Intelligence Interactive Traveling Schedule Recommender Platform Based on Multiple-Stage Case-based Reasoning

碩士 === 中華大學 === 資訊管理學系碩士班 === 99 === Traveling-schedule (TS) arrangement is a classical ill-define problem which lacks of structure and fulfills uncertainty and dynamic complexity. In general, there are two ways to resolve TS arrangement (TSA) problem, including: package tourism provide by travel ag...

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Bibliographic Details
Main Authors: Chun-Yi Lee, 李俊毅
Other Authors: Ying,Ming-Hsiung
Format: Others
Language:zh-TW
Published: 2011
Online Access:http://ndltd.ncl.edu.tw/handle/11079726631152186711
Description
Summary:碩士 === 中華大學 === 資訊管理學系碩士班 === 99 === Traveling-schedule (TS) arrangement is a classical ill-define problem which lacks of structure and fulfills uncertainty and dynamic complexity. In general, there are two ways to resolve TS arrangement (TSA) problem, including: package tourism provide by travel agency who arrange entire traveling program. The other is independent tourism that travelers should collect information and arrange all traveling-detail themselves. Nowadays, independent tourism is getting popular and may instead of total package one due to tourism flexibility and customization. To cater for independent tourism customer, many travel agencies have already developed recommender system to provide online traveler with particular tourism packages according to their query conditions. However, such recommendation result usually become involve in package tourism advertisements and lack of flexibility. Additionally, such recommender mechanism can not replicate important word-of-mouse effect about traveling experience. Thus, the recommender mechanism should be revised for TSA problem solving. This research proposed an intelligence traveling recommender (iTR) system based on commonsense reasoning (CBR) algorithm. iTR includes two stage reasoning processes, enable user constantly refine and revise suggested traveling-schedule by iTR. CBR is an appropriate methodology to deal with TSA problem because of CBR can replicate human decision process actually. Finally, a demonstration TSA scenario is presented to illustrate the effect and feasibility of proposed iTR recommender architecture.