Explainable AI for NLP: Decoding Black Box

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© 2022 by IJCTT Journal
Volume-70 Issue-7
Year of Publication : 2022
Authors : Yogendra Sisodia
DOI :  10.14445/22312803/IJCTT-V70I7P103

How to Cite?

Yogendra Sisodia, "Explainable AI for NLP: Decoding Black Box," International Journal of Computer Trends and Technology, vol. 70, no. 7, pp. 11-15, 2022. Crossref, https://doi.org/10.14445/22312803/IJCTT-V70I7P103

Abstract
Recent advancements in machine learning have sparked greater interest in previously understudied topics. As machine learning improves, experts are being pushed to understand and trace how algorithms get their results, how models think, and why the end outcome. It is also difficult to communicate the outcome to end customers and internal stakeholders such as sales and customer service without explaining the outcomes in simple language, especially using visualization. In specialized domains like law and medicine, it becomes vital to understand the machine learning output.

Keywords
Artificial Intelligence, Natural Language Processing, Explainable AI, Deep Neural Network, Transformers.

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