Novel Approach to Tourism Analysis with Multiple Outcome Capability Using Rough Set Theory

被引:0
|
作者
Chun-Che Huang
Tzu-Liang Bill Tseng
Kun-Cheng Chen
机构
[1] National Chi Nan University,Department of Information Management
[2] The University of Texas at El Paso,Department of Industrial, Manufacturing and Systems Engineering
关键词
Rough Sets; Tourism; Customer Satisfaction; Decision Making; Rule Induction;
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学科分类号
摘要
To explore the relationship between characteristics and decision-making outcomes of the tourist is critical to keep competitive tourism business. In investigation of tourism development, most of the existing studies lack of a systematic approach to analyze qualitative data. Although the traditional Rough Set (RS) based approach is an excellent classification method in qualitative modeling, but it is can’t deal with the case of multiple outcomes, which is a common situation in tourism. Consequently, the Multiple Outcome Reduct Generation (MORG) and Multiple Outcome Rule Extraction (MORE) approaches based on RS to handle multiple outcomes are proposed. This study proposes a ranking based approach to induct meaningful reducts and ensure the strength and robustness of decision rules, which helps decision makers understand tourist’s characteristics in a tourism case.
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页码:1118 / 1132
页数:14
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