€ 29.95
Normalmente disponibile in 7/8 giorni lavorativi
Spedizione a 1€Spedizione con Corriere a 1€Scopri come
Punti di ritiroScegli il punto di consegnae ritira quando vuoiScopri come
Veracity of Big Data

Veracity of Big Data

Machine Learning and Other Approaches to Verifying Truthfulness

di Pendyala Vishnu

Normalmente disponibile in 7/8 giorni lavorativi
  • Editore: Springer, Berlin; Apress
  • Edizione: 1st ed. 2018. xiv, 180 S. 41 SW-Abb. 235 mm
  • ISBN: 1484236327
  • Ean: 9781484236321

Questo articolo è acquistabile
con il Bonus Cultura "18app"

16Examine the problem of maintaining the quality of big data and discover novel solutions. You will learn the four V's of big data, including veracity, and study the problem from various angles. The solutions discussed are drawn from diverse areas of engineering and math, including machine learning, statistics, formal methods, and the Blockchain technology.  Veracity of Big Data serves as an introduction to machine learning algorithms and diverse techniques such as the Kalman filter, SPRT, CUSUM, fuzzy logic, and Blockchain, showing how they can be used to solve problems in the veracity domain. Using examples, the math behind the techniques is explained in easy-to-understand language.  Determining the truth of big data in real-world applications involves using various tools to analyze the available information. This book delves into some of the techniques that can be used. Microblogging websites such as Twitter have played a major role in public life, including during presidential16 elections. The book uses examples of microblogs posted on a particular topic to demonstrate how veracity can be examined and established. Some of the techniques are described in the context of detecting veiled attacks on microblogging websites to influence public opinion.  What You'll Learn Understand the problem concerning data veracity and its ramificationsDevelop the mathematical foundation needed to help minimize the impact of the problem using easy-to-understand language and examplesUse diverse tools and techniques such as machine learning algorithms, Blockchain, and the Kalman filter to address veracity issues Who This Book Is For  Software developers and practitioners, practicing engineers, curious managers, graduate students, and research scholars04Chapter 1: Introduction Chapter Goal: Introduce the readers to the manifestations of falsehood in Big Data and its ramifications. No of pages 30 Sub -Topics 1. The Big Data Phenomenon 2. The Four V's 3. Veracity - the fourth 'V' 4. Tracing truth in human endeavors 5. Veracity in the context of the Web Chapter 2: Mathematical Abstraction Chapter Goal: Present the math behind the method and develop a mathematical framework within which the problem and its solution can be discussed. No of pages: 30 Sub - Topics 1. A fruit vendor example 2. Building the abstraction 3. Twitter Example - Sentiment Analysis 4. Solution Space Chapter 3: Tools and Techniques Chapter Goal: Introduce the Machine Learning and mathematical tools to solve the problem. No of pages : 30 Sub - Topics: 1. Machine Learning Algorithms - a quick primer 2. Kalman Filter 3. Statistical Techniques  Chapter 4: Veracity of Web Information Chapter Goal: Use the concepts, tools, and techniques described in chapter 3 to exam04ine the truthfulness of microblogs No of pages: 50 Sub - Topics: 1. Machine Learning the truthfulness of twitter data 2. Statistical approaches to detect veiled attacks 3. Applying Kalman Filter to analyze sentiment fluctuations  Chapter 5: Future Directions Chapter Goal: Explore ideas that the readers can consider for further delving into the topic, given that this is a niche area. 1. Natural Language Processing methods 2. Knowledge Representation Techniques 3. Ensemble Methods 

Ultimi prodotti visti