Leverage Implicit Feedback for Context-aware Product Search

09/04/2019
by   Keping Bi, et al.
0

Product search serves as an important entry point for online shopping. In contrast to web search, the retrieved results in product search not only need to be relevant but also should satisfy customers' preferences in order to elicit purchases. Previous work has shown the efficacy of purchase history in personalized product search. However, customers with little or no purchase history do not benefit from personalized product search. Furthermore, preferences extracted from a customer's purchase history are usually long-term and may not always align with her short-term interests. Hence, in this paper, we leverage clicks within a query session, as implicit feedback, to represent users' hidden intents, which further act as the basis for re-ranking subsequent result pages for the query. It has been studied extensively to model user preference with implicit feedback in recommendation tasks. However, there has been little research on modeling users' short-term interest in product search. We study whether short-term context could help promote users' ideal item in the following result pages for a query. Furthermore, we propose an end-to-end context-aware embedding model which can capture long-term and short-term context dependencies. Our experimental results on the datasets collected from the search log of a commercial product search engine show that short-term context leads to much better performance compared with long-term and no context. Our results also show that our proposed model is more effective than word-based context-aware models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/09/2019

A Study of Context Dependencies in Multi-page Product Search

In product search, users tend to browse results on multiple search resul...
research
11/26/2018

Attentive Long Short-Term Preference Modeling for Personalized Product Search

E-commerce users may expect different products even for the same query, ...
research
02/15/2021

Leveraging User Behavior History for Personalized Email Search

An effective email search engine can facilitate users' search tasks and ...
research
05/08/2018

Attention-based Hierarchical Neural Query Suggestion

Query suggestions help users of a search engine to refine their queries....
research
11/07/2022

A Context-Aware Computational Approach for Measuring Vocal Entrainment in Dyadic Conversations

Vocal entrainment is a social adaptation mechanism in human interaction,...
research
08/03/2019

CARL: Aggregated Search with Context-Aware Module Embedding Learning

Aggregated search aims to construct search result pages (SERPs) from blu...
research
05/18/2020

A Transformer-based Embedding Model for Personalized Product Search

Product search is an important way for people to browse and purchase ite...

Please sign up or login with your details

Forgot password? Click here to reset