ExCalibR: Expected Calibration of Recommendations

04/24/2023
by   Pannagadatta Shivaswamy, et al.
0

In many recommender systems and search problems, presenting a well balanced set of results can be an important goal in addition to serving highly relevant content. For example, in a movie recommendation system, it may be helpful to achieve a certain balance of different genres, likewise, it may be important to balance between highly popular versus highly personalized shows. Such balances could be thought across many categories and may be required for enhanced user experience, business considerations, fairness objectives etc. In this paper, we consider the problem of calibrating with respect to any given categories over items. We propose a way to balance a trade-off between relevance and calibration via a Linear Programming optimization problem where we learn a doubly stochastic matrix to achieve optimal balance in expectation. We then realize the learned policy using the Birkhoff-von Neumann decomposition of a doubly stochastic matrix. Several optimizations are considered over the proposed basic approach to make it fast. The experiments show that the proposed formulation can achieve a much better trade-off compared to many other baselines. This paper does not prescribe the exact categories to calibrate over (such as genres) universally for applications. This is likely dependent on the particular task or business objective. The main contribution of the paper is that it proposes a framework that can be applied to a variety of problems and demonstrates the efficacy of the proposed method using a few use-cases.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/07/2022

Introducing a Framework and a Decision Protocol to Calibrate Recommender Systems

Recommender Systems use the user's profile to generate a recommendation ...
research
08/22/2022

Towards Confidence-aware Calibrated Recommendation

Recommender systems utilize users' historical data to learn and predict ...
research
09/04/2020

A General Framework for Fairness in Multistakeholder Recommendations

Contemporary recommender systems act as intermediaries on multi-sided pl...
research
12/12/2021

Cold Item Integration in Deep Hybrid Recommenders via Tunable Stochastic Gates

A major challenge in collaborative filtering methods is how to produce r...
research
08/02/2022

Measuring Commonality in Recommendation of Cultural Content: Recommender Systems to Enhance Cultural Citizenship

Recommender systems have become the dominant means of curating cultural ...
research
09/10/2018

Using Image Fairness Representations in Diversity-Based Re-ranking for Recommendations

The trade-off between relevance and fairness in personalized recommendat...

Please sign up or login with your details

Forgot password? Click here to reset