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Financial Time Series Analysis: A Modern Approach With Applications
Coles
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Financial Time Series Analysis: A Modern Approach With Applications in Ottawa, ON
By None
Current price: $274.50


By None
Financial Time Series Analysis: A Modern Approach With Applications in Ottawa, ON
Current price: $274.50
Loading Inventory...
Size: Hardcover
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Financial Time Series Analysis: A Modern Approach with Applications provides a comprehensive and application-oriented treatment of methods used to model, forecast, and interpret financial data. Designed for postgraduate students in finance, economics, econometrics, and statistics—as well as advanced undergraduates and practitioners—the book integrates theoretical rigor with modern computational techniques.The twelve chapters progress from fundamental topics such as stationarity, dependence, and linear time-series models to advanced areas including multivariate and conditional volatility models, nonlinear dynamics, time-varying parameter models, quantile regression, copula-based dependence, and wavelet methods. Each chapter features fully reproducible Python and R code using real datasets from Yahoo Finance and other open financial sources, enabling readers to bridge theory and practice.Emphasizing clarity, reproducibility, and empirical interpretation, the text includes complete derivations, diagnostic testing procedures, and interpretation guides for model outputs. Exercises at the end of each chapter encourage active learning and independent exploration.Drawing on seminal contributions by Box & Jenkins, Engle, Bollerslev, Hamilton, Tsay, and others—while reflecting advances in high-dimensional statistics and machine learning—this book serves both as a graduate-level textbook and as a practical reference for quantitative researchers and financial analysts seeking robust, data-driven insights into asset-price dynamics and market behavior.
Financial Time Series Analysis: A Modern Approach with Applications provides a comprehensive and application-oriented treatment of methods used to model, forecast, and interpret financial data. Designed for postgraduate students in finance, economics, econometrics, and statistics—as well as advanced undergraduates and practitioners—the book integrates theoretical rigor with modern computational techniques.The twelve chapters progress from fundamental topics such as stationarity, dependence, and linear time-series models to advanced areas including multivariate and conditional volatility models, nonlinear dynamics, time-varying parameter models, quantile regression, copula-based dependence, and wavelet methods. Each chapter features fully reproducible Python and R code using real datasets from Yahoo Finance and other open financial sources, enabling readers to bridge theory and practice.Emphasizing clarity, reproducibility, and empirical interpretation, the text includes complete derivations, diagnostic testing procedures, and interpretation guides for model outputs. Exercises at the end of each chapter encourage active learning and independent exploration.Drawing on seminal contributions by Box & Jenkins, Engle, Bollerslev, Hamilton, Tsay, and others—while reflecting advances in high-dimensional statistics and machine learning—this book serves both as a graduate-level textbook and as a practical reference for quantitative researchers and financial analysts seeking robust, data-driven insights into asset-price dynamics and market behavior.

















