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研究生: 姜光庭
論文名稱: 社交標籤系統中瀏覽式標籤推薦查詢之研究
Browsing-based Query Recommendation and Query Processing for Social Tagging Systems
指導教授: 柯佳伶
學位類別: 碩士
Master
系所名稱: 資訊工程學系
Department of Computer Science and Information Engineering
論文出版年: 2012
畢業學年度: 100
語文別: 中文
論文頁數: 73
中文關鍵詞: 社交標籤系統查詢標籤推薦索引結構集合包含查詢
英文關鍵詞: social-tagging system, query tag recommendation, index structure, set containment search
論文種類: 學術論文
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  • 使用者對標籤資源進行查詢時,大多給予簡短的查詢字,搜尋出包含查詢字為標籤的資料物件。當查詢字為涵義較廣的字時,常造成查詢結果回傳大量資料物件,導致使用者需要費時對龐大的物件一一瀏覽,才能找到真正需要的資料。因此,本論文對社交標籤系統,探討如何由使用者給定的查詢字提供進一步的查詢標籤推薦,使能快速篩選找到所需資料。我們從包含查詢字為標籤的物件,以這些物件包含的所有標籤為候選標籤,評估與查詢字間的相關程度及和已推薦標籤的相異程度來決定一個標籤的關聯代表分數,再選擇分數值最高的前k個標籤為推薦查詢標籤。我們採用面相查詢的概念呈現推薦標籤,當使用者選擇特定推薦標籤後,系統將根據所選擇標籤推薦下一層可進一步篩選結果的查詢標籤,幫助使用者逐步縮小查詢結果涵蓋範圍。此外,本論文提出一個雙層式索引結構來加速社交標籤系統的查詢處理,而此索引結構也可支援可容錯的集合包含查詢處理。實驗結果顯示本研究方法可有效減少使用者搜尋資料所需的瀏覽成本,而所提出的索引結構亦可有效增進容錯集合包含查詢的處理效率,且對於關鍵字個數較多的查詢字效果越佳。

    Most users are used to giving brief keywords to query a social-tagging system for getting the objects whose tag sets contain the given query keywords. When the query keyword is a general term, the system usually returns a lot of objects as the query result. Accordingly, the users have to spend much time to browse all the returned objects to get the data he needs. For solving this problem, this thesis proposes a query recommendation method for social tagging systems. According to the given query keyword, we study how to provide some more tags as additional query terms for helping the user to effectively filter the dataset to find the required data quickly. At first, we find out the query result which consists of all the objects whose tag sets contain the query keyword. All the tags of these objects are called candidate tags. Next, for each candidate tag, we consider the relatedness with the query and the diversity with the selected recommendation tags to decide its representation score. According to the representation scores, the top-k tags are chosen to be recommendation tags. Then we adopt the concept of facet search to present the recommended tags. After users choose a specific recommended tag, the system will add the chosen tag into the query and perform tag recommendation recursively. Furthermore, this thesis proposes a two-level index structure, which aggregate similar tag sets into clusters according to the similarity between tag sets. A two-level bounding mechanism is proposed to deal with query processing of tag set containment queries. Besides, the Jaccard Containment function is used to evaluate the degree of set containment for supporting set containment search with error tolerant allowed. The experimental results show that the proposed method of query recommendation can effectively reduce the cost of user-browsing. Moreover, the proposed two-level index structure and query processing strategies provide better performance on execution time for tag set containment queries, especially for queries consisting of many tags.

    附圖目錄 i 附表目錄 ii 第一章 緒論 1 1.1 研究動機與目的 1 1.2 研究的範圍與限制 2 1.3 論文方法 3 1.4 論文架構 4 第二章 文獻探討 5 2.1 標籤蒐集方法 6 2.2 標籤系統搜尋技術 8 2.3 標籤聚落分析 12 第三章 系統架構與流程 16 第四章 查詢標籤之推薦 18 4.1 相關名詞定義 18 4.2 標籤與查詢相關性程度評估方法 19 4.3 挑選推薦查詢標籤方法 21 4.3.1 查詢標籤推薦 21 4.3.2 階層式推薦查詢標籤挑選方法 25 第五章 索引結構之建立與搜尋方法 30 5.1 包含查詢 30 5.2 物件標籤集索引結構 31 5.2.1 建立索引結構中聚集門檻值之定義 31 5.2.2 物件標籤集索引結構之建立 32 5.3 搜尋方法 39 5.3.1 雙層式邊界機制之搜尋方法 39 第六章 實驗評估 47 6.1 實驗資料來源及環境設定 47 6.1.1 實驗資料來源 47 6.1.2 資料前處理 48 6.1.3 實驗環境 48 6.2 評估推薦查詢標籤方法之效果 48 6.2.1 測試資料 49 6.2.2 實驗方法 50 6.2.3 實驗評估 51 6.2.4 實驗結果 62 6.3 評估索引結構與搜尋方法之效果 63 6.3.1 測試資料 63 6.3.2 實驗方法 63 6.3.3 實驗評估 64 6.3.4 實驗結果 68 第七章 結論與未來研究方向 69 7.1 結論 69 7.2 未來研究方向 70 參考文獻 71

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