Bayesian Inference: Fundamentals and Applications

· One Billion Knowledgeable · DI pasakotojas: Mason (iš „Google“)
Garsinė knyga
2 val. 55 min.
Nesutrumpinta
Tinkama
DI pasakojama
Įvertinimai ir apžvalgos nepatvirtinti. Sužinokite daugiau
Norite 17 min. pavyzdžio? Klausykite bet kada, net neprisijungę. 
Pridėti

Apie šią garsinę knygą

What Is Bayesian Inference


Bayesian inference is a type of statistical inference that updates the probability of a hypothesis based on new data or information using Bayes' theorem. This way of statistical inference is known as the Bayesian method. In the field of statistics, and particularly in the field of mathematical statistics, the Bayesian inference method is an essential tool. When conducting a dynamic analysis of a data sequence, bayesian updating is an especially useful technique to utilize. Inference based on Bayes' theorem has been successfully implemented in a diverse range of fields, including those of science, engineering, philosophy, medicine, athletics, and the legal system. Bayesian inference is strongly related to subjective probability, which is why it is frequently referred to as "Bayesian probability" in the field of decision theory philosophy.


How You Will Benefit


(I) Insights, and validations about the following topics:


Chapter 1: Bayesian Inference


Chapter 2: Likelihood Function


Chapter 3: Conjugate Prior


Chapter 4: Posterior Probability


Chapter 5: Maximum a Posteriori Estimation


Chapter 6: Bayes Estimator


Chapter 7: Bayesian Linear Regression


Chapter 8: Dirichlet Distribution


Chapter 9: Variational Bayesian Methods


Chapter 10: Bayesian Hierarchical Modeling


(II) Answering the public top questions about bayesian inference.


(III) Real world examples for the usage of bayesian inference in many fields.


(IV) 17 appendices to explain, briefly, 266 emerging technologies in each industry to have 360-degree full understanding of bayesian inference' technologies.


Who This Book Is For


Professionals, undergraduate and graduate students, enthusiasts, hobbyists, and those who want to go beyond basic knowledge or information for any kind of bayesian inference.

Apie autorių

Fouad Sabry is the former Regional Head of Business Development for Applications at HP in Southern Europe, Middle East, and Africa (SEMEA). Fouad has received his B.Sc. of Computer Systems and Automatic Control in 1996, dual master’s degrees from University of Melbourne (UoM) in Australia, Master of Business Administration (MBA) in 2008, and Master of Management in Information Technology (MMIT) in 2010. 

Fouad has more than 20 years of experience in Information Technology and Telecommunications fields, working in local, regional, and international companies, such as Vodafone and IBM in Middle East and Africa (MEA) region. Fouad joined HP Middle East (ME), based in Dubai, United Arab Emirates (UAE) in 2013 and helped develop the software business in tens of markets across Southern Europe, Middle East, and Africa (SEMEA) regions. Currently, Fouad is an entrepreneur, author, futurist, focused on Emerging Technologies, and Industry Solutions, and founder of One Billion Knowledgeable (1BK) Initiative.

Įvertinti šią garsinę knygą

Pasidalykite savo nuomone.

Klausymo informacija

Išmanieji telefonai ir planšetiniai kompiuteriai
Įdiekite „Google Play“ knygų programą, skirtą „Android“ ir „iPad“ / „iPhone“. Ji automatiškai susinchronizuojama su paskyra ir jūs galite skaityti tiek prisijungę, tiek neprisijungę, kad ir kur būtumėte.
Nešiojamieji ir staliniai kompiuteriai
Galite skaityti knygas, kurias įsigyjate „Google Play“, naudodami kompiuterio žiniatinklio naršyklę.

Daugiau autoriaus Fouad Sabry knygų

Panašios garsinės knygos

Skaito: Mason