The Impact of Subject Indexes on Semantic Indeterminacy in Enterprise Document Retrieval

abstract: Ample evidence exists to support the conclusion that enterprise search is failing its users. This failure is costing corporate America billions of dollars every year. Most enterprise search engines are built using web search engines as their foundations. These search engines are optimized...

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Bibliographic Details
Other Authors: Schymik, Gregory Brian (Author)
Format: Doctoral Thesis
Language:English
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.15183
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spelling ndltd-asu.edu-item-151832018-06-22T03:03:17Z The Impact of Subject Indexes on Semantic Indeterminacy in Enterprise Document Retrieval abstract: Ample evidence exists to support the conclusion that enterprise search is failing its users. This failure is costing corporate America billions of dollars every year. Most enterprise search engines are built using web search engines as their foundations. These search engines are optimized for web use and are inadequate when used inside the firewall. Without the ability to use popularity-based measures for ranking documents returned to the searcher, these search engines must rely on full-text search technologies. The Information Science literature explains why full-text search, by itself, fails to adequately discriminate relevant from irrelevant documents. This failure in discrimination results in far too many documents being returned to the searcher, which causes enterprise searchers to abandon their searches in favor of re-creating the documents or information they seek. This dissertation describes and evaluates a potential solution to the problem of failed enterprise search derived from the Information Science literature: subject-aided search. In subject-aided search, full-text search is augmented with a search of subject metadata coded into each document based upon a hierarchically structured subject index. Using the Design Science methodology, this dissertation develops and evaluates three IT artifacts in the search for a solution to the wicked problem of enterprise search failure. Dissertation/Thesis Schymik, Gregory Brian (Author) St. Louis, Robert (Advisor) Goul, Kenneth M (Committee member) Santanum, Raghu (Committee member) Arizona State University (Publisher) Information science Information technology Library science Enterprise Search Information Retrieval Metadata eng 321 pages Ph.D. Business Administration 2012 Doctoral Dissertation http://hdl.handle.net/2286/R.I.15183 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2012
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Information science
Information technology
Library science
Enterprise Search
Information Retrieval
Metadata
spellingShingle Information science
Information technology
Library science
Enterprise Search
Information Retrieval
Metadata
The Impact of Subject Indexes on Semantic Indeterminacy in Enterprise Document Retrieval
description abstract: Ample evidence exists to support the conclusion that enterprise search is failing its users. This failure is costing corporate America billions of dollars every year. Most enterprise search engines are built using web search engines as their foundations. These search engines are optimized for web use and are inadequate when used inside the firewall. Without the ability to use popularity-based measures for ranking documents returned to the searcher, these search engines must rely on full-text search technologies. The Information Science literature explains why full-text search, by itself, fails to adequately discriminate relevant from irrelevant documents. This failure in discrimination results in far too many documents being returned to the searcher, which causes enterprise searchers to abandon their searches in favor of re-creating the documents or information they seek. This dissertation describes and evaluates a potential solution to the problem of failed enterprise search derived from the Information Science literature: subject-aided search. In subject-aided search, full-text search is augmented with a search of subject metadata coded into each document based upon a hierarchically structured subject index. Using the Design Science methodology, this dissertation develops and evaluates three IT artifacts in the search for a solution to the wicked problem of enterprise search failure. === Dissertation/Thesis === Ph.D. Business Administration 2012
author2 Schymik, Gregory Brian (Author)
author_facet Schymik, Gregory Brian (Author)
title The Impact of Subject Indexes on Semantic Indeterminacy in Enterprise Document Retrieval
title_short The Impact of Subject Indexes on Semantic Indeterminacy in Enterprise Document Retrieval
title_full The Impact of Subject Indexes on Semantic Indeterminacy in Enterprise Document Retrieval
title_fullStr The Impact of Subject Indexes on Semantic Indeterminacy in Enterprise Document Retrieval
title_full_unstemmed The Impact of Subject Indexes on Semantic Indeterminacy in Enterprise Document Retrieval
title_sort impact of subject indexes on semantic indeterminacy in enterprise document retrieval
publishDate 2012
url http://hdl.handle.net/2286/R.I.15183
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