Skip to main content
About HEC About HEC
Summer School Summer School
Faculty & Research Faculty & Research
Master’s programs Master’s programs
Bachelor Programs Bachelor Programs
MBA Programs MBA Programs
PhD Program PhD Program
Executive Education Executive Education
HEC Online HEC Online
About HEC
Overview Overview
Who
We Are
Who
We Are
Egalité des chances Egalité des chances
HEC Talents HEC Talents
International International
Campus
Life
Campus
Life
Sustainability Sustainability
Diversity
& Inclusion
Diversity
& Inclusion
Stories Stories
The HEC
Foundation
The HEC
Foundation
Summer School
Youth Programs Youth Programs
Summer programs Summer programs
Online Programs Online Programs
Faculty & Research
Overview Overview
Faculty Directory Faculty Directory
Departments Departments
Centers Centers
Chairs Chairs
Grants Grants
Knowledge@HEC Knowledge@HEC
Master’s programs
Master in
Management
Master in
Management
Master's
Programs
Master's
Programs
Double Degree
Programs
Double Degree
Programs
Bachelor
Programs
Bachelor
Programs
Summer
Programs
Summer
Programs
Exchange
students
Exchange
students
Student
Life
Student
Life
Our
Difference
Our
Difference
Bachelor Programs
Overview Overview
Course content Course content
Admissions Admissions
Fees and Financing Fees and Financing
MBA Programs
MBA MBA
Executive MBA Executive MBA
TRIUM EMBA TRIUM EMBA
PhD Program
Overview Overview
HEC Difference HEC Difference
Program details Program details
Research areas Research areas
HEC Community HEC Community
Placement Placement
Job Market Job Market
Admissions Admissions
Financing Financing
Executive Education
Home Home
About us About us
Management topics Management topics
Open Programs Open Programs
Custom Programs Custom Programs
Events/News Events/News
Contacts Contacts
HEC Online
Overview Overview
Degree Program Degree Program
Executive certificates Executive certificates
MOOCs MOOCs
Summer Programs Summer Programs
Youth programs Youth programs
Faculty & Research

Assortment Optimization under the Multi-Purchase Multinomial Logit Choice Model

03 Mar
2023
11:15 am
Jouy-en-Josas
English

Participate

Add to Calendar
2023-03-03T11:15:00 2023-03-03T12:30:00 Assortment Optimization under the Multi-Purchase Multinomial Logit Choice Model Information Systems and Operations Management Speaker: Danny Segev (Tel-Aviv University) Room Bernard Ramanantsoa Jouy-en-Josas

Information Systems and Operations Management

Speaker: Danny Segev (Tel-Aviv University)

Room Bernard Ramanantsoa

Abstract:

We introduce the Multi-Purchase Multinomial Logit choice model, which extends the random utility maximization framework of the classical Multinomial Logit model to a multiple-purchase setting.  In this model, customers sample random utilities for each offered product as in the Multinomial Logit model. However, rather than focusing on a single product, they concurrently sample a ``budget'' parameter $M$, which indicates the maximum number of products that the customer is willing to purchase. Subsequently, the $M$ highest utility products are purchased, out of those whose utilities exceed that of the no-purchase option.

Our primary contribution resides in proposing the first multi-purchase choice model that can be fully operationalized.  Specifically,  we  provide a recursive procedure to compute the choice probabilities in this model, which in turn provides a framework to study its resulting assortment problem, where the goal is to select a subset of products to make available for purchase so as to maximize expected revenue. Our main algorithmic results consist of two distinct polynomial time approximation schemes (PTAS); the first, and simpler of the two, caters to a setting where each customer may buy only a constant number of products, whereas the second more nuanced algorithm applies to  our multi-purchase model in its general form. Additionally, we study the revenue-potential of making assortment decisions that account for multi-purchase behavior in comparison to those that overlook this phenomenon. In particular, we relate both the structure and revenue performance of the optimal assortment under a traditional single-purchase model to that of the optimal assortment in the multi-purchase setting. Finally, we complement our theoretical work with an extensive set of computational experiments, where the efficacy of our proposed PTAS is tested against  natural heuristics.

This talk is based on a joint paper with Yicheng Bai, Jacob Feldman, Huseyin Topaloglu, and Laura Wagner.

 

Participate

Add to Calendar
2023-03-03T11:15:00 2023-03-03T12:30:00 Assortment Optimization under the Multi-Purchase Multinomial Logit Choice Model Information Systems and Operations Management Speaker: Danny Segev (Tel-Aviv University) Room Bernard Ramanantsoa Jouy-en-Josas