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博碩士論文 etd-0925121-114121 詳細資訊
Title page for etd-0925121-114121
論文名稱
Title
知識本體建置和應用於料理直播的自動問答之研究
Ontology Construction and Its Application to Automatic Question Answering of Live Stream in Cooking Domain
系所名稱
Department
畢業學年期
Year, semester
語文別
Language
學位類別
Degree
頁數
Number of pages
117
研究生
Author
指導教授
Advisor
召集委員
Convenor
口試委員
Advisory Committee
口試日期
Date of Exam
2021-07-28
繳交日期
Date of Submission
2021-10-25
關鍵字
Keywords
直播、料理知識庫本體論、自然語言處理、語意擴充、問答系統
Live stream, cooking ontology, natural language processing (NLP), semantic expansion, question answering system
統計
Statistics
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中文摘要
科技突破時間、空間的限制,人與人互動交流的維度更廣泛。興起的社交網路平台,成為新形態的社交媒介。其中,直播平台互動最為即時且具有挑戰,現場即時播出節目內容且利用聊天室能立即與觀眾互動對談。直播節目無法後製剪輯與標記輔助資訊,瞬時又大量的資訊內容,對參與者產生龐大的資訊壓力。本研究以「料理」為例,解決直播主與觀眾資訊過載與減少直播過程訊息斷鏈情況,協助直播互動過程更為流暢且提高觀眾的滿意度。提供直播內容標記輔助系統與問答系統,解決上述問題也能增加觀眾持續觀看的意願與滿意度。
研究分為四個階段:(1)建立料理知識本體論、(2)擴充料理知識本體論、(3)料理知識本體論與直播影片連結與(4)料理知識庫建立問答系統。料理知識本體論由自然語言處理食譜文本資料來建立,經由語意擴充與詞向量擴充後,知識涵蓋更廣泛。實驗結果證明對標記直播輔助資訊準確率有顯著提升。此外,料理知識庫建立問答系統即時提供資訊查詢,補足資訊缺口。問答系統經實驗驗證後,準確率與使用滿意度較高於其他系統。
Abstract
Technology breaks through the limitations of time and space. The interaction channels between people become broader. The emerging social network platform has become a new form of social media. In particular, the live streaming is getting popular and poses challenges to the broadcasters. The live video content is broadcast on the spot and the chatroom can be used to interact with the audience immediately. The live program cannot be post-edited and mark auxiliary information. In addition, the amount of information content creates a huge information pressure on the participants. This thesis uses "cooking" as an example live streaming application to help streamline the interactive process of live streaming and increase audience satisfaction. We aim to provide auxiliary information and question answering system (QA system) for live streaming programs to fill the information gap imposed in the live streaming process in the hope to reduce the pressure of information overload. Solving the above problems can also increase the audience's willingness and satisfaction of continuous watching.
The research is divided into four stages: (1) establishing cooking ontology, (2) expanding cooking ontology, (3) mapping with cooking ontology and stream clips, and (4) establishing question answering system. The cooking ontology is established from recipe text data by NLP. The cooking ontology is expanded on semantic expansion and word-to-vector expansion. The knowledge covers a wider range after expansions. The experimental results show that the accuracy of the auxiliary information of the marking step during the live streaming has been significantly improved. In addition, the cooking ontology enable a QA system to provide real-time information to fill up the information gap. The QA system has been verified via user studies, and its accuracy and user satisfaction are higher than other systems.
目次 Table of Contents
論文審定書 i
誌謝 ii
摘要 iii
Abstract iv
目錄 v
圖目錄 vii
表目錄 ix
第一章、緒論 1
第一節、研究背景 1
第二節、研究目的 2
第三節、研究貢獻 3
第四節、文章架構 4
第二章、文獻回顧 5
第一節、自然語言建立知識庫 5
第二節、擴充知識庫 7
第三節、料理知識庫應用與料理影像標記 8
第四節、問答系統 11
第三章、研究架構 17
第一節、研究架構 17
第二節、研究流程 18
第四章、料理知識本體論建立、表達及擴張 21
第一節、建立料理知識本體論 21
第二節、擴充料理知識本體論 33
第三節、知識本體論建構評比 36
第五章、知識本體論與直播內容對應方法與成效 43
第一節、直播內容標記 43
第二節、對應方法成效評估 46
第六章、知識庫問答系統建立 52
第一節、定義問題類型與回應範圍 53
第二節、建立問答系統 56
第三節、知識庫建立訓練問答集 58
第四節、問題意圖分類成效評估 65
第五節、問答系統效用與系統滿意度 68
第七章、結論與未來展望 75
第一節、結論 75
第二節、研究限制 76
第三節、未來展望 77
參考文獻 79
附錄一、問答系統實驗畫面 94
附錄二、問答系統滿意度問卷 97
附錄三、QA benchmark dataset 101
附錄四、食物、料理相關知識庫與詞向量 106

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