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Hands-On Data Science with Anaconda

Hands-On Data Science with Anaconda

By : Yuxing Yan, Yan
2.6 (5)
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Hands-On Data Science with Anaconda

Hands-On Data Science with Anaconda

2.6 (5)
By: Yuxing Yan, Yan

Overview of this book

Anaconda is an open source platform that brings together the best tools for data science professionals with more than 100 popular packages supporting Python, Scala, and R languages. Hands-On Data Science with Anaconda gets you started with Anaconda and demonstrates how you can use it to perform data science operations in the real world. The book begins with setting up the environment for Anaconda platform in order to make it accessible for tools and frameworks such as Jupyter, pandas, matplotlib, Python, R, Julia, and more. You’ll walk through package manager Conda, through which you can automatically manage all packages including cross-language dependencies, and work across Linux, macOS, and Windows. You’ll explore all the essentials of data science and linear algebra to perform data science tasks using packages such as SciPy, contrastive, scikit-learn, Rattle, and Rmixmod. Once you’re accustomed to all this, you’ll start with operations in data science such as cleaning, sorting, and data classification. You’ll move on to learning how to perform tasks such as clustering, regression, prediction, and building machine learning models and optimizing them. In addition to this, you’ll learn how to visualize data using the packages available for Julia, Python, and R.
Table of Contents (15 chapters)
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Statistical Modeling in Anaconda

In this chapter, we will first present the simplest statistical model: the one-factor linear model. To make the learning process more interesting, we will discuss an application of such a model: the famous financial model called the Capital Asset Pricing Model (CAPM). In terms of processing data, we will show you how to detect and remove missing values, and how to replace missing values with means or other values in R, Python, or Julia. Also, outliers would distort our statistical results. Thus, we need to know how to detect and deal with them. After that, we talk about multi-factor linear models. Again, to make our discussion more meaningful, we will discuss the famous Fama-French 3-factor and 5-factor linear models, and the Fama-French-Carhart 4-factor linear model. Then, we will discuss how to rank those different models, that is, how to measure...

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