Conference of the European Chapter of the ACL (EACL …, 2009
Varibad: A very good method for bayes-adaptive deep rl via meta-learning
L Zintgraf, K Shiarlis, M Igl, S Schulze, Y Gal, K Hofmann, S Whiteson
arXiv preprint arXiv:1910.08348, 2019
Balancing exploration and exploitation in learning to rank online
K Hofmann, S Whiteson, M De Rijke
European Conference on Information Retrieval, 251-263, 2011
On user interactions with query auto-completion
B Mitra, M Shokouhi, F Radlinski, K Hofmann
Proceedings of the 37th international ACM SIGIR conference on Research …, 2014
Contextual factors for finding similar experts
K Hofmann, K Balog, T Bogers, M De Rijke
Journal of the American society for information science and technology 61 (5 …, 2010
A new AI evaluation cosmos: Ready to play the game?
J Hernández-Orallo, M Baroni, J Bieger, N Chmait, DL Dowe, K Hofmann, ...
AI Magazine 38 (3), 66-69, 2017
An eye-tracking study of user interactions with query auto completion
K Hofmann, B Mitra, F Radlinski, M Shokouhi
Proceedings of the 23rd ACM International Conference on Conference on …, 2014
Generalization in reinforcement learning with selective noise injection and information bottleneck
M Igl, K Ciosek, Y Li, S Tschiatschek, C Zhang, S Devlin, K Hofmann
arXiv preprint arXiv:1910.12911, 2019
Better exploration with optimistic actor-critic
K Ciosek, Q Vuong, R Loftin, K Hofmann
arXiv preprint arXiv:1910.12807, 2019
Contextual dueling bandits
M Dudík, K Hofmann, RE Schapire, A Slivkins, M Zoghi
Conference on Learning Theory, 563-587, 2015
Lerot: An online learning to rank framework
A Schuth, K Hofmann, S Whiteson, M de Rijke
Proceedings of the 2013 workshop on Living labs for information retrieval …, 2013
Fidelity, soundness, and efficiency of interleaved comparison methods
K Hofmann, S Whiteson, MD Rijke
ACM Transactions on Information Systems (TOIS) 31 (4), 1-43, 2013
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