Conversational Product Search Based on Negative Feedback

09/04/2019
by   Keping Bi, et al.
0

Intelligent assistants change the way people interact with computers and make it possible for people to search for products through conversations when they have purchase needs. During the interactions, the system could ask questions on certain aspects of the ideal products to clarify the users' needs. For example, previous work proposed to ask users the exact characteristics of their ideal items before showing results. However, users may not have clear ideas about what an ideal item looks like, especially when they have not seen any item. So it is more feasible to facilitate the conversational search by showing example items and asking for feedback instead. In addition, when the users provide negative feedback for the presented items, it is easier to collect their detailed feedback on certain properties (aspect-value pairs) of the non-relevant items. By breaking down the item-level negative feedback to fine-grained feedback on aspect-value pairs, more information is available to help clarify users' intents. So in this paper, we propose a conversational paradigm for product search driven by non-relevant items, based on which fine-grained feedback is collected and utilized to show better results in the next iteration. We then propose an aspect-value likelihood model to incorporate both positive and negative feedback on fine-grained aspect-value pairs of the non-relevant items. Experimental results show that our model is significantly better than state-of-the-art product search baselines without using feedback and those baselines using item-level negative feedback.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/12/2021

Asking Clarifying Questions Based on Negative Feedback in Conversational Search

Users often need to look through multiple search result pages or reformu...
research
08/09/2020

Analysing the Effect of Clarifying Questions on Document Ranking in Conversational Search

Recent research on conversational search highlights the importance of mi...
research
05/13/2021

Bootstrapping User and Item Representations for One-Class Collaborative Filtering

The goal of one-class collaborative filtering (OCCF) is to identify the ...
research
03/27/2021

Multi-Facet Recommender Networks with Spherical Optimization

Implicit feedback is widely explored by modern recommender systems. Sinc...
research
07/01/2022

Modelling Users with Item Metadata for Explainable and Interactive Recommendation

Recommender systems are used in many different applications and contexts...
research
05/17/2019

Seeker: Real-Time Interactive Search

This paper introduces Seeker, a system that allows users to interactivel...
research
02/19/2021

Scaling Creative Inspiration with Fine-Grained Functional Facets of Product Ideas

Web-scale repositories of products, patents and scientific papers offer ...

Please sign up or login with your details

Forgot password? Click here to reset