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Dive into the research topics where Vaishnavh Nagarajan is active.

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Featured researches published by Vaishnavh Nagarajan.


international world wide web conferences | 2016

Incorporating Side Information in Tensor Completion

Hemank Lamba; Vaishnavh Nagarajan; Kijung Shin; Naji Shajarisales

Matrix and tensor completion techniques have proven useful in many applications such as recommender systems, image/video restoration, and web search. We explore the idea of using external information in completing missing values in tensors. In this work, we present a framework that employs side information as kernel matrices for tensor factorization. We apply our framework to problems of recommender systems and video restoration and show that our framework effectively deals with the cold-start problem.


Autonomous Agents and Multi-Agent Systems | 2017

Every team deserves a second chance: an extended study on predicting team performance

Leandro Soriano Marcolino; Aravind S. Lakshminarayanan; Vaishnavh Nagarajan; Milind Tambe

Voting among different agents is a powerful tool in problem solving, and it has been widely applied to improve the performance in finding the correct answer to complex problems. We present a novel benefit of voting, that has not been observed before: we can use the voting patterns to assess the performance of a team and predict their final outcome. This prediction can be executed at any moment during problem-solving and it is completely domain independent. Hence, it can be used to identify when a team is failing, allowing an operator to take remedial procedures (such as changing team members, the voting rule, or increasing the allocation of resources). We present three main theoretical results: (1) we show a theoretical explanation of why our prediction method works; (2) contrary to what would be expected based on a simpler explanation using classical voting models, we show that we can make accurate predictions irrespective of the strength (i.e., performance) of the teams, and that in fact, the prediction can work better for diverse teams composed of different agents than uniform teams made of copies of the best agent; (3) we show that the quality of our prediction increases with the size of the action space. We perform extensive experimentation in two different domains: Computer Go and Ensemble Learning. In Computer Go, we obtain high quality predictions about the final outcome of games. We analyze the prediction accuracy for three different teams with different levels of diversity and strength, and show that the prediction works significantly better for a diverse team. Additionally, we show that our method still works well when trained with games against one adversary, but tested with games against another, showing the generality of the learned functions. Moreover, we evaluate four different board sizes, and experimentally confirm better predictions in larger board sizes. We analyze in detail the learned prediction functions, and how they change according to each team and action space size. In order to show that our method is domain independent, we also present results in Ensemble Learning, where we make online predictions about the performance of a team of classifiers, while they are voting to classify sets of items. We study a set of classical classification algorithms from machine learning, in a data-set of hand-written digits, and we are able to make high-quality predictions about the final performance of two different teams. Since our approach is domain independent, it can be easily applied to a variety of other domains.


neural information processing systems | 2017

Gradient descent GAN optimization is locally stable

Vaishnavh Nagarajan; J. Zico Kolter


adaptive agents and multi-agents systems | 2015

Every Team Deserves a Second Chance: Identifying when Things Go Wrong

Vaishnavh Nagarajan; Leandro Soriano Marcolino; Milind Tambe


national conference on artificial intelligence | 2015

Every team deserves a second chance: identifying when things go wrong (student abstract version)

Vaishnavh Nagarajan; Leandro Soriano Marcolino; Milind Tambe


arXiv: Learning | 2015

A Reinforcement Learning Approach to Online Learning of Decision Trees.

Abhinav Garlapati; Aditi Raghunathan; Vaishnavh Nagarajan; Balaraman Ravindran


conference on learning theory | 2017

Learning-Theoretic Foundations of Algorithm Configuration for Combinatorial Partitioning Problems

Maria-Florina Balcan; Vaishnavh Nagarajan; Ellen Vitercik; Colin White


algorithmic learning theory | 2017

Lifelong Learning in Costly Feature Spaces

Maria-Florina Balcan; Avrim Blum; Vaishnavh Nagarajan


arXiv: Data Structures and Algorithms | 2016

Learning the best algorithm for max-cut, clustering, and other partitioning problems.

Maria-Florina Balcan; Vaishnavh Nagarajan; Ellen Vitercik; Colin White


national conference on artificial intelligence | 2015

Every team makes mistakes:an initial report on predicting failure in teamwork

Vaishnavh Nagarajan; Leandro Soriano Marcolino; Milind Tambe

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Leandro Soriano Marcolino

University of Southern California

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Milind Tambe

University of Southern California

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Colin White

Carnegie Mellon University

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Ellen Vitercik

Carnegie Mellon University

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Avrim Blum

Carnegie Mellon University

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Hemank Lamba

Carnegie Mellon University

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J. Zico Kolter

Carnegie Mellon University

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Kijung Shin

Carnegie Mellon University

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