Published by Pearson FT Press (March 15, 2021) © 2021

Dursun Delen
    VitalSource eTextbook (Lifetime access)
    €34,99
    Adding to cart… The item has been added
    ISBN-13: 9780135946435

    Predictive Analytics: Data Mining, Machine Learning and Data Science for Practitioners ,2nd edition

    Language: English

    Use Predictive Analytics to Uncover Hidden Patterns and Correlations and Improve Decision-Making


    Using predictive analytics techniques, decision-makers can uncover hidden patterns and correlations in their data and leverage these insights to improve many key business decisions. In this thoroughly updated guide, Dr. Dursun Delen illuminates state-of-the-art best practices for predictive analytics for both business professionals and students.


    Delen's holistic approach covers key data mining processes and methods, relevant data management techniques, tools and metrics, advanced text and web mining, big data integration, and much more. Balancing theory and practice, Delen presents intuitive conceptual illustrations, realistic example problems, and real-world case studies—including lessons from failed projects. It's all designed to help you gain a practical understanding you can apply for profit.


    * Leverage knowledge extracted via data mining to make smarter decisions
    * Use standardized processes and workflows to make more trustworthy predictions
    * Predict discrete outcomes (via classification), numeric values (via regression), and changes over time (via time-series forecasting)
    * Understand predictive algorithms drawn from traditional statistics and advanced machine learning
    * Discover cutting-edge techniques, and explore advanced applications ranging from sentiment analysis to fraud detection

    Foreword
    Chapter 1 Introduction to Analytics
    What's in a Name?
    Why the Sudden Popularity of Analytics and Data Science?
    The Application Areas of Analytics
    The Main Challenges of Analytics
    A Longitudinal View of Analytics
    A Simple Taxonomy for Analytics
    The Cutting Edge of Analytics: IBM Watson
    Summary
    References
    Chapter 2 Introduction to Predictive Analytics and Data Mining
    What Is Data Mining?
    What Data Mining Is Not
    The Most Common Data Mining Applications
    What Kinds of Patterns Can Data Mining Discover?
    Popular Data Mining Tools
    The Dark Side of Data Mining: Privacy Concerns
    Summary
    References
    Chapter 3 Standardized Processes for Predictive Analytics
    The Knowledge Discovery in Databases (KDD) Process
    Cross-Industry Standard Process for Data Mining (CRISP-DM)
    SEMMA
    SEMMA Versus CRISP-DM
    Six Sigma for Data Mining
    Which Methodology Is Best?
    Summary
    References
    Chapter 4 Data and Methods for Predictive Analytics
    The Nature of Data in Data Analytics
    Preprocessing of Data for Analytics
    Data Mining Methods
    Prediction
    Classification
    Decision Trees
    Cluster Analysis for Data Mining
    k-Means Clustering Algorithm
    Association
    Apriori Algorithm
    Data Mining and Predictive Analytics Misconceptions and Realities
    Summary
    References
    Chapter 5 Algorithms for Predictive Analytics
    Naive Bayes
    Nearest Neighbor
    Similarity Measure: The Distance Metric
    Artificial Neural Networks
    Support Vector Machines
    Linear Regression
    Logistic Regression
    Time-Series Forecasting
    Summary
    References
    Chapter 6 Advanced Topics in Predictive Modeling
    Model Ensembles
    Bias–Variance Trade-off in Predictive Analytics
    Imbalanced Data Problems in Predictive Analytics
    Explainability of Machine Learning Models for
    Predictive Analytics
    Summary
    References
    Chapter 7 Text Analytics, Topic Modeling, and Sentiment Analysis
    Natural Language Processing
    Text Mining Applications
    The Text Mining Process
    Text Mining Tools
    Topic Modeling
    Sentiment Analysis
    Summary
    References
    Chapter 8 Big Data for Predictive Analytics
    Where Does Big Data Come From?
    The Vs That Define Big Data
    Fundamental Concepts of Big Data
    The Business Problems That Big Data Analytics
    Addresses
    Big Data Technologies
    Data Scientists
    Big Data and Stream Analytics
    Data Stream Mining
    Summary
    References
    Chapter 9 Deep Learning and Cognitive Computing
    Introduction to Deep Learning
    Basics of “Shallow” Neural Networks
    Elements of an Artificial Neural Network
    Deep Neural Networks
    Convolutional Neural Networks
    Recurrent Networks and Long Short-Term Memory Networks
    Computer Frameworks for Implementation of Deep Learning
    Cognitive Computing
    Summary
    References
    Appendix A KNIME and the Landscape of Tools for Business Analytics and Data Science


    9780136738510   TOC    11/12/2020