Data Science: Measuring Uncertainties

De Bragança Pereira, Carlos Alberto

Data Science: Measuring Uncertainties - Basel, Switzerland MDPI - Multidisciplinary Digital Publishing Institute 2021 - 1 electronic resource (256 p.)

Open Access

With the increase in data processing and storage capacity, a large amount of data is available. Data without analysis does not have much value. Thus, the demand for data analysis is increasing daily, and the consequence is the appearance of a large number of jobs and published articles. Data science has emerged as a multidisciplinary field to support data-driven activities, integrating and developing ideas, methods, and processes to extract information from data. This includes methods built from different knowledge areas: Statistics, Computer Science, Mathematics, Physics, Information Science, and Engineering. This mixture of areas has given rise to what we call Data Science. New solutions to the new problems are reproducing rapidly to generate large volumes of data. Current and future challenges require greater care in creating new solutions that satisfy the rationality for each type of problem. Labels such as Big Data, Data Science, Machine Learning, Statistical Learning, and Artificial Intelligence are demanding more sophistication in the foundations and how they are being applied. This point highlights the importance of building the foundations of Data Science. This book is dedicated to solutions and discussions of measuring uncertainties in data analysis problems.


Creative Commons


English

books978-3-0365-0793-4 9783036507927 9783036507934

10.3390/books978-3-0365-0793-4 doi


Research & information: general
Mathematics & science

model-based clustering mixture model EM algorithm integrated approach density estimation distribution free non-parametric statistical test decoy distributions size invariance scaled quantile residual maximum entropy method scoring function outlier detection overfitting detection time series of counts Bayesian hierarchical modeling Bayesian nonparametrics Pitman-Yor process prior sensitivity clustering Bayesian forecasting singular spectrum analysis robust singular spectrum analysis time series forecasting mutual investment funds relative entropy cross-entropy uncertain reasoning inductive logic confirmation measure semantic information medical test raven paradox Markov random fields probabilistic graphical models multilayer networks objective Bayesian inference intrinsic prior variational inference binary probit regression mean-field approximation multi-attribute emergency decision-making intuitionistic fuzzy cross-entropy grey correlation analysis earthquake shelters attribute weights time series Bayesian inference hypothesis testing unit root cointegration Rényi entropy discrete Kalman filter continuous Kalman filter algebraic Riccati equation nonlinear differential Riccati equation cloud model fuzzy time series stock trend Heikin-Ashi candlestick water resources channel mathematical entropy model bank profile shape gene expression programming (GEP) entropy genetic programming artificial intelligence data science big data n/a

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