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研究生: 詹惠琹
Hui-Cin Chan
論文名稱: 自動化機器學習於影像辨識應用之效能比較研究
Comparative Study on the Effectiveness of Automated Machine Learning in Image Recognition Applications
指導教授: 周碩彥
Shuo-Yan Chou
郭伯勳
Po-Hsun Kuo
口試委員: 周碩彥
Shuo-Yan Chou
郭伯勳
Po-Hsun Kuo
喻奉天
Vincent F. Yu
學位類別: 碩士
Master
系所名稱: 管理學院 - 工業管理系
Department of Industrial Management
論文出版年: 2019
畢業學年度: 107
語文別: 英文
論文頁數: 42
中文關鍵詞: 自動機器學習AutokerasGoogle Cloud AutoML
外文關鍵詞: Automl, Autokeras, Google Cloud AutoML
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  • 在過去幾年中,機器學習在各種應用中的成功,導致機器學習系統的需求快速增長。典型的機器學習模型包括以下過程:從攝取數據到預處理、優化、預測結果,每個步驟都由人工控制和執行。機器學習現在的成功必須要靠有經驗的專家選擇出合適的特徵、模型、優化、評價有關的重要步驟。然而要讓機器學習未來能夠大量的被運用需要找到一個通用且易用的方法才行,這種將機器學習自動化的研究領域被稱之為AutoML全稱是Automated Machine Learning,是2014年以來機器學習和深度學習領域最炙手可熱的領域之一。自動化機器學習之議題日趨重要,Google AI應用AutoML來尋找更好的捲積網絡替代架構,對自動駕駛汽車中的圖像進行分類。營銷部門的報告速度提高了30%,準確度提高了8%,令人印象深刻。
    目前市場上有很多工具與平台聲稱具有AutoML,但大多只提供超參數調校,卻沒有資料清整、資料探索或是資料轉置的功能,有些著重在Atuo ML的功能、部分則是強調在使用者體驗(UX)或是提供更多資料視覺化的服務。不約而同的是,他們都把智慧自動化模型當作最重要的任務。本論文旨在了解autoML概念及應用當前框架,透過mnist手寫辨識圖像,了解其中運作方法及效能。


    In the past few years, the success of machine learning in a variety of applications has led to a rapid increase in the demand for machine learning systems. A typical machine learning model includes the following processes: from ingesting data to pre-processing, optimization, and predicting results, each step is manually controlled and executed. The current success of machine learning must rely on experienced experts to select the appropriate features, models, optimization, and evaluation of important steps. However, in order for machine learning to be used in large numbers in the future, it is necessary to find a universal and easy-to-use method. The research field that automates machine learning is called AutoML. The full name is Automated Machine Learning, which is machine learning and since 2014. One of the hottest areas of deep learning. The topic of automated machine learning is becoming more and more important. Google AI uses AutoML to find a better alternative architecture for convolutional networks to classify images in autonomous vehicles. The marketing department’s reporting rate has increased by 30% and accuracy has increased by 8%, which is impressive.
    At present, there are many tools and platforms on the market that claim to have AutoML, but most of them only provide hyper-parameter tuning, but there is no data clearing, data exploration or data transposition function. Some emphasize the function of autoML, and some emphasize it. User experience (UX) or a service that provides more information visualization. Invariably, they all regard the intelligent automation model as the most important task. This thesis aims to understand the current framework of autoML concepts and applications, and to identify images and understand the operation methods and performance through mnist handwriting.

    中文摘要 III Abstract IV Acknowledgement V Table of Contents VI List of Figures VIII List of Tables IX 1. Chapter 1 Introduction 1 1.1 Background and Motivation 1 1.2 Objective 2 1.3 Organization of the Thesis 3 2. Chapter 2 Literature Review 4 2.1 Machine Learning status 4 2.2 Automated Machine Learning (AutoML) 5 2.2.1 The definition of AutoML 5 2.2.2 Work of AutoML 6 2.2.3 Framework of AutoML (at the present stage) 9 3. Chapter 3 Methodology Design 12 3.1 Experimental operation process 12 3.2 Description of Data 13 3.3 Google Cloud automl 15 3.4 Autokeras 20 3.5 Manual modeling 26 4. Chapter 4 Implementation and Analysis 31 4.1 Google cloud autoML 31 4.2 Autokeras 34 4.3 Manual modeling 35 4.4 Comprehensive discussion 37 Manual modeling 37 5. Chapter 5 Conclusion and Future Research 38 References 39

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