Dr Pang-Ning Tan is a Professor in the Department of Computer Science and Engineering at Michigan State University. He received his M.S. degree in Physics and Ph.D. degree in Computer Science from University of Minnesota. His research interests focus on the development of novel data mining algorithms for a broad range of applications, including climate and ecological sciences, cybersecurity, and network analysis. He has published more than 130 technical papers in the area of data mining, including top conferences and journals such as KDD, ICDM, SDM, CIKM, and TKDE.
Dr. Michael Steinbach is a Research Scientist in the department of Computer Science and Engineering at the University of Minnesota, from which he earned a B.S. degree in Mathematics, an M.S. degree in Statistics, and M.S. and Ph.D. degrees in Computer Science. His research interests are in the areas of data mining, machine learning, and statistical learning and its applications to fields, such as climate, biology, and medicine. This research has resulted in more than 100 papers published in the proceedings of major data mining conferences or computer science or domain journals. Previous to his academic career, he held a variety of software engineering, analysis, and design positions in industry at Silicon Biology, Racotek, and NCR.
Dr. Anuj Karpatne is a Post Doctoral Associate in the Department of Computer Science and Engineering at the University of Minnesota. He received his M.Tech in Mathematics and Computing from the Indian Institute of Technology Delhi, and a Ph.D. in Computer Science at the University of Minnesota under the guidance of Prof. Vipin Kumar. His research interests lie in the development of data mining and machine learning algorithms for solving scientific and socially relevant problems in varied disciplines such as climate science, hydrology, and healthcare. His research has been published at top-tier journals and conferences such as SDM, ICDM, KDD, NIPS, TKDE, and ACM Computing Surveys.
Introduction to Data Mining, 2nd Edition, gives a comprehensive overview of the background and general themes of data mining and is designed to be useful to students, instructors, researchers, and professionals. Presented in a clear and accessible way, the book outlines fundamental concepts and algorithms for each topic, thus providing the reader with the necessary background for the application of data mining to real problems. The text helps readers understand the nuances of the subject, and includes important sections on classification, association analysis, and cluster analysis. This edition improves on the first iteration of the book, published over a decade ago, by addressing the significant changes in the industry as a result of advanced technology and data growth.
發表於2025-04-26
Introduction to Data Mining, Second Edition 2025 pdf epub mobi 電子書 下載
我是拿這本書當作課程書的,這本書基本上涵蓋瞭數據挖掘的許多經典算法,分類,聚類,關聯規則。比較適閤對數據挖掘感興趣的人,這本書看完之後基本上就可以進行對數據的分析,挖掘瞭。然而這僅僅是一門入門書,對於理論部分並沒有做過多的解釋。如果想進一步的瞭解理論知識,...
評分該書特點:以實例為重,給齣瞭常用算法的僞代碼,和《模式識彆》、《模式分類》等專著比起來,該書略去瞭各個定理的證明部分,並通過大量枚舉具體的分類實例,來簡要說明算法的流程和意義。 根據個人的體驗,覺得這本書作為第一本數據挖掘的入門讀物是再恰當不過的瞭。...
評分 評分我的習慣就是在蹲坑的時候讀一些艱澀高深的科學讀物,這樣有助於我在排泄的時候大腦保持高度的興奮狀態,不至於被熏暈或者不至於被引人入勝的小說情節所陶醉最後導緻肛瘻…… 但是,這本書另我驚詫瞭…… 第一他不艱澀,是我讀到過的關於統計、關於數據、關於計算的最科普的讀...
評分The book is used as a textbook for my data mining class. It covers all fundamental theories and concepts of data mining, and it explained everything in a quite easy-to-understand and detailed manner. It is suggested to have a good comprehension of some math...
圖書標籤: 數據挖掘 機器學習 數據科學 Data_Science 計算機科學 英文原版 數據分析 USC567
Introduction to Data Mining, Second Edition 2025 pdf epub mobi 電子書 下載