Users often have to search for a most preferred item but do not know how to state their preferences in the language allowed by the system. Example-Critiquing has been proposed as a mixed-initiative technique for allowing them to construct their preference model in an effective way. In this technique, users volunteer their preferences as critiques on examples. It is thus important to stimulate their preference expression by the proper choice of examples, called suggestions. We analyze what suggestions should be and derive several new techniques for computing them. We prove their effectiveness using simulations and live user studies. Copyright © 2005, American Association for Artificial Intelligence (www.aaai.org). All rights reserved
Abstract. Critiquing is a powerful style of feedback for case-based rec-ommender systems. Instead of...
We address user system interaction issues in product search and recommender systems: how to help use...
Critiquing is a method for conversational recommendation that iteratively adapts recommendations in ...
Users often have to search for a most preferred item but do not know how to state their preferences ...
We consider interactive tools that help users search for their most preferred item in a large collec...
In many practical scenarios users are faced with the problem of choosing the most preferred outcome ...
In many practical scenarios, users are faced with the problem of choosing the most preferred outcome...
We consider interactive tools that help users search for their most preferred item in a large collec...
The internet presents people with an increasingly bewildering variety of choices. Online consumers h...
We consider a conversational recommender system based on example-critiquing where some recommendatio...
When faced with complex choices, users refine their own preference criteria as they explore the cata...
People frequently use the world-wide web to find their most preferred item among a large range of op...
Users' critiques to the current recommendation form a crucial feedback mechanism for refining their ...
Two problemsmay arisewhen an intelligent (recommender) system elicits users’ preferences. First, the...
Critiquing-based recommender systems elicit users' feedback, called critiques, which they made on th...
Abstract. Critiquing is a powerful style of feedback for case-based rec-ommender systems. Instead of...
We address user system interaction issues in product search and recommender systems: how to help use...
Critiquing is a method for conversational recommendation that iteratively adapts recommendations in ...
Users often have to search for a most preferred item but do not know how to state their preferences ...
We consider interactive tools that help users search for their most preferred item in a large collec...
In many practical scenarios users are faced with the problem of choosing the most preferred outcome ...
In many practical scenarios, users are faced with the problem of choosing the most preferred outcome...
We consider interactive tools that help users search for their most preferred item in a large collec...
The internet presents people with an increasingly bewildering variety of choices. Online consumers h...
We consider a conversational recommender system based on example-critiquing where some recommendatio...
When faced with complex choices, users refine their own preference criteria as they explore the cata...
People frequently use the world-wide web to find their most preferred item among a large range of op...
Users' critiques to the current recommendation form a crucial feedback mechanism for refining their ...
Two problemsmay arisewhen an intelligent (recommender) system elicits users’ preferences. First, the...
Critiquing-based recommender systems elicit users' feedback, called critiques, which they made on th...
Abstract. Critiquing is a powerful style of feedback for case-based rec-ommender systems. Instead of...
We address user system interaction issues in product search and recommender systems: how to help use...
Critiquing is a method for conversational recommendation that iteratively adapts recommendations in ...