Minding the Nose: More than meets the AI?

photo of Ann-Sophie Barwich
Event Date & Time

March 12, 2021 3:35pm Central Standard Time (UTC-6)

Minding the Nose: More than meets the AI?

Ann-Sophie Barwich, Department of History and Philosophy of Science and Medicine, Indiana University Bloomington

Abstract: Can machine learning crack the code in the nose? Over the past couple of years, several studies tried to solve the relation between chemical structure and sensory quality with Big Data (e.g., Koulakov et al. 2011; Keller et al. 2017). These studies advanced computational models of the olfactory stimulus, utilizing artificial intelligence to mine for clear correlations between chemistry and psychophysics. Computational perspectives promised to solve the mystery of olfaction with more data and better data processing tools. None of them succeeded, however, and it matters as to why this is the case. This talk argues that we should be deeply skeptical about the trend to black-box the sensory system's biology in our theories of perception. Instead, we need to ground both stimulus models and psychophysical data on real causal-mechanistic explanations of the olfactory system. The central question is: Would knowledge of biology lead to a different understanding of the stimulus in odor coding than the one utilized in current machine learning models? That is indeed the case. Recent studies about receptor behavior have revealed that the olfactory system operates by principles not captured in current stimulus-response models (e.g., Poivet et al. 2017, 2018). This may require a fundamental revision of computational approaches to olfaction, including its psychological effects.

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