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The results of a machine learning from user behavior can be thought of as a program, and like all programs, it may need to be debugged. Providing ways for the user to debug it matters, because without the ability to fix errors users may find that the learned program's errors are too damaging for them to be able to trust such programs. We present a new approach to enable end users to debug a learned program. We then use an early prototype of our new approach to conduct a formative study to determine where and when debugging issues arise, both in general and also separately for males and females. The results suggest opportunities to make machine-learned programs more effective tools.
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Todd Kulesza
Microsoft (United States)
Weng‐Keen Wong
Oregon State University
Simone Stumpf
University of Glasgow
ENLIGHTEN (Jurnal Bimbingan dan Konseling Islam)
University of Washington
Oregon State University
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Kulesza et al. (Sun,) studied this question.
synapsesocial.com/papers/6a106413b6f5ee0401609f81 — DOI: https://doi.org/10.1145/1502650.1502678