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Dive into the research topics where Harish G. Ramaswamy is active.

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Featured researches published by Harish G. Ramaswamy.


international conference on data mining | 2016

Optimizing the Multiclass F-Measure via Biconcave Programming

Harikrishna Narasimhan; Weiwei Pan; Purushottam Kar; Pavlos Protopapas; Harish G. Ramaswamy

The F-measure and its variants are performance measures of choice for evaluating classification and retrieval tasks in the presence of severe class imbalance. It is thus highly desirable to be able to directly optimize these performance measures on large-scale data. Recent advances have shown that this is possible in the simple binary classification setting. However, scant progress exists in multiclass settings with a large number of classes where, in addition, class-imbalance is much more severe. The lack of progress is especially conspicuous for the macro-averaged F-measure, which is the widely preferred F-measure variant in multiclass settings due to its equal emphasis on rare classes. Known methods of optimization scale poorly for macro F-measure, often requiring run times that are exponential in the number of classes. We develop BEAM-F, the first efficient method for directly optimizing the macro F-measure in multiclass settings. The challenge here is the intractability of optimizing a sum of fractional-linear functions over the space of confusion matrices. We overcome this difficulty by formulating the problem as a biconcave maximization program and solve it using an efficient alternating maximization approach that involves a Frank-Wolfe based iterative solver. Our approach offers guaranteed convergence to a stationary point and experiments show that, for a range synthetic data sets and real-world applications, our method offers superior performance on problems exhibiting large class imbalance.


international conference on machine learning | 2016

Mixture proportion estimation via kernel embedding of distributions

Harish G. Ramaswamy; Clayton Scott; Ambuj Tewari


neural information processing systems | 2012

Classification Calibration Dimension for General Multiclass Losses

Harish G. Ramaswamy; Shivani Agarwal


Unknown Journal | 2013

Convex calibrated surrogates for low-rank loss matrices with applications to subset ranking losses

Harish G. Ramaswamy; Shivani Agarwal; Ambuj Tewari


international conference on machine learning | 2015

Consistent Multiclass Algorithms for Complex Performance Measures

Harikrishna Narasimhan; Harish G. Ramaswamy; Aadirupa Saha; Shivani Agarwal


Journal of Machine Learning Research | 2016

Convex calibration dimension for multiclass loss matrices

Harish G. Ramaswamy; Shivani Agarwal


arXiv: Learning | 2015

Consistent Algorithms for Multiclass Classification with a Reject Option.

Harish G. Ramaswamy; Ambuj Tewari; Shivani Agarwal


conference on learning theory | 2014

On the Consistency of Output Code Based Learning Algorithms for Multiclass Learning Problems

Harish G. Ramaswamy; Balaji Srinivasan Babu; Shivani Agarwal; Robert C. Williamson


neural information processing systems | 2013

Convex Calibrated Surrogates for Low-Rank Loss Matrices with Applications to Subset Ranking Losses

Harish G. Ramaswamy; Shivani Agarwal; Ambuj Tewari


international conference on machine learning | 2015

Convex Calibrated Surrogates for Hierarchical Classification

Harish G. Ramaswamy; Ambuj Tewari; Shivani Agarwal

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Shivani Agarwal

University of Illinois at Urbana–Champaign

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Aadirupa Saha

Indian Institute of Science

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Purushottam Kar

Indian Institute of Technology Kanpur

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Robert C. Williamson

Australian National University

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