دانلود کتاب Data Science for Complex Systems
by Anindya S. Chakrabarti, K. Shuvo Bakar, Anirban Chakraborti
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عنوان فارسی: علم داده برای سیستم های پیچیده |
دانلود کتاب
جزییات کتاب
In order to develop the empirical apparatus, we first provide an introduction to probability and statistics, covering both classical and Bayesian statistics (Chapter 2). We go through a discussion of the classical approach to probability and develop the concept of statistical estimation and hypothesis testing, leading to a discussion of Bayesian models. Then we discuss time series models to analyze evolving systems (Chapter 3). In particular, we develop ideas to model stationary and non-stationary systems. Additionally, we review some ideas from financial econometrics that have proved to be very useful for modeling time-varying conditional second moment: that is, volatility. In the next part of the book, we review Machine Learning techniques emphasizing numerical, spectral, and statistical approaches to Machine Learning (Chapter 4). Then we discuss network theory as a useful way to think about interconnected systems (Chapter 5). These four components constitute the building blocks of the Data Science approaches to complex systems.