3 research outputs found

    Enhanced Web Search Engines with Query-Concept Bipartite Graphs

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    With rapid growth of information on the Web, Web search engines have gained great momentum for exploiting valuable Web resources. Although keywords-based Web search engines provide relevant search results in response to users’ queries, future enhancement is still needed. Three important issues include (1) search results can be diverse because ambiguous keywords in queries can be interpreted to different meanings; (2) indentifying keywords in long queries is difficult for search engines; and (3) generating query-specific Web page summaries is desirable for Web search results’ previews. Based on clickthrough data, this thesis proposes a query-concept bipartite graph for representing queries’ relations, and applies the queries’ relations to applications such as (1) personalized query suggestions, (2) long queries Web searches and (3) query-specific Web page summarization. Experimental results show that query-concept bipartite graphs are useful for performance improvement for the three applications

    Web Document Retrieval Using Sentence-query Similarity

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    Introduction For the web document retrieval experiments in our TREC '2002 participation, we used two new methods. One is the use of anchor texts, which has been advocated by many researchers. But the methods used by them is different from our method. The second is the use of sentence-query similarity. It has been known that the use of links for web retrieval did not show impressive improvement in performance [5,6,8,9]. But Bailey, etc. [1] reported that using anchor texts can improve retrieval performance. However, our home page finding experiment done for TREC '2001 showed that it is not the case. The use of anchor texts did not allow any improvement in performance. Our method to use the anchor texts this year is changed a lot from last year and found that it is pretty effective. The major focus of our experiment this year is in the use of sentential information in information retrieval. We obtain similarity values between sentences of a document and the query and use them for com

    SIMILARITY METRICS APPLIED TO GRAPH BASED DESIGN MODEL AUTHORING

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    Model reuse is typically facilitated by search and retrieval tools, matching the sought model with models in a database. This research aims at providing similar assistance to users authoring design exemplars, a data structure to represent parametric and geometric design problems. The design exemplar represents design problems in the form of a bi-partite graph consisting of entities and relations. Authoring design exemplars for relatively complex design problems can be time consuming and error prone. This forms the motivation of developing a search and retrieval tool, capable of retrieving exemplars that are similar to the exemplar that a user is trying to author, from a database of previously authored exemplars. In order to develop such a tool, similarity measures have been developed to evaluate the similarity between the exemplar that a user is trying to author and target exemplars in the database. Two exemplars can be considered similar based on the number and types of entities and relations shared by them. However, exemplars meant for the same purpose can be authored using different entities and relations. Hence, the two main challenges in developing a search and retrieval tool are to evaluate the similarity between exemplars based on structure and semantics. In this research, four distinct similarity metrics are developed to evaluate the structural similarity between exemplars for exemplar retrieval: entity similarity, relation similarity, attribute similarity, and graph matching similarity. As well, a thorough understanding of semantics in engineering design has been developed. Different types of semantic information found in engineering design have been identified and classified. Design intent and rationale have been proposed as the two main types of semantic information necessary to evaluate the semantic similarity between exemplars. The semantic and structural similarity measures have been implemented as separate modules in an interactive modeling environment. Several experiments have been conducted in order to evaluate the accuracy and effectiveness of the proposed similarity measures. It is found that for most queries, the semantic retrieval module retrieves exemplars that are not retrieved by structural retrieval module and vice versa
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