2022
DOI: 10.3389/fnins.2022.981294
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More than meets the AI: The possibilities and limits of machine learning in olfaction

Abstract: Can machine learning crack the code in the nose? Over the past decade, studies tried to solve the relation between chemical structure and sensory quality with Big Data. 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 … Show more

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Cited by 3 publications
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“…The unpredictability of odor from chemical structure is more than a practical problem for scientists to solve with the advance of better data analysis tools (Barwich & Lloyd, 2022). Instead, it suggests a conceptual conundrum of relevance also to philosophers.…”
Section: Odors and Odor Sourcesmentioning
confidence: 99%
“…The unpredictability of odor from chemical structure is more than a practical problem for scientists to solve with the advance of better data analysis tools (Barwich & Lloyd, 2022). Instead, it suggests a conceptual conundrum of relevance also to philosophers.…”
Section: Odors and Odor Sourcesmentioning
confidence: 99%