Outlier Detection in Python by Brett Kennedy (.PDF)

File Size: 31.4 MB

Outlier Detection in Python (Final Release) by Brett Kennedy
Requirements: .PDF reader, 31.4 MB | True PDF
Overview: Learn how to identify the unusual, interesting, extreme, or inaccurate parts of your data. Data scientists have two main tasks: finding patterns in data and finding the exceptions. These outliers are often the most informative parts of data, revealing hidden insights, novel patterns, and potential problems. Outlier Detection in Python is a practical guide to spotting the parts of a dataset that deviate from the norm, even when they’re hidden or intertwined among the expected data points. Outlier Detection in Python illustrates the principles and practices of outlier detection with diverse real-world examples including social media, finance, network logs, and other important domains. You’ll explore a comprehensive set of statistical methods and machine learning approaches to identify and interpret the unexpected values in tabular, text, time series, and image data. Along the way, you’ll explore scikit-learn and PyOD, apply key OD algorithms, and add some high value techniques for real world OD scenarios to your toolkit. For Python programmers familiar with tools like Pandas and NumPy, and the basics of statistics.
Genre: Non-Fiction > Tech & Devices

Free Download links:

https://tbit.to/bkn4lljx03v2.html

https://katfile.com/aqq0m10j9ohk/Outlier_Detection_in_Python_Final.rar.html