Generating Exact- and Ranked Partially-Matched Answers to Questions in Advertisements
Rani Qumsiyeh, Maria S. Pera, Yiu-Kai Ng

TL;DR
This paper introduces CQAds, a question answering system for advertisements that retrieves and ranks relevant ads based on natural-language queries, handling partial matches, ambiguities, and Boolean operators to improve search effectiveness.
Contribution
The paper presents CQAds, a novel QA system for ads that supports natural-language queries, partial matching, ranking, and Boolean evaluation, surpassing existing search tools in quality and scalability.
Findings
Verified accuracy across eight ad domains
Outperforms existing search tools in relevance and quantity
Effectively handles incomplete and ambiguous questions
Abstract
Taking advantage of the Web, many advertisements (ads for short) websites, which aspire to increase client's transactions and thus profits, offer searching tools which allow users to (i) post keyword queries to capture their information needs or (ii) invoke form-based interfaces to create queries by selecting search options, such as a price range, filled-in entries, check boxes, or drop-down menus. These search mechanisms, however, are inadequate, since they cannot be used to specify a natural-language query with rich syntactic and semantic content, which can only be handled by a question answering (QA) system. Furthermore, existing ads websites are incapable of evaluating arbitrary Boolean queries or retrieving partiallymatched answers that might be of interest to the user whenever a user's search yields only a few or no results at all. In solving these problems, we present a QA system…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Information Retrieval and Search Behavior
