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Daniel Peña

Kirjat ja teokset yhdessä paikassa: 4 kirjaa, julkaisuja vuosilta 2000-2021, suosituimpien joukossa Bang. Vertaile teosten hintoja ja tarkista saatavuus suomalaisista kirjakaupoista.

Mukana myös kirjoitusasut: Daniel Pena

4 kirjaa

Kirjojen julkaisuhaarukka 2000-2021.

Statistical Learning for Big Dependent Data

Statistical Learning for Big Dependent Data

Daniel Peña; Ruey S. Tsay

Wiley-Blackwell
2021
sidottu
Master advanced topics in the analysis of large, dynamically dependent datasets with this insightful resource Statistical Learning with Big Dependent Data delivers a comprehensive presentation of the statistical and machine learning methods useful for analyzing and forecasting large and dynamically dependent data sets. The book presents automatic procedures for modelling and forecasting large sets of time series data. Beginning with some visualization tools, the book discusses procedures and methods for finding outliers, clusters, and other types of heterogeneity in big dependent data. It then introduces various dimension reduction methods, including regularization and factor models such as regularized Lasso in the presence of dynamical dependence and dynamic factor models. The book also covers other forecasting procedures, including index models, partial least squares, boosting, and now-casting. It further presents machine-learning methods, including neural network, deep learning, classification and regression trees and random forests. Finally, procedures for modelling and forecasting spatio-temporal dependent data are also presented. Throughout the book, the advantages and disadvantages of the methods discussed are given. The book uses real-world examples to demonstrate applications, including use of many R packages. Finally, an R package associated with the book is available to assist readers in reproducing the analyses of examples and to facilitate real applications. Analysis of Big Dependent Data includes a wide variety of topics for modeling and understanding big dependent data, like: New ways to plot large sets of time seriesAn automatic procedure to build univariate ARMA models for individual components of a large data setPowerful outlier detection procedures for large sets of related time seriesNew methods for finding the number of clusters of time series and discrimination methods , including vector support machines, for time seriesBroad coverage of dynamic factor models including new representations and estimation methods for generalized dynamic factor modelsDiscussion on the usefulness of lasso with time series and an evaluation of several machine learning procedure for forecasting large sets of time seriesForecasting large sets of time series with exogenous variables, including discussions of index models, partial least squares, and boosting.Introduction of modern procedures for modeling and forecasting spatio-temporal data Perfect for PhD students and researchers in business, economics, engineering, and science: Statistical Learning with Big Dependent Data also belongs to the bookshelves of practitioners in these fields who hope to improve their understanding of statistical and machine learning methods for analyzing and forecasting big dependent data.
Bang

Bang

Daniel Pena

Arte Publico Press
2018
nidottu
An undocumented Mexican family living in South Texas is torn apart when a son inadvertently becomes involved with narcotraficantes in Daniel Pena's debut novel that explores contemporary issues of immigration, border life and international drug smuggling.
A Course in Time Series Analysis

A Course in Time Series Analysis

Daniel Peña; George C. Tiao; Ruey S. Tsay

John Wiley Sons Inc
2000
sidottu
New statistical methods and future directions of research in time series A Course in Time Series Analysis demonstrates how to build time series models for univariate and multivariate time series data. It brings together material previously available only in the professional literature and presents a unified view of the most advanced procedures available for time series model building. The authors begin with basic concepts in univariate time series, providing an up-to-date presentation of ARIMA models, including the Kalman filter, outlier analysis, automatic methods for building ARIMA models, and signal extraction. They then move on to advanced topics, focusing on heteroscedastic models, nonlinear time series models, Bayesian time series analysis, nonparametric time series analysis, and neural networks. Multivariate time series coverage includes presentations on vector ARMA models, cointegration, and multivariate linear systems. Special features include: *Contributions from eleven of the world’s leading figures in time series *Shared balance between theory and application *Exercise series sets *Many real data examples *Consistent style and clear, common notation in all contributions *60 helpful graphs and tables Requiring no previous knowledge of the subject, A Course in Time Series Analysis is an important reference and a highly useful resource for researchers and practitioners in statistics, economics, business, engineering, and environmental analysis.