Statistical Prediction and Machine Learning
暫譯: 統計預測與機器學習
Chen, John Tuhao, Lee, Clement, Chen, Lincy Y.
- 出版商: CRC
- 出版日期: 2024-08-06
- 售價: $3,630
- 貴賓價: 9.5 折 $3,449
- 語言: 英文
- 頁數: 298
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 0367332272
- ISBN-13: 9780367332273
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相關分類:
Machine Learning
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相關主題
商品描述
Written by an experienced statistics educator and two data scientists, this book unifies conventional statistical thinking and contemporary machine learning framework into a single overarching umbrella over data science. The book is designed to bridge the knowledge gap between conventional statistics and machine learning. It provides an accessible approach for readers with a basic statistics background to develop a mastery of machine learning. The book starts with elucidating examples in Chapter 1 and fundamentals on refined optimization in Chapter 2, which are followed by common supervised learning methods such as regressions, classification, support vector machines, tree algorithms, and range regressions. After a discussion on unsupervised learning methods, it includes a chapter on unsupervised learning and a chapter on statistical learning with data sequentially or simultaneously from multiple resources.
One of the distinct features of this book is the comprehensive coverage of the topics in statistical learning and medical applications. It summarizes the authors' teaching, research, and consulting experience in which they use data analytics. The illustrating examples and accompanying materials heavily emphasize understanding on data analysis, producing accurate interpretations, and discovering hidden assumptions associated with various methods.
Key Features:
- Unifies conventional model-based framework and contemporary data-driven methods into a single overarching umbrella over data science.
- Includes real-life medical applications in hypertension, stroke, diabetes, thrombolysis, aspirin efficacy.
- Integrates statistical theory with machine learning algorithms.
- Includes potential methodological developments in data science.
商品描述(中文翻譯)
由一位經驗豐富的統計教育者和兩位數據科學家撰寫,本書將傳統統計思維與當代機器學習框架統合為一個涵蓋數據科學的整體架構。此書旨在彌補傳統統計與機器學習之間的知識差距,為具備基本統計背景的讀者提供一種可接近的方法,以掌握機器學習。書中首先在第一章中闡明範例,第二章則介紹精細優化的基本概念,接著介紹常見的監督式學習方法,如迴歸、分類、支持向量機、樹算法和範圍迴歸。在討論無監督學習方法後,還包括一章關於無監督學習和一章關於統計學習,這些學習可以來自多個資源的數據,無論是順序還是同時進行。
本書的一個顯著特點是對統計學習和醫療應用主題的全面涵蓋。它總結了作者在數據分析方面的教學、研究和諮詢經驗。書中的範例和附加材料強調了對數據分析的理解、準確解釋的產出,以及發現與各種方法相關的隱藏假設。
主要特點:
- 將傳統的基於模型的框架和當代的數據驅動方法統合為一個涵蓋數據科學的整體架構。
- 包含高血壓、中風、糖尿病、溶栓、阿斯匹靈療效等實際醫療應用。
- 將統計理論與機器學習算法整合。
- 包含數據科學中潛在的方法論發展。
作者簡介
John T. Chen is a professor of Statistics at Bowling Green State University. He completed his postdoctoral training at McMaster University (Canada) after earning a PhD degree in statistics at the University of Sydney (Australia). John has published research papers in statistics journals such as Biometrika as well as in medicine journals such as the Annals of Neurology.
Clement Lee is a data scientist in a private firm in New York. He earned a Master's degree in applied mathematics from New York University, after graduating from Princeton University in computer science. Clement enjoys spending time with his beloved wife Belinda and their son Pascal.
Lincy Y. Chen is a data scientist at JP Morgan Chase & Co. She graduated from Cornell University, winning the Edward M. Snyder Prize in Statistics. Lincy has published papers regarding refinements of machine learning methods.
作者簡介(中文翻譯)
陳俊廷是波林格林州立大學的統計學教授。他在悉尼大學(澳大利亞)獲得統計學博士學位後,於麥克馬斯特大學(加拿大)完成了博士後訓練。陳教授在《Biometrika》等統計學期刊以及《神經學年鑑》等醫學期刊上發表了研究論文。
李克萊門特是紐約一家私營公司的數據科學家。他在普林斯頓大學獲得計算機科學學位後,於紐約大學獲得應用數學碩士學位。克萊門特喜歡與他心愛的妻子貝琳達和他們的兒子帕斯卡共度時光。
陳琳西是摩根大通的數據科學家。她畢業於康奈爾大學,並獲得愛德華·M·斯奈德統計學獎。琳西發表了有關機器學習方法改進的論文。