ArXiv TLDR

Towards Interactive Multimodal Representation of ML Functions for Human Understanding of ML

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2605.00357

Bokang Wang, Yingxuan Liao, Leah Lee, Jack Wesson, Anlan Yang + 2 more

cs.GRcs.HCcs.MM

TLDR

This paper proposes interactive multimodal visualizations to enhance human understanding and curiosity in machine learning.

Key contributions

  • Explores best practices for supporting curiosity in new technologies.
  • Developed three distinct interactive visualization prototypes for ML functions.
  • Utilized carefully selected, highly-transparent datasets to examine engagement.

Why it matters

This paper tackles the widespread misunderstanding of machine learning by proposing interactive visualizations. It aims to make complex ML concepts accessible and engaging for diverse audiences, fostering curiosity. This is crucial for shifting public attitudes towards informed confidence in these increasingly vital technologies.

Original Abstract

Attitudes about artificial intelligence and machine learning are recent victims of endemic misunderstanding; given our increasing reliance on these technologies, the need for widespread understanding and confidence in their use is paramount. To this end, our work seeks to increase understanding in these typically inaccessible topics through interactive visualizations, thereby garnering curiosity in the hopes of kickstarting a cycle of understanding leading to further pursuit of knowledge. We hope this will cyclically shift global attitudes away from the intimidation of the unknown currently plaguing ML. This work explores best practices for supporting curiosity in new technologies, to inspire attitudinal paradigm-shifts. Over three, distinct visualizations of machine learning data, we created prototypes with carefully selected, highly-transparent datasets, to examine the success factors of engagement required for more informed attitudes on ML less dictated by the fear of the unknown. By employing interactive visualizations, we can captivate the interest of teenagers and individuals from diverse fields, encouraging them to explore the fascinating world of machine learning.

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