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Mastering Predictive Analytics with scikit-learn and TensorFlow

Mastering Predictive Analytics with scikit-learn and TensorFlow

By : Alvaro Fuentes
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Mastering Predictive Analytics with scikit-learn and TensorFlow

Mastering Predictive Analytics with scikit-learn and TensorFlow

By: Alvaro Fuentes

Overview of this book

Python is a programming language that provides a wide range of features that can be used in the field of data science. Mastering Predictive Analytics with scikit-learn and TensorFlow covers various implementations of ensemble methods, how they are used with real-world datasets, and how they improve prediction accuracy in classification and regression problems. This book starts with ensemble methods and their features. You will see that scikit-learn provides tools for choosing hyperparameters for models. As you make your way through the book, you will cover the nitty-gritty of predictive analytics and explore its features and characteristics. You will also be introduced to artificial neural networks and TensorFlow, and how it is used to create neural networks. In the final chapter, you will explore factors such as computational power, along with improvement methods and software enhancements for efficient predictive analytics. By the end of this book, you will be well-versed in using deep neural networks to solve common problems in big data analysis.
Table of Contents (7 chapters)
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Holdout cross-validation

In holdout cross-validation, we hold out a percentage of observations and so we get two datasets. One is called the training dataset and the other is called the testing dataset. Here, we use the testing dataset to calculate our evaluation metrics, and the rest of the data is used to train the model. This is the process of holdout cross-validation.

The main advantage of holdout cross-validation is that it is very easy to implement and it is a very intuitive method of cross-validation.

The problem with this kind of cross-validation is that it provides a single estimate for the evaluation metric of the model. This is problematic because some models rely on randomness. So in principle, it is possible that the evaluation metrics calculated on the test sometimes they will vary a lot because of random chance. So the main problem with holdout cross-validation...

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