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Natural Language Processing and Computational Linguistics

Natural Language Processing and Computational Linguistics

By : Bhargav Srinivasa-Desikan
3.6 (7)
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Natural Language Processing and Computational Linguistics

Natural Language Processing and Computational Linguistics

3.6 (7)
By: Bhargav Srinivasa-Desikan

Overview of this book

Modern text analysis is now very accessible using Python and open source tools, so discover how you can now perform modern text analysis in this era of textual data. This book shows you how to use natural language processing, and computational linguistics algorithms, to make inferences and gain insights about data you have. These algorithms are based on statistical machine learning and artificial intelligence techniques. The tools to work with these algorithms are available to you right now - with Python, and tools like Gensim and spaCy. You'll start by learning about data cleaning, and then how to perform computational linguistics from first concepts. You're then ready to explore the more sophisticated areas of statistical NLP and deep learning using Python, with realistic language and text samples. You'll learn to tag, parse, and model text using the best tools. You'll gain hands-on knowledge of the best frameworks to use, and you'll know when to choose a tool like Gensim for topic models, and when to work with Keras for deep learning. This book balances theory and practical hands-on examples, so you can learn about and conduct your own natural language processing projects and computational linguistics. You'll discover the rich ecosystem of Python tools you have available to conduct NLP - and enter the interesting world of modern text analysis.
Table of Contents (17 chapters)
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Summary

Throughout this chapter, we saw how basic mathematical and information retrieval methods can be used to help identify how similar or dissimilar two text documents are. We also saw how we can extend these methods to any probabilistic distribution as well, such as topic models themselves this can be particularly handy especially when we are working with more topics than we can analyze with the human eye. Summarization is also another useful tool we are now exposed to since it works on the principle of which keywords provide the most information in a passage, we can use this knowledge of keywords to further aid us in building natural language processing pipelines.

We will now move on to more advanced topics involving neural networks and deep learning for textual data. These include methods such as Word2Vec and Doc2Vec, as well as shallow and deep neural...

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