Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/136829
題名: 基於性格特質的社群討論回應生成
Personality-based Response Generation for Social Discussion
作者: 陳定宇
Chen, Ting-Yu
貢獻者: 黃佳慧<br>黃瀚萱
Huang, Chia-Hui<br>Huang, Hen-Hsen
陳定宇
Chen, Ting-Yu
關鍵詞: 對話生成
鑑別學習
人格特質建模
Dialog generation
Personalities
Discriminative learning
日期: 2021
上傳時間: 2-九月-2021
摘要: 在對話生成的研究中,雖然有部份研究針對個人化的文字生成有所探討,但主要專注於個人化的語言風格、或是職業性別等個人化的背景資訊。本研究嘗試了另一個向度的個人化文字生成,產生具有特定人格特質的文字,模擬不同性格的人,在社群媒體上的發文。本研究利用現有的資料集,再爬取社群媒體平台上的討論串,建立訓練資料集。為了強化文字生成模型對不同人格特質的建模,本研究發展了創新的鑑別學習法,引入新的損失函數,讓模型不僅能生成通順、合理的文字,並且呈現較為明顯的個人特質。實驗結果經自動與人工驗證,顯示本研究所提出之方法的效度。
Previous works that attempt to emulate the human properties in dialog generation mostly focus on the incorporation of personal information or language style in the generated text. In this work, we aim to introduce a different kind of human properties in dialog generation, the personalities, to generate the response in social discussion according to a certain type of personality. We create a corpus that was crawled from a social platform with the label of personalities for the users. A novel discriminative learning approach is proposed to enhance the neural generation model toward the extrovert or the introvert personality. Both automatic and human evaluation are conducted for showing the effectiveness of our approach.
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描述: 碩士
國立政治大學
統計學系
108354004
資料來源: http://thesis.lib.nccu.edu.tw/record/#G0108354004
資料類型: thesis
Appears in Collections:學位論文

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