Low Resource Social Media Text Mining

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This book focuses on methods that are unsupervised or require minimal supervisionvital in the low-resource domain. Over the past few years, rapid growth in Internet access across the globe has resulted in an explosion in user-generated text content in social media platforms. This effect is significantly pronounced in linguistically diverse areas of the world like South Asia, where over 400 million people regularly access social media platforms. YouTube, Facebook, and Twitter report a monthly active user base in excess of 200 million from this region. Natural language processing (NLP) research and publicly available resources such as models and corpora prioritize Web content authored primarily by a Western user base. Such content is authored in English by a user base fluent in the language and can be processed by a broad range of off-the-shelf NLP tools. In contrast, text from linguistically diverse regions features high levels of multilinguality, code-switching, and varied languageskill levels. Resources like corpora and models are also scarce. Due to these factors, newer methods are needed to process such text.

This book is designed for NLP practitioners well versed in recent advances in the field but unfamiliar with the landscape of low-resource multilingual NLP. The contents of this book introduce the various challenges associated with social media content, quantify these issues, and provide solutions and intuition. When possible, the methods discussed are evaluated on real-world social media data sets to emphasize their robustness to the noisy nature of the social media environment. On completion of the book, the reader will be well-versed with the complexity of text-mining in multilingual, low-resource environments; will be aware of a broad set of off-the-shelf tools that can be applied to various problems; and will be able to conduct sophisticated analyses of such text.


Introduces the various challenges associated with social media content and quantifies these issues Features methods that are unsupervised or require minimal supervision Is designed for NLP practitioners well versed in recent advances in the field

Autorentext
Shriphani Palakodety is a software engineer at Onai, USA. Ashiqur Khuda Bukhsh is a project scientist at Carnegie Mellon University. He received his PhD in Computer Science from CMU.

Guha Jayachandran is the CEO and founder of Onai, USA. He received Ph.D. in Computer Science from Stanford University.


Inhalt
Chapter 1: Introduction and outline.- Chapter 2: Natural Language Processing Preliminary.- Chapter 3: Low-Resource Multilingual Social Media Text and Challenges.- Chapter4: Robust Language Identification.- Chapter 5: Semantic Sampling.- Chapter6: Unsupervised Machine Translation.

Weitere Informationen

  • Allgemeine Informationen
    • GTIN 09789811656248
    • Genre Information Technology
    • Auflage 1st edition 2021
    • Lesemotiv Verstehen
    • Anzahl Seiten 72
    • Größe H235mm x B155mm x T5mm
    • Jahr 2021
    • EAN 9789811656248
    • Format Kartonierter Einband
    • ISBN 981165624X
    • Veröffentlichung 03.10.2021
    • Titel Low Resource Social Media Text Mining
    • Autor Shriphani Palakodety , Guha Jayachandran , Ashiqur R. Khudabukhsh
    • Untertitel SpringerBriefs in Computer Science
    • Gewicht 125g
    • Herausgeber Springer Nature Singapore
    • Sprache Englisch

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