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E-book
Author Suchok, Sergiy, author

Title Mathematica data analysis : learn and explore the fundamentals of data analysis with the power of Mathematica / Sergiy Suchok
Published Birmingham : Packt Publishing, 2015

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Description 1 online resource : illustrations
Series Community experience distilled
Community experience distilled.
Contents Cover ; Copyright; Credits; About the Author; About the Reviewer; www.PacktPub.com; Table of Contents; Preface; Chapter 1: First Steps in Data Analysis; System installation; Setting up the system; The Mathematica front end and kernel; Main features for writing expressions; Summary; Chapter 2: Broad Capabilities for Data Import; Permissible data format for import; Importing data in Mathematica; Additional cleaning functions and data conversion; Checkpoint 2.1 -- time for some practice!!!; Importing strings; Importing data from Mathematica's notebooks; Controlling data completeness; Summary
880-01 Process models of time seriesThe moving average model; The autoregressive process -- AR; The autoregression model -- moving average (ARMA); The seasonal integrated autoregressive moving-average process -- SARIMA; Choosing the best time series process model; Tests on stationarity, invertibility, autocorrelation, and seasonality; Checking for stationarity; Invertibility check; Autocorrelation check; Summary; Chapter 6: Statistical Hypothesis Testing in Two Clicks; Hypotheses about the mean; Hypotheses about the variance; Checking the degree of sample dependence
880-01/(N Chapter 3: Creating an Interface for an External ProgramWolfram Symbolic Transfer Protocol; Interface implementation with a program in С/С++; Calling Mathematica from C; Interacting with .NET programs; Interacting with Java; Interacting with R; Summary; Chapter 4: Analyzing Data with the Help of Mathematica; Data clustering; Data classification; Image recognition; Recognizing faces; Recognizing text information; Recognizing barcodes; Summary; Chapter 5: Discovering the Advanced Capabilities of Time Series; Time series in Mathematica; Mathematica's information depository
Hypotheses on true sample distributionSummary; Chapter 7: Predicting the Dataset Behavior; Classical predicting; Image processing; Probability automaton modelling; Summary; Chapter 8: Rock-Paper-Scissors -- Intelligent Processing of Datasets; Interface development in Mathematica; Markov chains; Creating a portable demonstration; Summary; Index
Summary Annotation Learn and explore the fundamentals of data analysis with power of MathematicaAbout This Book Use the power of Mathematica to analyze data in your applications Discover the capabilities of data classification and pattern recognition offered by Mathematica Use hundreds of algorithms for time series analysis to predict the futureWho This Book Is ForThe book is for those who want to learn to use the power of Mathematica to analyze and process data. Perhaps you are already familiar with data analysis but have never used Mathematica, or you know Mathematica but you are new to data analysis. With the help of this book, you will be able to quickly catch up on the key points for a successful start. What You Will Learn Import data from different sources to Mathematica Link external libraries with programs written in Mathematica Classify data and partition them into clusters Recognize faces, objects, text, and barcodes Use Mathematica functions for time series analysis Use algorithms for statistical data processing Predict the result based on the observationsIn DetailThere are many algorithms for data analysis and it's not always possible to quickly choose the best one for each case. Implementation of the algorithms takes a lot of time. With the help of Mathematica, you can quickly get a result from the use of a particular method, because this system contains almost all the known algorithms for data analysis. If you are not a programmer but you need to analyze data, this book will show you the capabilities of Mathematica when just few strings of intelligible code help to solve huge tasks from statistical issues to pattern recognition. If you're a programmer, with the help of this book, you will learn how to use the library of algorithms implemented in Mathematica in your programs, as well as how to write algorithm testing procedure. With each chapter, you'll be more immersed in the special world of Mathematica. Along with intuitive queries for data processing, we will highlight the nuances and features of this system, allowing you to build effective analysis systems. With the help of this book, you will learn how to optimize the computations by combining your libraries with the Mathematica kernel. Style and approachThis book takes a step-by-step approach, accompanied by examples, so you get a better understanding of the logic of writing algorithms for data analysis in Mathematica. We provide a detailed explanation of all the nuances of the Mathematica language, no matter what your level of experience is
Notes Includes index
Online resource; title from PDF title page (EBSCO, viewed May 3, 2016)
SUBJECT Mathematica (Computer file) http://id.loc.gov/authorities/names/n86111398
Mathematica (Computer file) fast
Subject Mathematica (Computer program language)
Electronic data processing -- Statistical methods
MATHEMATICS -- Essays.
MATHEMATICS -- Pre-Calculus.
MATHEMATICS -- Reference.
Mathematica (Computer program language)
Form Electronic book
ISBN 9781785884450
178588445X
178588493X
9781785884931