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完整後設資料紀錄
DC 欄位 | 值 | 語言 |
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dc.contributor.advisor | 郭瑞祥(Ruey-Shan Guo) | |
dc.contributor.author | Ing-Jen Hung | en |
dc.contributor.author | 洪迎禎 | zh_TW |
dc.date.accessioned | 2021-06-08T03:31:18Z | - |
dc.date.copyright | 2021-02-22 | |
dc.date.issued | 2021 | |
dc.date.submitted | 2021-01-27 | |
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dc.identifier.uri | http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/21332 | - |
dc.description.abstract | 隨著網路基礎設施和資訊科技的發展,日常生活和網路越來越息息相關,各企業為了強化競爭優勢與增加對網站使用者的了解,更加重視使用者在網路上的瀏覽足跡,在資料時代的現今社會,能從資料中萃取出有用的資訊,預測未來者,才得以掌握市場。本研究將重心放在使用者點擊行為上,過去文獻指出,有著類似點擊紀錄的使用者,會有相似的購買行為,在以進入官網的管道以分析重點下,本研究提出兩階段使用者行為分析模型,先將使用者分群,後預測該群體之行為,使得企業在分配資源時,能夠根據此模型,進而在進行資源預算分配時,得以最大化資源效益,找出獲利最高之分配策略。 分析這些數據有一個終極的目標,就是提高使用者在網路上行為的轉換率,也就是增加使用者購買的機率。在實際有購買之前,使用者會在不同裝置上,和企業有各式各樣的接觸點,例如關鍵字廣告、社群廣告轉換等等為了要最佳化企業的資源分配,我們利用多點擊歸因模型的概念,分析各個接觸點的發生順序的影響,探索使用者行為,將此轉換成有商業價值的洞見。分析使用者的歷史點擊路徑,找出使用者的行為模式,用以預測使用者的下一個點擊路徑,接著將資源根據預測的機率去做分配,最大化企業的收益。 | zh_TW |
dc.description.abstract | The application of deep learning on E-commerce user behavior prediction has been widely used in the business world. Nowadays, customers can interact with firms through miscellaneous online ads on different channels easily. In other words, the customer now has innumerable options and limitless time to accomplish their commercial activities with firms, individualizing their own online customer journey. This kind of convenience emphasizes the importance of online advertisement allocation on different channels. Therefore, a profound understanding of customer behavior can make considerable benefit from optimizing fund allocation on diverse ad channels. To achieve this objective, multiple firms utilize a numerical methodology to create a data-driven advertisement policy. In our research, we aim to exploit online customer click data to discover the correlations between each channel and their sequential relations. We use LSTM to deal with the sequential property of our data and compare its accuracy with other non-sequential methods, such as decision tree, logistic regression, etc. Besides, we also classify our customers into several groups by their behavioral characteristics to perceive the differences between all groups as customer portrait. As a result, we discover distinct customer journey under each customer portrait. Our article provides some insights into marketing research and can help the firm to formulate online advertising criteria. | en |
dc.description.provenance | Made available in DSpace on 2021-06-08T03:31:18Z (GMT). No. of bitstreams: 1 U0001-2701202100000400.pdf: 2700832 bytes, checksum: bed7c255f3ce124d7339331b6cfbdbd0 (MD5) Previous issue date: 2021 | en |
dc.description.tableofcontents | 誌謝 ii 中文摘要 iii ABSTRACT iv 目錄 v 圖目錄 vii 表目錄 ix 第一章、緒論 1 1.1 研究背景與動機 1 1.2 研究目的 3 1.3 研究架構 4 1.4 論文架構 6 第二章、文獻回顧 7 2.1 分群演算法回顧 7 2.1.1 分群變數選擇方法 11 2.1.2 K-type分群演算法 12 2.2 深度學習預測模型 13 2.2.1預測模型介紹 21 2.2.2時間序列模型 22 2.3 使用者行為歸因模型 25 2.4 網路使用者行為分析 28 2.5 小節 32 第三章、研究方法 32 3.1 問題描述 33 3.2 模型假設 33 3.3 數學模型 34 3.3.1 模型架構 34 3.3.2 第一階段分群模型 35 3.3.3 第二階段預測模型 40 3.4 模型評估 47 第四章、使用者行為分析與預測 49 4.1資料集介紹 49 4.2 使用者管道定義 51 4.3 模型分群結果 52 4.4 預測結果 59 第五章、結論與建議 67 5.1 研究結果與貢獻 67 5.2 研究限制 68 5.3 未來研究方向 68 參考文獻 70 | |
dc.language.iso | zh-TW | |
dc.title | 深度學習在電商平臺中用戶行為預測之運用 | zh_TW |
dc.title | The application of deep learning on E-commerce user behavior prediction | en |
dc.type | Thesis | |
dc.date.schoolyear | 109-1 | |
dc.description.degree | 碩士 | |
dc.contributor.oralexamcommittee | 藍俊宏(Chun-Hung Lan),楊曙榮(Shu-Jung Yang) | |
dc.subject.keyword | 使用者行為,行為預測,多管道點擊,LSTM,線上客戶旅程, | zh_TW |
dc.subject.keyword | online customer journey,behavior prediction,LSTM,K-Prototype, | en |
dc.relation.page | 73 | |
dc.identifier.doi | 10.6342/NTU202100198 | |
dc.rights.note | 未授權 | |
dc.date.accepted | 2021-01-28 | |
dc.contributor.author-college | 工學院 | zh_TW |
dc.contributor.author-dept | 工業工程學研究所 | zh_TW |
顯示於系所單位: | 工業工程學研究所 |
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