Robert Nishihara
University of California, Berkeley
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Robert Nishihara.
computer vision and pattern recognition | 2017
David Lopez-Paz; Robert Nishihara; Soumith Chintala; Bernhard Schölkopf; Léon Bottou
This paper establishes the existence of observable footprints that reveal the causal dispositions of the object categories appearing in collections of images. We achieve this goal in two steps. First, we take a learning approach to observational causal discovery, and build a classifier that achieves state-of-the-art performance on finding the causal direction between pairs of random variables, given samples from their joint distribution. Second, we use our causal direction classifier to effectively distinguish between features of objects and features of their contexts in collections of static images. Our experiments demonstrate the existence of a relation between the direction of causality and the difference between objects and their contexts, and by the same token, the existence of observable signals that reveal the causal dispositions of objects.
arXiv: Distributed, Parallel, and Cluster Computing | 2017
Robert Nishihara; Philipp Moritz; Stephanie Wang; Alexey Tumanov; William Paul; Johann Schleier-Smith; Richard Liaw; Mehrdad Niknami; Michael I. Jordan; Ion Stoica
Machine learning applications are increasingly deployed not only to serve predictions using static models, but also as tightly-integrated components of feedback loops involving dynamic, real-time decision making. These applications pose a new set of requirements, none of which are difficult to achieve in isolation, but the combination of which creates a challenge for existing distributed execution frameworks: computation with millisecond latency at high throughput, adaptive construction of arbitrary task graphs, and execution of heterogeneous kernels over diverse sets of resources. We assert that a new distributed execution framework is needed for such ML applications and propose a candidate approach with a proof-of-concept architecture that achieves a 63x performance improvement over a state-of-the-art execution framework for a representative application.
international conference on machine learning | 2015
Robert Nishihara; Laurent Lessard; Benjamin Recht; Andrew Packard; Michael I. Jordan
international conference on learning representations | 2016
Philipp Moritz; Robert Nishihara; Ion Stoica; Michael I. Jordan
international conference on artificial intelligence and statistics | 2016
Philipp Moritz; Robert Nishihara; Michael I. Jordan
neural information processing systems | 2014
Robert Nishihara; Stefanie Jegelka; Michael I. Jordan
Journal of Machine Learning Research | 2014
Robert Nishihara; Iain Murray; Ryan P. Adams
arXiv: Distributed, Parallel, and Cluster Computing | 2017
Philipp Moritz; Robert Nishihara; Stephanie Wang; Alexey Tumanov; Richard Liaw; Eric Liang; William Paul; Michael I. Jordan; Ion Stoica
arXiv: Machine Learning | 2013
Robert Nishihara; Thomas P. Minka; Daniel Tarlow
arXiv: Artificial Intelligence | 2017
Eric Liang; Richard Liaw; Robert Nishihara; Philipp Moritz; Roy Fox; Joseph E. Gonzalez; Ken Goldberg; Ion Stoica