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Index
Title Page Copyright
Practical Time Series Analysis
Credits About the Authors About the Reviewer www.PacktPub.com
Why subscribe?
Customer Feedback Preface
What this book covers What you need for this book Who this book is for Conventions Reader feedback Customer support
Downloading the example code Errata Piracy Questions
Introduction to Time Series
Different types of data
Cross-sectional data Time series data Panel data
Internal structures of time series
General trend Seasonality
Run sequence plot Seasonal sub series plot Multiple box plots
Cyclical changes Unexpected variations
Models for time series analysis
Zero mean models Random walk Trend models Seasonality models
Autocorrelation and Partial autocorrelation Summary
Understanding Time Series Data
Advanced processing and visualization of time series data Resampling time series data
Group wise aggregation Moving statistics
Stationary processes
Differencing
First-order differencing Second-order differencing Seasonal differencing
Augmented Dickey-Fuller test
Time series decomposition
Moving averages
Moving averages and their smoothing effect Seasonal adjustment using moving average Weighted moving average
Time series decomposition using moving averages Time series decomposition using statsmodels.tsa
Summary
Exponential Smoothing based Methods
Introduction to time series smoothing First order exponential smoothing Second order exponential smoothing Modeling higher-order exponential smoothing Summary
Auto-Regressive Models
Auto-regressive models Moving average models
Building datasets with ARMA ARIMA Confidence interval
Summary
Deep Learning for Time Series Forecasting
Multi-layer perceptrons
Training MLPs MLPs for time series forecasting
Recurrent neural networks
Bi-directional recurrent neural networks Deep recurrent neural networks Training recurrent neural networks Solving the long-range dependency problem
Long Short Term Memory Gated Recurrent Units Which one to use - LSTM or GRU?
Recurrent neural networks for time series forecasting
Convolutional neural networks
2D convolutions 1D convolution 1D convolution for time series forecasting
Summary
Getting Started with Python
Installation
Python installers Running the examples
Basic data types
List, tuple, and set Strings Maps
Keywords and functions Iterators, iterables, and generators
Iterators Iterables Generators
Classes and objects Summary
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