Causality, Correlation And Artificial Intelligence For Rational Decision Making Causality, Correlation And Artificial Intelligence For Rational Decision Making

Causality, Correlation And Artificial Intelligence For Rational Decision Making

    • ¥5,400
    • ¥5,400

Publisher Description

Causality has been a subject of study for a long time. Often causality is confused with correlation. Human intuition has evolved such that it has learned to identify causality through correlation. In this book, four main themes are considered and these are causality, correlation, artificial intelligence and decision making. A correlation machine is defined and built using multi-layer perceptron network, principal component analysis, Gaussian Mixture models, genetic algorithms, expectation maximization technique, simulated annealing and particle swarm optimization. Furthermore, a causal machine is defined and built using multi-layer perceptron, radial basis function, Bayesian statistics and Hybrid Monte Carlo methods. Both these machines are used to build a Granger non-linear causality model. In addition, the Neyman–Rubin, Pearl and Granger causal models are studied and are unified. The automatic relevance determination is also applied to extend Granger causality framework to the non-linear domain. The concept of rational decision making is studied, and the theory of flexibly-bounded rationality is used to extend the theory of bounded rationality within the principle of the indivisibility of rationality. The theory of the marginalization of irrationality for decision making is also introduced to deal with satisficing within irrational conditions. The methods proposed are applied in biomedical engineering, condition monitoring and for modelling interstate conflict.

Contents:Introduction to Artificial Intelligence based Decision MakingWhat is a Correlation Machine?What is a Causal Machine?Correlation Machines Using Optimization MethodsNeural Networks for Modeling Granger CausalityRubin, Pearl and Granger Causality Models: A Unified ViewCausal, Correlation and Automatic Relevance Determination Machines for Granger CausalityFlexibly-bounded RationalityMarginalization of Irrationality in Decision MakingConclusions and Further Work
Readership: Graduate students, researchers and professionals in the field of artificial intelligence.
Key Features:It proposes fresh definition of causality and proposes two new theories i.e. flexibly bounded rationality and marginalization of irrationality theory for decision makingIt also applies these techniques to a diverse areas in engineering, political science and biomedical engineering

GENRE
Computers & Internet
RELEASED
2015
January 2
LANGUAGE
EN
English
LENGTH
208
Pages
PUBLISHER
World Scientific Publishing Company
SELLER
Ingram DV LLC
SIZE
5.6
MB
Statistical Data Science Statistical Data Science
2018
Elements of Causal Inference Elements of Causal Inference
2017
Statistics and Causality Statistics and Causality
2016
Advanced Methods of Biomedical Signal Processing Advanced Methods of Biomedical Signal Processing
2011
Bayesian Analysis of Stochastic Process Models Bayesian Analysis of Stochastic Process Models
2012
Mathematical Methods in Interdisciplinary Sciences Mathematical Methods in Interdisciplinary Sciences
2020
ON RATIONALITY, ARTIFICIAL INTELLIGENCE AND ECONOMICS ON RATIONALITY, ARTIFICIAL INTELLIGENCE AND ECONOMICS
2022
ARTIFICIAL INTELLIGENCE & EMERGING TECH IN INTL RELATIONS ARTIFICIAL INTELLIGENCE & EMERGING TECH IN INTL RELATIONS
2021
Smart Computing Applications in Crowdfunding Smart Computing Applications in Crowdfunding
2018
Handbook of Machine Learning Handbook of Machine Learning
2019
Handbook of Machine Learning Handbook of Machine Learning
2018
Probabilistic Finite Element Model Updating Using Bayesian Statistics Probabilistic Finite Element Model Updating Using Bayesian Statistics
2016