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Forecasting and predictive analytics : with ForecastX / Barry Keating and J. Holton Wilson.

By: Keating, Barry.
Contributor(s): Wilson, J. holton.
Material type: materialTypeLabelBookPublisher: New York : McGraw-Hill Education, 2019Edition: 7th ed.Description: xix, 567 p. : ill., chart.ISBN: 9781260085235.Subject(s): Business forecasting | ForecastingCall number: 658.403550285554 Ke25F 2019
Contents:
Contents : Chapter 1: Introduction to Business Forecasting and Predictive Analytics -- Chapter 2:The Forecast Process, Data Considerations, and Model Selection -- Chapter 3:Extrapolation 1. Moving Averages and Exponential Smoothing -- Chapter 4:Extrapolation 2. Introduction to Forecasting with Regression Trend Models -- Chapter 5:Explanatory Models 1. Forecasting with Multiple Regression Causal Models -- Chapter 6:Explanatory Models 2. Time-Series Decomposition -- Chapter 7:Explanatory Models 3. ARIMA (Box-Jenkins) Forecasting Models -- Chapter 8:Predictive Analytics: Helping to Make Sense of Big Data -- Chapter 9:Classification Models: The Most Used Models in Analytics -- Chapter 10:Ensemble Models and Clustering -- Chapter 11:Text Mining -- Chapter 12:Forecast/Analytics Implementation
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สำนักวิทยบริการและเทคโนโลยีสารสนเทศ
General Book/5th Flr.
658.403550285554 Ke25F 2019 (Browse shelf) 1 Available 1000379369

Includes bibliographical references and index.

Contents : Chapter 1: Introduction to Business Forecasting and Predictive Analytics -- Chapter 2:The Forecast Process, Data Considerations, and Model Selection -- Chapter 3:Extrapolation 1. Moving Averages and Exponential Smoothing -- Chapter 4:Extrapolation 2. Introduction to Forecasting with Regression Trend Models -- Chapter 5:Explanatory Models 1. Forecasting with Multiple Regression Causal Models -- Chapter 6:Explanatory Models 2. Time-Series Decomposition -- Chapter 7:Explanatory Models 3. ARIMA (Box-Jenkins) Forecasting Models -- Chapter 8:Predictive Analytics: Helping to Make Sense of Big Data -- Chapter 9:Classification Models: The Most Used Models in Analytics -- Chapter 10:Ensemble Models and Clustering -- Chapter 11:Text Mining -- Chapter 12:Forecast/Analytics Implementation

190530

Keating, Barry and Wilson, J. holton. (2019). Forecasting and predictive analytics : with ForecastX. (7th ed.). New York : McGraw-Hill Education.

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