2016
DOI: 10.1002/int.21863
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Ubiquitous Hotel Recommendation Using a Fuzzy-Weighted-Average and Backpropagation-Network Approach

Abstract: Ubiquitous hotel recommendation is a highly popular type of location‐aware service. However, existing recommendation systems have several problems. This paper proposes a fuzzy‐weighted‐average (FWA) and backpropagation‐network (BPN) approach for overcoming the hindrances of ubiquitous hotel recommendation and improving its effectiveness, whereby FWA is applied to evaluate the overall performance of a hotel. A BPN was constructed to defuzzify the overall performance. In addition, the personally preferred index … Show more

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Cited by 12 publications
(8 citation statements)
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“…One is to fuzzify an existing crisp multiple-criteria decision-making method by modelling the evaluation result of an alternative, the weight (or relative priority) of a criterion, and/or the weight (or authority level) of each decision maker with fuzzy numbers. For example, Chen [34] applied FWA to aggregate the performances of a hotel along various dimensions, and then defuzzified the aggregation result using a back propagation network. Similarly, fuzzy multi-attribute utility theory (MAUT) methods were applied to select intervention strategies to restore an aquatic ecosystem contaminated by radionuclides [35], assess intelligent buildings [36], and recommend suitable clinics to patients [37].…”
Section: Literature Reviewmentioning
confidence: 99%
“…One is to fuzzify an existing crisp multiple-criteria decision-making method by modelling the evaluation result of an alternative, the weight (or relative priority) of a criterion, and/or the weight (or authority level) of each decision maker with fuzzy numbers. For example, Chen [34] applied FWA to aggregate the performances of a hotel along various dimensions, and then defuzzified the aggregation result using a back propagation network. Similarly, fuzzy multi-attribute utility theory (MAUT) methods were applied to select intervention strategies to restore an aquatic ecosystem contaminated by radionuclides [35], assess intelligent buildings [36], and recommend suitable clinics to patients [37].…”
Section: Literature Reviewmentioning
confidence: 99%
“…In today’s e-commerce, online providers often recommend proper goods or services to each consumer based on their personal opinions or preferences [ 21 ], [ 22 ]. However, it is a tough task to provide appropriate recommendation which may confront several difficulties.…”
Section: A Recommender System Integrating With Hierarchical Coarseninmentioning
confidence: 99%
“…In this era of information overload, recommender systems serve as a very useful information filtering framework that helps users to swiftly and correctly identify a resource or product from a rapidly growing set. [1][2][3] Over the years, several models have been developed to solve specific recommendation problems. In general, these recommendation models are classified into collaborative filtering (CF)-based recommender systems, [4][5][6] content-based (CB) recommender systems 7,8 and hybrid recommender systems.…”
Section: Introductionmentioning
confidence: 99%