• Time Series Decomposition and Seasonal Adjustment

Time Series Decomposition and Seasonal Adjustment

Out of stock
N/A
Free Shipping within the US
Get it by: Jul 6, 2026
Overview

This book provides an in-depth examination of time series decomposition and seasonal adjustment, focusing on the X-13ARIMA-SEATS and TRAMO-SEATS methods. Seasonal adjustment removes distortions such as seasonal fluctuations and holiday effects from economic indicators (eg, GDP, CPI), enabling clearer insights into underlying trends, cycles, and shocks. These tools are vital for sound policymaking, accurate forecasting, and reliable international comparisons.X-13ARIMA-SEATS, developed by the U.S. Census Bureau, combines empirical moving average filters with ARIMA/regARIMA modelling to handle outliers, calendar effects, and endpoint issues. TRAMO-SEATS, created by the Bank of Spain, uses a model-based strategy: TRAMO pre-adjusts data with ARIMA models, while SEATS applies signal extraction to decompose components. X-13ARIMA-SEATS excels with stable seasonal patterns, while TRAMO-SEATS provides rigorous solutions for complex holiday structures.The book also examines modern challenges, including structural breaks from COVID-19, high-frequency data with multiple seasonalities, and the demand for real-time adjustments. It reviews innovations such as hybrid models combining machine learning with traditional filters, Bayesian state-space approaches, and adaptive methods like Kalman filters.Intended for students, researchers, staff at national statistical agencies, central banks, and financial institutions, the book equips readers with methodological and practical tools to navigate evolving economic data landscapes.

Product Details

ISBN-13: 9781041204619
ISBN-10: 1041204612
Publisher: CRC Press LLC
Publication date: 2026
Edition description: 1
Pages: 360
Product dimensions: height: 260 mm, length: 184 mm, width: 28 mm, weight: 900 g
Author: Ping Zong
Language: en
Binding: Hardcover

Books Related to Computers & Technology

Discover more books in the same category

Customer Reviews