arXiv Open Access 2023

Technical Understanding from IML Hands-on Experience: A Study through a Public Event for Science Museum Visitors

Wataru Kawabe Yuri Nakao Akihisa Shitara Yusuke Sugano
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Abstrak

While AI technology is becoming increasingly prevalent in our daily lives, the comprehension of machine learning (ML) among non-experts remains limited. Interactive machine learning (IML) has the potential to serve as a tool for end users, but many existing IML systems are designed for users with a certain level of expertise. Consequently, it remains unclear whether IML experiences can enhance the comprehension of ordinary users. In this study, we conducted a public event using an IML system to assess whether participants could gain technical comprehension through hands-on IML experiences. We implemented an interactive sound classification system featuring visualization of internal feature representation and invited visitors at a science museum to freely interact with it. By analyzing user behavior and questionnaire responses, we discuss the potential and limitations of IML systems as a tool for promoting technical comprehension among non-experts.

Topik & Kata Kunci

Penulis (4)

W

Wataru Kawabe

Y

Yuri Nakao

A

Akihisa Shitara

Y

Yusuke Sugano

Format Sitasi

Kawabe, W., Nakao, Y., Shitara, A., Sugano, Y. (2023). Technical Understanding from IML Hands-on Experience: A Study through a Public Event for Science Museum Visitors. https://arxiv.org/abs/2305.05846

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Tahun Terbit
2023
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en
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arXiv
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Open Access ✓