Bradley Efron, Stanford University, California
Bradley Efron is Max H. Stein Professor, Professor of Statistics, and Professor of Biomedical Data Science at Stanford University, California. He has held visiting faculty appointments at Harvard University, Massachusetts, the University of California, Berkeley, and Imperial College of Science, Technology and Medicine, London. Efron has worked extensively on theories of statistical inference, and is the inventor of the bootstrap sampling technique. He received the National Medal of Science in 2005 and the Guy Medal in Gold of the Royal Statistical Society in 2014.
Trevor Hastie, Stanford University, California
Trevor Hastie is John A. Overdeck Professor, Professor of Statistics, and Professor of Biomedical Data Science at Stanford University, California. He is coauthor of Elements of Statistical Learning, a key text in the field of modern data analysis. He is also known for his work on generalized additive models and principal curves, and for his contributions to the R computing environment. Hastie was awarded the Emmanuel and Carol Parzen prize for Statistical Innovation in 2014.
The twenty-first century has seen a breathtaking expansion of statistical methodology, both in scope and in influence. 'Big data', 'data science', and 'machine learning' have become familiar terms in the news, as statistical methods are brought to bear upon the enormous data sets of modern science and commerce. How did we get here? And where are we going? This book takes us on an exhilarating journey through the revolution in data analysis following the introduction of electronic computation in the 1950s. Beginning with classical inferential theories - Bayesian, frequentist, Fisherian - individual chapters take up a series of influential topics: survival analysis, logistic regression, empirical Bayes, the jackknife and bootstrap, random forests, neural networks, Markov chain Monte Carlo, inference after model selection, and dozens more. The distinctly modern approach integrates methodology and algorithms with statistical inference. The book ends with speculation on the future direction of statistics and data science.
Clarifies both traditional methods and current, popular algorithms (e.g. neural nets, random forests)
Written by two world-leading researchers
Addressed to all fields that work with data
發表於2024-11-25
Computer Age Statistical Inference 2024 pdf epub mobi 電子書 下載
圖書標籤: 統計學 統計 數據科學 計算機 statistics Statistics 算法 統計學
世上有一些書讀起來很痛苦,但卻得給好評,掉瞭一星隻是因為此書屬於“無需證明,顯然可得”的高級數學書,非習慣抽象概念公式化且可以自行推導的人不能深入。縱覽數據統計科學理論和方法發展的百年風雲,也許這本書不是最好,但應該是最全麵的之一,即便越往後感覺愈發簡練,當然每一章本來就能單獨拿齣來寫好幾本書,所以將近500頁的此書必定有體量限製。非統計相關方嚮的心理學人大概對整個統計方法領域的發展本身興趣不大,但書中例子涉及的方法足使人瞭解在傳統模式的桎梏之外還存在著更多可能性,此外各種方法在數學證明層麵的相互比較也是非理論統計專業課程難見的。由於心理學研究至今絕大部分仍是非大數據驅動,經典方法占主流,雖然不知道測量評估距離量大質優的終極目標還需多久,但若想吃到現今計算力爆發的紅利還是需要相符的高級工具。
評分很好,等把每一章的專題學下用下,再來讀第2遍,2017第1本
評分對這個統計領域的一個high level綜述,學過統計理論or機器學習基本上可以讀懂大部分。講得比較泛,瞭解一些主要思想還不錯,具體細節還是要看專門的書。
評分世上有一些書讀起來很痛苦,但卻得給好評,掉瞭一星隻是因為此書屬於“無需證明,顯然可得”的高級數學書,非習慣抽象概念公式化且可以自行推導的人不能深入。縱覽數據統計科學理論和方法發展的百年風雲,也許這本書不是最好,但應該是最全麵的之一,即便越往後感覺愈發簡練,當然每一章本來就能單獨拿齣來寫好幾本書,所以將近500頁的此書必定有體量限製。非統計相關方嚮的心理學人大概對整個統計方法領域的發展本身興趣不大,但書中例子涉及的方法足使人瞭解在傳統模式的桎梏之外還存在著更多可能性,此外各種方法在數學證明層麵的相互比較也是非理論統計專業課程難見的。由於心理學研究至今絕大部分仍是非大數據驅動,經典方法占主流,雖然不知道測量評估距離量大質優的終極目標還需多久,但若想吃到現今計算力爆發的紅利還是需要相符的高級工具。
評分這本書講得很好,但需要讀者至少有較好的本科數理統計基礎,否者你會覺得他們很多東西沒講透,就像amazon.com裏一些評論所說。
Computer Age Statistical Inference 2024 pdf epub mobi 電子書 下載