Time Series+finance

Recurrence Interval Analysis of Financial Time Series  eBooks & eLearning

Posted by hill0 at March 7, 2024
Recurrence Interval Analysis of Financial Time Series

Recurrence Interval Analysis of Financial Time Series
English | 2024 | ISBN: 1009486616 | 86 Pages | PDF (True) | 1.1 MB

Udemy - Time Series Analysis in Python (2020)  eBooks & eLearning

Posted by ParRus at Feb. 22, 2020
Udemy - Time Series Analysis in Python (2020)

Udemy - Time Series Analysis in Python (2020)
WEBRip | English | MP4 | 1280 x 720 | AVC ~905 Kbps | 30 fps
AAC | 128 Kbps | 44.1 KHz | 2 channels | Subs: English (.srt) | ~7.5 hours | 2.92 GB
Genre: Video Tutorial / Python, Data & Analytics, Time Series Analysis

Time Series Analysis in Python: Theory, Modeling: AR to SARIMAX, Vector Models, GARCH, Auto ARIMA, Forecasting.

Time Series in Economics and Finance  eBooks & eLearning

Posted by roxul at Aug. 31, 2020
Time Series in Economics and Finance

Tomas Cipra, "Time Series in Economics and Finance"
English | ISBN: 303046346X | 2020 | 353 pages | PDF, EPUB | 10 + 17 MB

Discrete Time Series, Processes, and Applications in Finance (repost)  eBooks & eLearning

Posted by arundhati at July 2, 2020
Discrete Time Series, Processes, and Applications in Finance (repost)

Gilles Zumbach, "Discrete Time Series, Processes, and Applications in Finance "
English | ISBN: 3642317413 | 2013 | 322 pages | PDF | 23 MB
"Time Series Analysis: Recent Advances, New Perspectives and Applications" ed. by Jorge Rocha, Sandra Oliveira, Cláudia Viana

"Time Series Analysis: Recent Advances, New Perspectives and Applications" ed. by Jorge Rocha, Sandra Oliveira, Cláudia Viana
ITexLi | 2024 | ISBN: 0854660526 9780854660520 0854660534 9780854660537 0854660542 9780854660544 | 269 pages | PDF | 44 MB

This book includes contributions from researchers, scholars, and professionals about the most recent theory, models, and applications for interdisciplinary and multidisciplinary research encircling disciplines of computer science, mathematics, statistics, geography, and more in time series analysis and forecasting/backcasting.
"Time Series Analysis: Recent Advances, New Perspectives and Applications" ed. by Jorge Rocha, Sandra Oliveira, Cláudia Viana

"Time Series Analysis: Recent Advances, New Perspectives and Applications" ed. by Jorge Rocha, Sandra Oliveira, Cláudia Viana
ITexLi | 2024 | ISBN: 0854660526 9780854660520 0854660534 9780854660537 0854660542 9780854660544 | 269 pages | PDF | 44 MB

This book includes contributions from researchers, scholars, and professionals about the most recent theory, models, and applications for interdisciplinary and multidisciplinary research encircling disciplines of computer science, mathematics, statistics, geography, and more in time series analysis and forecasting/backcasting.

Forecast Crypto Market with Time Series & Machine Learning  eBooks & eLearning

Posted by lucky_aut at Aug. 31, 2023
Forecast Crypto Market with Time Series & Machine Learning

Forecast Crypto Market with Time Series & Machine Learning
Published 8/2023
Duration: 3h7m | .MP4 1280x720, 30 fps(r) | AAC, 44100 Hz, 2ch | 1.17 GB
Genre: eLearning | Language: English

Learn how to forecast cryptocurrency market with Prophet model, time series decomposition, Random Forest, and XGBoost

Predictions in Time Series Using Regression Models  eBooks & eLearning

Posted by AvaxGenius at Aug. 6, 2023
Predictions in Time Series Using Regression Models

Predictions in Time Series Using Regression Models by František Štulajter
English | PDF | 2002 | 237 Pages | ISBN : 0387953507 | 13.5 MB

Books on time series models deal mainly with models based on Box-Jenkins methodology which is generally represented by autoregressive integrated moving average models or some nonlinear extensions of these models, such as generalized autoregressive conditional heteroscedasticity models. Statistical inference for these models is well developed and commonly used in practical applications, due also to statistical packages containing time series analysis parts. The present book is based on regression models used for time series. These models are used not only for modeling mean values of observed time se­ ries, but also for modeling their covariance functions which are often given parametrically. Thus for a given finite length observation of a time series we can write the regression model in which the mean value vectors depend on regression parameters and the covariance matrices of the observation depend on variance-covariance parameters. Both these dependences can be linear or nonlinear. The aim of this book is to give an unified approach to the solution of statistical problems for such time series models, and mainly to problems of the estimation of unknown parameters of models and to problems of the prediction of time series modeled by regression models.

Long‐Memory Time Series: Theory and Methods  eBooks & eLearning

Posted by AvaxGenius at Jan. 30, 2024
Long‐Memory Time Series: Theory and Methods

Long‐Memory Time Series: Theory and Methods by Wilfredo Palma
English | PDF | 2006 | 293 Pages | ISBN : 0470114029 | 36.7 MB

A self-contained, contemporary treatment of the analysis of long-range dependent data
Long-Memory Time Series: Theory and Methods provides an overview of the theory and methods developed to deal with long-range dependent data and describes the applications of these methodologies to real-life time series. Systematically organized, it begins with the foundational essentials, proceeds to the analysis of methodological aspects (Estimation Methods, Asymptotic Theory, Heteroskedastic Models, Transformations, Bayesian Methods, and Prediction), and then extends these techniques to more complex data structures.

New Introduction to Multiple Time Series Analysis  eBooks & eLearning

Posted by AvaxGenius at March 11, 2022
New Introduction to Multiple Time Series Analysis

New Introduction to Multiple Time Series Analysis by Helmut Lütkepohl
English | PDF(True) | 2005 | 765 Pages | ISBN : 3540401725 | 13.3 BMB

This reference work and graduate level textbook considers a wide range of models and methods for analyzing and forecasting multiple time series. The models covered include vector autoregressive, cointegrated,vector autoregressive moving average, multivariate ARCH and periodic processes as well as dynamic simultaneous equations and state space models. Least squares, maximum likelihood and Bayesian methods are considered for estimating these models.