Volume I of a complete graduate course in time series analytics. Foundations and Linear Models in eighteen rigorous chapters, with theorems, full proofs, and runnable Python on real markets.
This is the textbook the author wished he had when first standing in front of a quantitative graduate audience. The literature splits, awkwardly, into rigorous monographs that assume more probability theory than most applied students bring; econometrics texts that move past foundations to applications; and software-first introductions that get students producing forecasts but unable to defend a single line of the underlying derivation. Time Series Analytics: Theory and Python Practice sits in a different middle. Every chapter combines formal theory with working code.
Volume I covers:
What makes this different:
For graduate students in statistics, financial engineering, applied mathematics, and quantitative economics — and for the practitioner who wants both the theory and the working code in a single self-contained text.
Prerequisites: probability through the central limit theorem; linear algebra including Cholesky decomposition; idiomatic NumPy and pandas. No prior exposure to statsmodels, arch, or yfinance is assumed.
Volume II (sold separately) covers Estimation, Forecasting and Diagnostics; Multivariate and Volatility Models (VAR, Granger causality, IRFs, cointegration, ARCH/GARCH/EGARCH/GJR-GARCH and Value-at-Risk); and four end-to-end Python projects on Bitcoin volatility and a Gold–Bitcoin VAR.
Approximately 495 pages • 18 chapters • 90 worked discussion-question solutions • dataset whitelist (NIFTY 50, NIFTY Bank, MRF, Reliance) • full reproducibility under np.random.seed(42).
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Anbieter: California Books, Miami, FL, USA
Zustand: New. Print on Demand. Bestandsnummer des Verkäufers I-9798259382367
Anzahl: Mehr als 20 verfügbar