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https://nccur.lib.nccu.edu.tw/handle/140.119/35222
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Title: | 多維度行事曆助理 |
Authors: | 張文祥 |
Contributors: | 楊亨利 張文祥 |
Keywords: | 推薦系統 助理軟體 多維度推薦 個人化行事曆 Recommender system intelligent assistant software multi-dimension recommendation individualized journey |
Date: | 2005 |
Issue Date: | 2009-09-18 14:29:05 (UTC+8) |
Abstract: | 隨著資訊科技的發展,網際網路成為個人獲得資訊的主要來源之一。但是過多的資訊產生資訊爆炸(information overload)的現象,人們除了要在眾多資訊中找尋想要的資訊外,還需要擔心所尋找到的資訊的品質是否良好。因此,推薦系統提供了一個良好的解決方法。推薦系統透過分群與推薦的技術來達到減少資訊量與推估使用者潛在興趣的目的。目前推薦系統多應用在單一維度的推薦,本論文希望藉由某一情境來探討多維度推薦的應用,所以選擇助理軟體來實現多維度推薦的應用。選擇助理軟體是由於其已經成為個人日常生活中時常使用的工具,且由於助理軟體管理個人日常生活中的大小事務,成為最貼近個人的工具。若專注在個人行事曆的安排上,我們可以發現個人行事曆安排牽涉到有人、事、時、地、物五個維度。因此我們以五維度做分群,透過合作推薦(Collaborative Recommender)的方式將可以達到個人潛在興趣的多維度(Multi-Dimensions)推薦。本研究將以行事歷排定為情境,來說明如何將五個維度的各種可能組合依照其契合個人興趣的程度來進行推薦,這將使得助理軟體的內容更加豐富,且能貼近使用者的需求,提供意想不到的資訊組合。 With the development of information science and technology, assistant software becomes a tool which often uses in personal daily life, and because all kinds of affairs in personal daily life that assistant software is managed, so assistant software becomes a tool which personally close to people. Intelligent assistant software hopes to make assistant software have intelligence which is similar to the mankind. Just like a personal general secretary, arrange the most proper individualized journey. Further, it can combine the idea of Recommender system to recommend the journey of the potential interest while arranging in the personal journey. This research proposes an intelligent assistant software with five- dimensions include of people, thing, when, location and things, uses cooperative Recommender approach to reach multi-dimension recommendation of personal potential interest. This research will give example of meeting as the situation to explain how to make five-dimensions recommendation according to personal interest. This will make the content of assistant software more abundant, and can press close to the user`s demand. |
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Description: | 碩士 國立政治大學 資訊管理研究所 93356015 94 |
Source URI: | http://thesis.lib.nccu.edu.tw/record/#G0093356015 |
Data Type: | thesis |
Appears in Collections: | [資訊管理學系] 學位論文
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