Learning maximum lag for grouped graphical granger models
Amit Dhurandhar
ICDMW 2010
There has been recent progress in predicting whether common verbal descriptors such as “fishy”, “floral” or “fruity” apply to the smell of odorous molecules. However, accurate predictions have been achieved only for a small number of descriptors. Here, we show that applying natural-language semantic representations on a small set of general olfactory perceptual descriptors allows for the accurate inference of perceptual ratings for mono-molecular odorants over a large and potentially arbitrary set of descriptors. This is noteworthy given that the prevailing view is that humans’ capacity to identify or characterize odors by name is poor. We successfully apply our semantics-based approach to predict perceptual ratings with an accuracy higher than 0.5 for up to 70 olfactory perceptual descriptors, a ten-fold increase in the number of descriptors from previous attempts. These results imply that the semantic distance between descriptors defines the equivalent of an odorwheel.
Amit Dhurandhar
ICDMW 2010
Amit Dhurandhar, Pin-Yu Chen, et al.
NeurIPS 2018
Karthikeyan Natesan Ramamurthy, Bhanukiran Vinzamuri, et al.
NeurIPS 2020
Jiajin Zhang, Hanqing Chao, et al.
AAAI 2023