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Ashish Kapoor

Researcher at Microsoft

Publications -  234
Citations -  11775

Ashish Kapoor is an academic researcher from Microsoft. The author has contributed to research in topics: Computer science & Probabilistic logic. The author has an hindex of 49, co-authored 217 publications receiving 9542 citations. Previous affiliations of Ashish Kapoor include Indian Institutes of Technology & IBM.

Papers
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Proceedings Article

Safety-Aware Algorithms for Adversarial Contextual Bandit.

TL;DR: This work develops a meta algorithm leveraging online mirror descent for the full information setting and extends it to contextual bandit with risk constraints setting using expert advice, which can achieve near-optimal regret in terms of minimizing the total cost.
Book ChapterDOI

Located hidden random fields: learning discriminative parts for object detection

TL;DR: Experiments on benchmark datasets show that the use of discriminative parts leads to state-of-the-art detection and segmentation performance, with the additional benefit of obtaining a labeling of the object's component parts.
Proceedings ArticleDOI

Active Visual Recognition with Expertise Estimation in Crowdsourcing

TL;DR: A noise resilient probabilistic model for active learning of a Gaussian process classifier from crowds, i.e., a set of noisy labelers, that explicitly models both the overall label noises and the expertise level of each individual labeler in two levels of flip models is presented.
Journal ArticleDOI

A Joint Gaussian Process Model for Active Visual Recognition with Expertise Estimation in Crowdsourcing

TL;DR: A noise resilient probabilistic model for active learning of a Gaussian process classifier from crowds, i.e., a set of noisy labelers, that explicitly models both the overall label noise and the expertise level of each individual labeler with two levels of flip models is presented.
Proceedings ArticleDOI

Which faces to tag: Adding prior constraints into active learning

TL;DR: An algorithm is introduced that guides the user to tag faces in the best possible order during a face recognition assisted tagging scenario using a probabilistic discriminative model that models the posterior distributions by propagating label information using a message passing scheme.