Feature Engineering for Machine Learning and Data Analytics

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Alessandro Flammini
Amir Hossein Yazdavar
Amit Sheth
automatic-update
B01=Guozhu Dong
B01=Huan Liu
Baoxin Li
Ben D. Fulcher
big data
Category1=Non-Fiction
Category=UNF
Category=UYQM
Charu Aggarwal
Chase Geigle
ChengXiang Zhai
Christopher Leckie
Clayton A. Davis
COP=United Kingdom
Data Set
David Lo
DBM
Deep Learning Algorithms
Defect Prediction
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Distinguishing Sequence Patterns
eq_bestseller
eq_computing
eq_isMigrated=2
eq_nobargain
eq_non-fiction
feature extraction
feature generation
Feature Representation Learning
Feature Selection
Feature Selection Algorithms
Feature Selection Methods
Feature Selection Result
Feng Xu
Filippo Menczer
Frequent Sequence Patterns
Fundus Image
Graph Embedding
Hanghang Tong
Heterogeneous Graph
Huan Liu
Hussein S. Al-Olimat
James Bailey
Jian Lu
Jiliang Tang
Jyrki Nummenmaa
Kernel PCA
Krishnaprasad Thirunarayan
Lakshika Balasuriya
Language_English
Lei Duan
Manas Gaur
Matching Dataset
Minimum Support Threshold
Onur Varol
PA=Available
Parag S. Chandakkar
Pattern Mining
Peng Zhang
PoS Tag
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PS=Active
Qiaozhu Mei
Ragav Venkatesan
Ramamohanarao Kotagiri
RBM
Sanjaya Wijeratne
Shreyansh Bhatt
Social Bot
softlaunch
Suhang Wang
supervised learning
Tao Li
Time Series Classification
Tweet Text
Twitter User
Udayan Khurana
unsupervised learning
Word Embeddings
Xin Xia
Yao Ma
Yuan Yao
Yun Li
Yunzhe Jia

Product details

  • ISBN 9781138744387
  • Weight: 728g
  • Dimensions: 156 x 234mm
  • Publication Date: 04 Apr 2018
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
  • Language: English
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Feature engineering plays a vital role in big data analytics. Machine learning and data mining algorithms cannot work without data. Little can be achieved if there are few features to represent the underlying data objects, and the quality of results of those algorithms largely depends on the quality of the available features. Feature Engineering for Machine Learning and Data Analytics provides a comprehensive introduction to feature engineering, including feature generation, feature extraction, feature transformation, feature selection, and feature analysis and evaluation.

The book presents key concepts, methods, examples, and applications, as well as chapters on feature engineering for major data types such as texts, images, sequences, time series, graphs, streaming data, software engineering data, Twitter data, and social media data. It also contains generic feature generation approaches, as well as methods for generating tried-and-tested, hand-crafted, domain-specific features.

The first chapter defines the concepts of features and feature engineering, offers an overview of the book, and provides pointers to topics not covered in this book. The next six chapters are devoted to feature engineering, including feature generation for specific data types. The subsequent four chapters cover generic approaches for feature engineering, namely feature selection, feature transformation based feature engineering, deep learning based feature engineering, and pattern based feature generation and engineering. The last three chapters discuss feature engineering for social bot detection, software management, and Twitter-based applications respectively.

This book can be used as a reference for data analysts, big data scientists, data preprocessing workers, project managers, project developers, prediction modelers, professors, researchers, graduate students, and upper level undergraduate students. It can also be used as the primary text for courses on feature engineering, or as a supplement for courses on machine learning, data mining, and big data analytics.

Dr. Guozhu Dong is a professor of Computer Science and Engineering at Wright State University. He obtained his Ph.D. in Computer Science from University of Southern California and his B.S. in Mathematics from Shandong University. Before joining Wright State University, he was a faculty member at Flinders University and then at the University of Melbourne. At Wright State University, he was recognized for Excellence in Research in the College of Engineering and Computer Science. His research interests are in data mining, machine learning, database, data science, and artificial intelligence. He co-authored a book on Sequence Data Mining and co-edited a book on Contrast Data Mining. He has served on numerous conference program committees.

Dr. Huan Liu is a professor of Computer Science and Engineering at Arizona State University. He obtained his Ph.D. in Computer Science at University of Southern California and B.Eng. in Computer Science and Electrical Engineering at Shanghai JiaoTong University. Before he joined ASU, he worked at Telecom Australia Research Labs and was on the faculty at National University of Singapore. At Arizona State University, he was recognized for excellence in teaching and research in Computer Science and Engineering and received the 2014 President's Award for Innovation. His research interests are in data mining, machine learning, social computing, and artificial intelligence, investigating interdisciplinary problems that arise in many real-world, data-intensive applications with high-dimensional data of disparate forms such as social media. His well-cited publications include books, book chapters, encyclopedia entries as well as conference and journal papers. He is a co-author of Social Media Mining: An Introduction by Cambridge University Press. He serves on journal editorial boards and numerous conference program committees, and is a founding organizer of the International Conference Series on Social Computing, Behavioral-Cultural Modeling, and Prediction. He is an IEEE Fellow. More can be found at http://www.public.asu.edu/~huanliu.