博碩士論文 994203048 詳細資訊




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姓名 張弘杰(Hong-Kiat Chong)  查詢紙本館藏   畢業系所 資訊管理學系
論文名稱 應用負相關回饋資訊於文件重排序之分析
(An analysis of the application of non-relevance feedback in document ranking)
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摘要(中) 負相關回饋的資訊雖然被認為可利用價值不高, 但它在促進資訊擷取的效能上,仍然有可利用之處。有研究嘗試利用負相關回饋資訊於文件檢索結果的重排序,並且初步顯現效能,本研究依據理論探討,認為負相關回饋資訊於文件檢索結果重排序的應用,可能受資料離散性等資料分佈情境的影響, 因此,分析資料離散等資料分佈情境與負相關回饋資訊的應用成為本研究的目的。為此,本研究針對初始檢索結果進行資料離散等分析, 確定資料分佈情境與負相關回饋資訊的應用是否有直接關聯, 提出了資料分佈情境對負相關回饋資訊應用的影響。實驗結果指出, 文件資料的離散性並沒有與負相關回饋資訊應用的效能有線性關係, 但是相關與不相關文件之間差異性小的文件型態會對負相關回饋資訊的應用有不良影響。根據這種情況, 本研究提出了數個未來研究發展的方向。
摘要(英) Although the information of non-relevance feedback information is thought as not much useful in information retrieval, it still can be applied. Some research tried using non-relevance feedback information in document re-ranking. In this research, our goal is to disclose the relation between the data distribution and the application of non-relevance feedback according to the theory that we had studied. In order to do so, we focus on the analysis of the distribution of initial retrieval result, and the direct links between distribution scenario and the application of non-relevance feedback. The final result shows that the distribution of the text data and the application of non-relevance feedback doesn’t exist linear relationship and the significance of difference between relevance and non-relevance in dataset could affect the application of non-relevance feedback. Base on this result, our research propose some direction in future study.
關鍵字(中) ★ 負相關回饋
★ 資訊檢索
★ 文件重排序
★ 文件分析
關鍵字(英) ★ Document re-ranking
★ Information retrieval
★ Non-relevance feedback
★ Document Analysis
論文目次 論文摘要 ....................................................................................................................................i
Abstract ..................................................................................................................................... ii
銘謝 .......................................................................................................................................... iii
第一章 緒論 ............................................................................................................................. 1
1-1 研究背景與動機 ............................................................................................................ 1
1-2 研究目的 ........................................................................................................................ 2
1-3 研究範圍與限制 ............................................................................................................ 2
第二章 文獻探討 ................................................................................................................... 3
2-1 資訊檢索 ........................................................................................................................ 3
2-2 相關回饋 ........................................................................................................................ 4
2-3 字詞敏感度 .................................................................................................................... 5
2-4 負相關回饋資訊用於重排序 ........................................................................................ 6
2-6 文件分群 ........................................................................................................................ 6
2-6-1分群假說 (Clusters Hypothesis) ............................................................................. 7
2-6-2分群數量假說 (Number-of-Clusters Hypothesis) .................................................. 7
第三章 系統分析與假設 ....................................................................................................... 8
3-1 影響效能之各個假設 .................................................................................................... 8
3-1-1 離散程度對於負相關文件的影響......................................................................... 8
3-1-2字詞出現在文件的頻率 ......................................................................................... 9
3-2 分析方法和實驗設計 .................................................................................................. 10
3-2-1資料集的分佈問題的分析方法............................................................................ 10
3-2-2只在不相關字典的字詞出現在文件的分析方法 ................................................ 11
3-3參數設定 ....................................................................................................................... 11
第四章 實驗結果 ................................................................................................................. 12
4-1 實驗資料 ...................................................................................................................... 12
4-2 實驗結果 ...................................................................................................................... 16
4-2-2各個主題分群結果 ............................................................................................... 16
4-2-3 各個主題NRO字典檔裡面的文字出現在文件的比率 .................................... 22
4-3 實驗結果討論 .............................................................................................................. 34
第五章 結論 ......................................................................................................................... 36
5-1 研究限制與貢獻 .......................................................................................................... 36
5-2 未來研究方向 .............................................................................................................. 37
參考文獻 ................................................................................................................................ 38
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指導教授 周世傑(Shihchieh Chou) 審核日期 2012-7-23
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