The Study on the Recommendation Systems of Theme Websites

碩士 === 中國文化大學 === 資訊管理研究所 === 98 === A large amount of data enters major websites everyday. Users usually cannot search and determine appropriate information when they come across overloaded data. Active recommendation is an answer to this problem. Through coordinated filtering analysis, appropriate...

Full description

Bibliographic Details
Main Authors: Ta-Chun Lin, 林大鈞
Other Authors: Dwen-Ren Tasi
Format: Others
Language:zh-TW
Published: 2009
Online Access:http://ndltd.ncl.edu.tw/handle/40508482726291989615
id ndltd-TW-098PCCU1396007
record_format oai_dc
spelling ndltd-TW-098PCCU13960072017-03-23T04:35:46Z http://ndltd.ncl.edu.tw/handle/40508482726291989615 The Study on the Recommendation Systems of Theme Websites 主題網站推薦系統之研究 Ta-Chun Lin 林大鈞 碩士 中國文化大學 資訊管理研究所 98 A large amount of data enters major websites everyday. Users usually cannot search and determine appropriate information when they come across overloaded data. Active recommendation is an answer to this problem. Through coordinated filtering analysis, appropriate information can be recommended after filtering. That the operating behaviors of internet users can be divided into two categories : searching and browsing. Users directly search for the information when the information is specific and clear; when unclear, they would browse and search possible materials. They would accept suggestions from the Internet when they browse; thus, recommendation system can lead users to their desired data. This can increase the merchandise exposure and the purchase intention; while users’ behaviors are recorded and provided for system analysis, in order to modify future user behavior and merchandise recommendation. Therefore, the study selected a theme website as the experimental subject and used user’s browsing history and user’s rating data sheet to construct a mechanism for recommendation systems through collaborative filtering and Slope One algorithm. This mechanism can allow users to obtain the information which meets their needs effectively and enable website operators to further offer more information services. Dwen-Ren Tasi 蔡敦仁 2009 學位論文 ; thesis 53 zh-TW
collection NDLTD
language zh-TW
format Others
sources NDLTD
description 碩士 === 中國文化大學 === 資訊管理研究所 === 98 === A large amount of data enters major websites everyday. Users usually cannot search and determine appropriate information when they come across overloaded data. Active recommendation is an answer to this problem. Through coordinated filtering analysis, appropriate information can be recommended after filtering. That the operating behaviors of internet users can be divided into two categories : searching and browsing. Users directly search for the information when the information is specific and clear; when unclear, they would browse and search possible materials. They would accept suggestions from the Internet when they browse; thus, recommendation system can lead users to their desired data. This can increase the merchandise exposure and the purchase intention; while users’ behaviors are recorded and provided for system analysis, in order to modify future user behavior and merchandise recommendation. Therefore, the study selected a theme website as the experimental subject and used user’s browsing history and user’s rating data sheet to construct a mechanism for recommendation systems through collaborative filtering and Slope One algorithm. This mechanism can allow users to obtain the information which meets their needs effectively and enable website operators to further offer more information services.
author2 Dwen-Ren Tasi
author_facet Dwen-Ren Tasi
Ta-Chun Lin
林大鈞
author Ta-Chun Lin
林大鈞
spellingShingle Ta-Chun Lin
林大鈞
The Study on the Recommendation Systems of Theme Websites
author_sort Ta-Chun Lin
title The Study on the Recommendation Systems of Theme Websites
title_short The Study on the Recommendation Systems of Theme Websites
title_full The Study on the Recommendation Systems of Theme Websites
title_fullStr The Study on the Recommendation Systems of Theme Websites
title_full_unstemmed The Study on the Recommendation Systems of Theme Websites
title_sort study on the recommendation systems of theme websites
publishDate 2009
url http://ndltd.ncl.edu.tw/handle/40508482726291989615
work_keys_str_mv AT tachunlin thestudyontherecommendationsystemsofthemewebsites
AT líndàjūn thestudyontherecommendationsystemsofthemewebsites
AT tachunlin zhǔtíwǎngzhàntuījiànxìtǒngzhīyánjiū
AT líndàjūn zhǔtíwǎngzhàntuījiànxìtǒngzhīyánjiū
AT tachunlin studyontherecommendationsystemsofthemewebsites
AT líndàjūn studyontherecommendationsystemsofthemewebsites
_version_ 1718433616197844992