Preference Learning from (Ranked) Choices under a Mallows-Type Model
In "Seminars and talks"

Speakers

Yifan Feng
Yifan Feng

Assistant Professor, NUS Business School

Yifan Feng is an Assistant Professor at NUS Business School’s Department of Analytics and Operations. With an interest in the intersection of artificial intelligence, operations management, and optimization, he tackles complex e-commerce and marketplace challenges, focusing on information acquisition, experimentation, and demand fulfillment.


Timothy Chan
Timothy Chan

Professor, Industrial Engineering Canada Research Chair in Novel Optimization and Analytics in Health Associate Director, Data Sciences Institute (DSI) Director, Centre for Analytics and Artificial Intelligence Engineering (CARTE), University of Toronto

Timothy Chan is the Associate Vice-President and Vice-Provost, Strategic Initiatives at the University of Toronto, the Canada Research Chair in Novel Optimization and Analytics in Health, a Professor in the department of Mechanical and Industrial Engineering, and a Senior Fellow of Massey College. His primary research interests are in operations research, optimization, and applied machine learning, with applications in healthcare, medicine, sustainability, and sports. He received his B.Sc. in Applied Mathematics from the University of British Columbia (2002), and his Ph.D. in Operations Research from the Massachusetts Institute of Technology (2007). Before coming to Toronto, he was an Associate in the Chicago office of McKinsey and Company (2007-2009), a global management consulting firm. During that time, he advised leading companies in the fields of medical device technology, travel and hospitality, telecommunications, and energy on issues of strategy, organization, technology and operations.


Date:
Friday, 15 December 2023
Time:
2:00 pm - 3:30 pm
Venue:
NUS Business School
Mochtar Riady Building BIZ1 0302
15 Kent Ridge Drive
Singapore 119245 (Map)

Abstract

In this talk, we study a feedback form framework for preference learning called ranked choices. In this setting, participants rank their top-k choices from an individualized display set. We introduce a distance-based (Mallows-type) ranking model using a new distance function termed reverse major index (RMJ). Despite the requirement to sum over all permutations, the RMJ-based ranking model allows simple closed-form expressions for (ranked) choice probabilities. As a result, it enables efficient methods to infer model parameters from ranked choice data with provable consistency. Comprehensive numerical studies demonstrate the model’s favorable generalization power, robustness, and computational efficiency.

 

We also consider a prescriptive application. Suppose a company aims to learn customer preferences over a range of product alternatives and identify the most preferred one with high probability. The company can sequentially decide on the display set and request customers’ top-k ranked choices. Under a sequential experimental design framework, we characterize the (asymptotic) sample complexity under the optimal display set offering procedure. We also investigate the interplay between feedback sophistication (represented by k) and its information efficiency. We find that, although the information efficiency always increases with k, a small value of k=2 is already close (and sometimes equal) to that of full-ranking feedback.

 

Paper link: https://papers.ssrn.com/sol3/papers.cfm?abstract_id=4539900