Statistical Significance Testing for Natural Language Processing
eBook - PDF

Statistical Significance Testing for Natural Language Processing

Rotem Dror, Lotem Peled-Cohen, Segev Shlomov, Roi Reichart

  1. English
  2. PDF
  3. Available on iOS & Android
eBook - PDF

Statistical Significance Testing for Natural Language Processing

Rotem Dror, Lotem Peled-Cohen, Segev Shlomov, Roi Reichart

Book details
Table of contents
Citations

About This Book

Data-driven experimental analysis has become the main evaluation tool of Natural Language Processing (NLP) algorithms. In fact, in the last decade, it has become rare to see an NLP paper, particularly one that proposes a new algorithm, that does not include extensive experimental analysis, and the number of involved tasks, datasets, domains, and languages is constantly growing. This emphasis on empirical results highlights the role of statistical significance testing in NLP research: If we, as a community, rely on empirical evaluation to validate our hypotheses and reveal the correct language processing mechanisms, we better be sure that our results are not coincidental.

The goal of this book is to discuss the main aspects of statistical significance testing in NLP. Our guiding assumption throughout the book is that the basic question NLP researchers and engineers deal with is whether or not one algorithm can be considered better than another one. This question drives the field forward as it allows the constant progress of developing better technology for language processing challenges. In practice, researchers and engineers would like to draw the right conclusion from a limited set of experiments, and this conclusion should hold for other experiments with datasets they do not have at their disposal or that they cannot perform due to limited time and resources. The book hence discusses the opportunities and challenges in using statistical significance testing in NLP, from the point of view of experimental comparison between two algorithms. We cover topics such as choosing an appropriate significance test for the major NLP tasks, dealing with the unique aspects of significance testing for non-convex deep neural networks, accounting for a large number of comparisons between two NLP algorithms in a statistically valid manner (multiple hypothesis testing), and, finally, the unique challenges yielded by the nature of the data and practices of the field.

Frequently asked questions

How do I cancel my subscription?
Simply head over to the account section in settings and click on “Cancel Subscription” - it’s as simple as that. After you cancel, your membership will stay active for the remainder of the time you’ve paid for. Learn more here.
Can/how do I download books?
At the moment all of our mobile-responsive ePub books are available to download via the app. Most of our PDFs are also available to download and we're working on making the final remaining ones downloadable now. Learn more here.
What is the difference between the pricing plans?
Both plans give you full access to the library and all of Perlego’s features. The only differences are the price and subscription period: With the annual plan you’ll save around 30% compared to 12 months on the monthly plan.
What is Perlego?
We are an online textbook subscription service, where you can get access to an entire online library for less than the price of a single book per month. With over 1 million books across 1000+ topics, we’ve got you covered! Learn more here.
Do you support text-to-speech?
Look out for the read-aloud symbol on your next book to see if you can listen to it. The read-aloud tool reads text aloud for you, highlighting the text as it is being read. You can pause it, speed it up and slow it down. Learn more here.
Is Statistical Significance Testing for Natural Language Processing an online PDF/ePUB?
Yes, you can access Statistical Significance Testing for Natural Language Processing by Rotem Dror, Lotem Peled-Cohen, Segev Shlomov, Roi Reichart in PDF and/or ePUB format, as well as other popular books in Computer Science & Artificial Intelligence (AI) & Semantics. We have over one million books available in our catalogue for you to explore.

Information

Table of contents

    Citation styles for Statistical Significance Testing for Natural Language Processing

    APA 6 Citation

    Dror, R., Peled-Cohen, L., Shlomov, S., & Reichart, R. (2022). Statistical Significance Testing for Natural Language Processing ([edition unavailable]). Springer. Retrieved from https://www.perlego.com/book/3706583 (Original work published 2022)

    Chicago Citation

    Dror, Rotem, Lotem Peled-Cohen, Segev Shlomov, and Roi Reichart. (2022) 2022. Statistical Significance Testing for Natural Language Processing. [Edition unavailable]. Springer. https://www.perlego.com/book/3706583.

    Harvard Citation

    Dror, R. et al. (2022) Statistical Significance Testing for Natural Language Processing. [edition unavailable]. Springer. Available at: https://www.perlego.com/book/3706583 (Accessed: 3 July 2024).

    MLA 7 Citation

    Dror, Rotem et al. Statistical Significance Testing for Natural Language Processing. [edition unavailable]. Springer, 2022. Web. 3 July 2024.