Time Series Algorithms Recipes : Implement Machine Learning and Deep Learning Techniques with Python / Akshay R. Kulkarni, Adarsha Shivananda, Anoosh Kulkarni, V. Adithya Krishnan.
2023
HA30.3 .K85 2023
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Title
Time Series Algorithms Recipes : Implement Machine Learning and Deep Learning Techniques with Python / Akshay R. Kulkarni, Adarsha Shivananda, Anoosh Kulkarni, V. Adithya Krishnan.
Author
ISBN
9781484289785 (electronic bk.)
1484289781 (electronic bk.)
9781484289778
1484289773
1484289781 (electronic bk.)
9781484289778
1484289773
Published
New York, NY : Apress L. P., [2023]
Language
English
Description
1 online resource (xvi, 174 pages) : illustrations
Item Number
10.1007/978-1-4842-8978-5 doi
Call Number
HA30.3 .K85 2023
Dewey Decimal Classification
006.31
Summary
This book teaches the practical implementation of various concepts for time series analysis and modeling with Python through problem-solution-style recipes, starting with data reading and preprocessing. It begins with the fundamentals of time series forecasting using statistical modeling methods like AR (autoregressive), MA (moving-average), ARMA (autoregressive moving-average), and ARIMA (autoregressive integrated moving-average). Next, you'll learn univariate and multivariate modeling using different open-sourced packages like Fbprohet, stats model, and sklearn. You'll also gain insight into classic machine learning-based regression models like randomForest, Xgboost, and LightGBM for forecasting problems. The book concludes by demonstrating the implementation of deep learning models (LSTMs and ANN) for time series forecasting. Each chapter includes several code examples and illustrations. After finishing this book, you will have a foundational understanding of various concepts relating to time series and its implementation in Python. What You Will Learn Implement various techniques in time series analysis using Python. Utilize statistical modeling methods such as AR (autoregressive), MA (moving-average), ARMA (autoregressive moving-average) and ARIMA (autoregressive integrated moving-average) for time series forecasting Understand univariate and multivariate modeling for time series forecasting Forecast using machine learning and deep learning techniques such as GBM and LSTM (long short-term memory) Who This Book Is ForData Scientists, Machine Learning Engineers, and software developers interested in time series analysis.
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Table of Contents
Chapter 1: Getting Started with Time Series
Chapter 2: Statistical Univariate Modelling
Chapter 3: Statistical Multivariate Modelling
Chapter 4: Machine Learning Regression-Based Forecasting
Chapter 5: Forecasting Using Deep Learning.
Chapter 2: Statistical Univariate Modelling
Chapter 3: Statistical Multivariate Modelling
Chapter 4: Machine Learning Regression-Based Forecasting
Chapter 5: Forecasting Using Deep Learning.