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You're reading from  Natural Language Processing with Python Quick Start Guide

Product typeBook
Published inNov 2018
Reading LevelIntermediate
PublisherPackt
ISBN-139781789130386
Edition1st Edition
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Nirant Kasliwal
Nirant Kasliwal
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Nirant Kasliwal

Nirant Kasliwal maintains an awesome list of NLP natural language processing resources. GitHub's machine learning collection features this as the go-to guide. Nobel Laureate Dr. Paul Romer found his programming notes on Jupyter Notebooks helpful. Nirant won the first ever NLP Google Kaggle Kernel Award. At Soroco, image segmentation and intent categorization are the challenges he works with. His state-of-the-art language modeling results are available as Hindi2vec.
Read more about Nirant Kasliwal

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Summary

In this chapter, we looked at several new ideas regarding machine learning. The intention here was to demonstrate some of the most common classifiers. We looked at how to use them with one thematic idea: translating text to a numerical representation and then feeding that to a classifier.

This chapter covered a fraction of the available possibilities. Remember, you can try anything from better feature extraction using Tfidf to tuning classifiers with GridSearch and RandomizedSearch, as well as ensembling several classifiers.

This chapter was mostly focused on pre-deep learning methods for both feature extraction and classification.

Note that deep learning methods also allow us to use a single model where the feature extraction and classification are both learned from the underlying data distribution. While a lot has been written about deep learning in computer vision...

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Natural Language Processing with Python Quick Start Guide
Published in: Nov 2018Publisher: PacktISBN-13: 9781789130386

Author (1)

author image
Nirant Kasliwal

Nirant Kasliwal maintains an awesome list of NLP natural language processing resources. GitHub's machine learning collection features this as the go-to guide. Nobel Laureate Dr. Paul Romer found his programming notes on Jupyter Notebooks helpful. Nirant won the first ever NLP Google Kaggle Kernel Award. At Soroco, image segmentation and intent categorization are the challenges he works with. His state-of-the-art language modeling results are available as Hindi2vec.
Read more about Nirant Kasliwal