Timezone: »
Workshop
High-energy particle physics, machine learning, and the HiggsML data challenge (HEPML)
Glen Cowan · Balázs Kégl · Kyle Cranmer · Gábor Melis · Tim Salimans · Vladimir Vava Gligorov · Daniel Whiteson · Lester Mackey · Wojciech Kotlowski · Roberto Díaz Morales · Pierre Baldi · Cecile Germain · David Rousseau · Isabelle Guyon · Tianqi Chen
Sat Dec 13 05:30 AM -- 03:30 PM (PST) @ Level 5, room 511 c
Author Information
Glen Cowan (Royal Holloway, University of London)
Balázs Kégl (Université Paris Saclay/CNRS)
Kyle Cranmer (New York University)
Gábor Melis (Google Deepmind)
Tim Salimans (Algoritmica)
Vladimir Vava Gligorov (CERN)
Daniel Whiteson (University of California Irvine)
Lester Mackey (Stanford)
Wojciech Kotlowski (Poznan University of Technology)
Roberto Díaz Morales (University Carlos III de Madrid)
Pierre Baldi (UC Irvine)
Cecile Germain (Universite Paris Sud)
David Rousseau (LAL-Orsay)
Particle physicist, studying the Higgs Boson on the ATLAS experiment at the LHC at CERN, passionate about applying ML algorithms to fundamental research. Organized the HiggsML challenge in 2014 and now the [TrackML challenge] (https://sites.google.com/site/trackmlparticle/home)
Isabelle Guyon (U. Paris-Saclay & ChaLearn)
Tianqi Chen (OctoML)
More from the Same Authors
-
2020 Poster: Deep Statistical Solvers »
Balthazar Donon · Zhengying Liu · Wenzhuo LIU · Isabelle Guyon · Antoine Marot · Marc Schoenauer -
2020 Poster: Pipeline PSRO: A Scalable Approach for Finding Approximate Nash Equilibria in Large Games »
Stephen Mcaleer · JB Lanier · Roy Fox · Pierre Baldi -
2019 Poster: Modeling Dynamic Functional Connectivity with Latent Factor Gaussian Processes »
Lingge Li · Dustin Pluta · Babak Shahbaba · Norbert Fortin · Hernando Ombao · Pierre Baldi -
2018 Workshop: CiML 2018 - Machine Learning competitions "in the wild": Playing in the real world or in real time »
Isabelle Guyon · Evelyne Viegas · Sergio Escalera · Jacob D Abernethy -
2018 Poster: Learning to Optimize Tensor Programs »
Tianqi Chen · Lianmin Zheng · Eddie Yan · Ziheng Jiang · Thierry Moreau · Luis Ceze · Carlos Guestrin · Arvind Krishnamurthy -
2018 Spotlight: Learning to Optimize Tensor Programs »
Tianqi Chen · Lianmin Zheng · Eddie Yan · Ziheng Jiang · Thierry Moreau · Luis Ceze · Carlos Guestrin · Arvind Krishnamurthy -
2018 Poster: On Neuronal Capacity »
Pierre Baldi · Roman Vershynin -
2018 Oral: On Neuronal Capacity »
Pierre Baldi · Roman Vershynin -
2017 Workshop: Machine Learning Challenges as a Research Tool »
Isabelle Guyon · Evelyne Viegas · Sergio Escalera · Jacob D Abernethy -
2017 Poster: Random Permutation Online Isotonic Regression »
Wojciech Kotlowski · Wouter Koolen · Alan Malek -
2016 Workshop: Machine Learning for Spatiotemporal Forecasting »
Florin Popescu · Sergio Escalera · Xavier Baró · Stephane Ayache · Isabelle Guyon -
2016 Workshop: Challenges in Machine Learning: Gaming and Education »
Isabelle Guyon · Evelyne Viegas · Balázs Kégl · Ben Hamner · Sergio Escalera -
2016 Demonstration: Biometric applications of CNNs: get a job at "Impending Technologies"! »
Sergio Escalera · Isabelle Guyon · Baiyu Chen · Marc P Quintana · Umut Güçlü · Yağmur Güçlütürk · Xavier Baró · Rob van Lier · Carlos Andujar · Marcel A. J. van Gerven · Bernhard E Boser · Luke Wang -
2016 Poster: Weight Normalization: A Simple Reparameterization to Accelerate Training of Deep Neural Networks »
Tim Salimans · Diederik Kingma -
2016 Oral: Weight Normalization: A Simple Reparameterization to Accelerate Training of Deep Neural Networks »
Tim Salimans · Diederik Kingma -
2016 Poster: Improving Variational Autoencoders with Inverse Autoregressive Flow »
Diederik Kingma · Tim Salimans · Rafal Jozefowicz · Peter Chen · Xi Chen · Ilya Sutskever · Max Welling -
2016 Poster: Improved Techniques for Training GANs »
Tim Salimans · Ian Goodfellow · Wojciech Zaremba · Vicki Cheung · Alec Radford · Peter Chen · Xi Chen -
2015 Workshop: Challenges in Machine Learning (CiML 2015): "Open Innovation" and "Coopetitions" »
Isabelle Guyon · Evelyne Viegas · Ben Hamner · Balázs Kégl -
2015 Workshop: Machine Learning Systems »
Alex Beutel · Tianqi Chen · Sameer Singh · Elaine Angelino · Markus Weimer · Joseph Gonzalez -
2015 Poster: A Complete Recipe for Stochastic Gradient MCMC »
Yi-An Ma · Tianqi Chen · Emily Fox -
2015 Poster: Measuring Sample Quality with Stein's Method »
Jackson Gorham · Lester Mackey -
2015 Spotlight: Measuring Sample Quality with Stein's Method »
Jackson Gorham · Lester Mackey -
2015 Poster: Variational Dropout and the Local Reparameterization Trick »
Diederik Kingma · Tim Salimans · Max Welling -
2014 Workshop: Challenges in Machine Learning workshop (CiML 2014) »
Isabelle Guyon · Evelyne Viegas · Percy Liang · Olga Russakovsky · Rinat Sergeev · Gábor Melis · Michele Sebag · Gustavo Stolovitzky · Jaume Bacardit · Michael S Kim · Ben Hamner -
2014 Poster: Searching for Higgs Boson Decay Modes with Deep Learning »
Peter Sadowski · Daniel Whiteson · Pierre Baldi -
2014 Spotlight: Searching for Higgs Boson Decay Modes with Deep Learning »
Peter Sadowski · Daniel Whiteson · Pierre Baldi -
2013 Workshop: NIPS 2013 Workshop on Causality: Large-scale Experiment Design and Inference of Causal Mechanisms »
Isabelle Guyon · Leon Bottou · Bernhard Schölkopf · Alexander Statnikov · Evelyne Viegas · james m robins -
2013 Poster: Understanding Dropout »
Pierre Baldi · Peter Sadowski -
2013 Oral: Understanding Dropout »
Pierre Baldi · Peter Sadowski -
2012 Poster: Deep Spatio-Temporal Architectures and Learning for Protein Structure Prediction »
Pietro Di Lena · Pierre Baldi · Ken Nagata -
2012 Spotlight: Deep Spatio-Temporal Architectures and Learning for Protein Structure Prediction »
Pietro Di Lena · Pierre Baldi · Ken Nagata -
2012 Demonstration: Gesture recognition with Kinect »
Isabelle Guyon -
2011 Poster: A Machine Learning Approach to Predict Chemical Reactions »
Matthew A Kayala · Pierre Baldi -
2011 Poster: Algorithms for Hyper-Parameter Optimization »
James Bergstra · Rémi Bardenet · Yoshua Bengio · Balázs Kégl -
2010 Workshop: Charting Chemical Space: Challenges and Opportunities for AI and Machine Learning »
Pierre Baldi · Klaus-Robert Müller · Gisbert Schneider -
2009 Workshop: Clustering: Science or art? Towards principled approaches »
Margareta Ackerman · Shai Ben-David · Avrim Blum · Isabelle Guyon · Ulrike von Luxburg · Robert Williamson · Reza Zadeh -
2009 Mini Symposium: Causality and Time Series Analysis »
Florin Popescu · Isabelle Guyon · Guido Nolte -
2009 Demonstration: Causality Workbench »
Isabelle Guyon -
2008 Workshop: Causality: objectives and assessment »
Isabelle Guyon · Dominik Janzing · Bernhard Schölkopf -
2007 Poster: Learning the 2-D Topology of Images »
Nicolas Le Roux · Yoshua Bengio · Pascal Lamblin · Marc Joliveau · Balázs Kégl -
2007 Demonstration: CLOP: a Matlab Learning Object Package »
Amir Reza Saffari Azar Alamdari · Isabelle Guyon · Hugo Jair Escalante · Gökhan H Bakir · Gavin Cawley -
2007 Poster: Mining Internet-Scale Software Repositories »
Erik Linstead · Paul Rigor, Ph.D. · sushil bajracharya · cristina lopes · Pierre Baldi -
2006 Workshop: Multi-level Inference Workshop and Model Selection Game »
Isabelle Guyon -
2006 Poster: A Scalable Machine Learning Approach to Go »
Lin Wu · Pierre Baldi -
2006 Talk: A Scalable Machine Learning Approach to Go »
Lin Wu · Pierre Baldi