Description |
1 online resource (238) |
Contents |
Cover; Copyright; Credits; About the Authors; About the Reviewer; www.PacktPub.com; Customer Feedback; Table of Contents; Preface; Chapter 1: 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 |
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Chapter 2: Understanding Time Series DataAdvanced 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 |
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Chapter 3: Exponential Smoothing based MethodsIntroduction to time-series smoothing; First order exponential smoothing; Second order exponential smoothing; Modeling higher-order exponential smoothing; Summary; Chapter 4: Auto-Regressive Models; Auto-regressive models; Moving average models; Building datasets with ARMA; ARIMA; Confidence interval; Summary; Chapter 5: 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 |
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Training recurrent neural networksSolving 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; Chapter 6: 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 |
Notes |
Print version record |
Subject |
Time-series analysis.
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Machine learning.
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MATHEMATICS -- Applied.
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MATHEMATICS -- Probability & Statistics -- General.
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Machine learning
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Time-series analysis
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Form |
Electronic book
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ISBN |
178829419X |
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9781788294195 |
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