Categorical Dimensions of Human Odor Descriptor Space Revealed by Non-Negative Matrix Factorization
Citations Over TimeTop 10% of 2013 papers
Abstract
In contrast to most other sensory modalities, the basic perceptual dimensions of olfaction remain unclear. Here, we use non-negative matrix factorization (NMF)--a dimensionality reduction technique--to uncover structure in a panel of odor profiles, with each odor defined as a point in multi-dimensional descriptor space. The properties of NMF are favorable for the analysis of such lexical and perceptual data, and lead to a high-dimensional account of odor space. We further provide evidence that odor dimensions apply categorically. That is, odor space is not occupied homogenously, but rather in a discrete and intrinsically clustered manner. We discuss the potential implications of these results for the neural coding of odors, as well as for developing classifiers on larger datasets that may be useful for predicting perceptual qualities from chemical structures.
Related Papers
- → Non-Negative Matrix Factorization with Constraints(2010)60 cited
- → CUR+NMF for learning spectral features from large data matrix(2008)10 cited
- → Sparsity promoted non-negative matrix factorization for source separation and detection(2014)3 cited
- → Detection of Brain Activity in Functional Magnetic Resonance Imaging Data using Matrix Factorization(2013)1 cited
- → PHASL-NMF: Hierarchical ALS Based Power Non-Negative Matrix Factorization(2023)