Book Image

Machine Learning Solutions

Book Image

Machine Learning Solutions

Overview of this book

Machine learning (ML) helps you find hidden insights from your data without the need for explicit programming. This book is your key to solving any kind of ML problem you might come across in your job. You’ll encounter a set of simple to complex problems while building ML models, and you'll not only resolve these problems, but you’ll also learn how to build projects based on each problem, with a practical approach and easy-to-follow examples. The book includes a wide range of applications: from analytics and NLP, to computer vision domains. Some of the applications you will be working on include stock price prediction, a recommendation engine, building a chat-bot, a facial expression recognition system, and many more. The problem examples we cover include identifying the right algorithm for your dataset and use cases, creating and labeling datasets, getting enough clean data to carry out processing, identifying outliers, overftting datasets, hyperparameter tuning, and more. Here, you'll also learn to make more timely and accurate predictions. In addition, you'll deal with more advanced use cases, such as building a gaming bot, building an extractive summarization tool for medical documents, and you'll also tackle the problems faced while building an ML model. By the end of this book, you'll be able to fine-tune your models as per your needs to deliver maximum productivity.
Table of Contents (19 chapters)
Machine Learning Solutions
Foreword
Contributors
Preface
Index

Summary


In this chapter, we looked at how to build a sentiment analysis model that gives us state-of-the-art results. We used an IMDb dataset that had positive and negative movie reviews and understood the dataset. We applied the machine learning algorithm in order to get the baseline model. After that, in order to optimize the baseline model, we changed the algorithm and applied deep-learning-based algorithms. We used glove, RNN, and LSTM techniques to achieve the best results. We learned how to build sentiment analysis applications using Deep Learning. We used TensorBoard to monitor our model's training progress. We also touched upon modern machine learning algorithms as well as Deep Learning techniques for developing sentiment analysis, and the Deep Learning approach works best here.

We used a GPU to train the neural network, so if you discover that it needs more computation power from your end to train the model, then you can use the Google cloud or Amazon Web Services (AWS) GPU-based...