Search Results for author: Arjun Seshadri

Found 7 papers, 1 papers with code

Learning Rich Rankings

1 code implementation NeurIPS 2020 Arjun Seshadri, Stephen Ragain, Johan Ugander

Although the foundations of ranking are well established, the ranking literature has primarily been focused on simple, unimodal models, e. g. the Mallows and Plackett-Luce models, that define distributions centered around a single total ordering.

RecXplainer: Amortized Attribute-based Personalized Explanations for Recommender Systems

no code implementations27 Nov 2022 Sahil Verma, Chirag Shah, John P. Dickerson, Anurag Beniwal, Narayanan Sadagopan, Arjun Seshadri

We evaluate RecXplainer on five real-world and large-scale recommendation datasets using five different kinds of recommender systems to demonstrate the efficacy of RecXplainer in capturing users' preferences over item attributes and using them to explain recommendations.

Attribute Recommendation Systems

Contrastive Learning for Interactive Recommendation in Fashion

no code implementations25 Jul 2022 Karin Sevegnani, Arjun Seshadri, Tian Wang, Anurag Beniwal, Julian McAuley, Alan Lu, Gerard Medioni

Recommender systems and search are both indispensable in facilitating personalization and ease of browsing in online fashion platforms.

Contrastive Learning Recommendation Systems +1

Fundamental Limits of Testing the Independence of Irrelevant Alternatives in Discrete Choice

no code implementations20 Jan 2020 Arjun Seshadri, Johan Ugander

The Multinomial Logit (MNL) model and the axiom it satisfies, the Independence of Irrelevant Alternatives (IIA), are together the most widely used tools of discrete choice.

Two-sample testing

Discovering Context Effects from Raw Choice Data

no code implementations8 Feb 2019 Arjun Seshadri, Alexander Peysakhovich, Johan Ugander

An important class of such contexts is the composition of the choice set.

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