Book Image

Advanced Natural Language Processing with TensorFlow 2

By : Ashish Bansal, Tony Mullen
Book Image

Advanced Natural Language Processing with TensorFlow 2

By: Ashish Bansal, Tony Mullen

Overview of this book

Recently, there have been tremendous advances in NLP, and we are now moving from research labs into practical applications. This book comes with a perfect blend of both the theoretical and practical aspects of trending and complex NLP techniques. The book is focused on innovative applications in the field of NLP, language generation, and dialogue systems. It helps you apply the concepts of pre-processing text using techniques such as tokenization, parts of speech tagging, and lemmatization using popular libraries such as Stanford NLP and SpaCy. You will build Named Entity Recognition (NER) from scratch using Conditional Random Fields and Viterbi Decoding on top of RNNs. The book covers key emerging areas such as generating text for use in sentence completion and text summarization, bridging images and text by generating captions for images, and managing dialogue aspects of chatbots. You will learn how to apply transfer learning and fine-tuning using TensorFlow 2. Further, it covers practical techniques that can simplify the labelling of textual data. The book also has a working code that is adaptable to your use cases for each tech piece. By the end of the book, you will have an advanced knowledge of the tools, techniques and deep learning architecture used to solve complex NLP problems.
Table of Contents (13 chapters)
11
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12
Index

Weak supervision

Deep learning models have delivered incredible results in the recent past. Deep learning architectures obviated the need for feature engineering, given enough training data. However, enormous amounts of data are needed for a deep learning model to learn the underlying structure of the data. On the one hand, deep learning reduced the manual effort required to handcraft features, but on the other, it significantly increased the need for labeled data for a specific task. In most domains, gathering a sizable set of high-quality, labeled data is an expensive and resource-intensive task.

This problem can be solved in several different ways. In previous chapters, we have seen the use of transfer learning to train a model on a large dataset before fine-tuning the model for a specific task. Figure 8.1 shows this and other approaches to acquiring labels:

Figure 8.1: Options for getting more labeled data

Hand labeling the data is a common approach...