Abstract
We consider the feature selection problem for a braincomputer interface (BCI). A BCI collects data from sensors, and the data are discriminated using information in a high-dimensional space. We show how relevant features in a high dimensional space can be selected using a simple nearest neighbor method for estimating an information-theoretic measure, Jensen-Shannon divergence. Conventional nonparametric estimation using nearest neighbors already works very well for the feature selection problem and outperforms many other methods. In this paper, we show how this nearest neighbor method can be further exploited by properly trimming the non-informative direction for a distance calculation, and estimate the Jensen-Shannon divergence more accurately. Through experiments with synthetic data, we show how the proposed method outperforms a conventional nearest neighbor method as well as other feature selection methods with a large margin.
Original language | English |
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Title of host publication | 2014 International Winter Workshop on Brain-Computer Interface, BCI 2014 |
Publisher | IEEE Computer Society |
DOIs | |
Publication status | Published - 2014 Jan 1 |
Event | 2014 International Winter Workshop on Brain-Computer Interface, BCI 2014 - Gangwon, Korea, Republic of Duration: 2014 Feb 17 → 2014 Feb 19 |
Other
Other | 2014 International Winter Workshop on Brain-Computer Interface, BCI 2014 |
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Country/Territory | Korea, Republic of |
City | Gangwon |
Period | 14/2/17 → 14/2/19 |
Keywords
- component
- feature selection
- information theory
- Jensen-Shannon divergence
- nearest neighbor
ASJC Scopus subject areas
- Human-Computer Interaction
- Human Factors and Ergonomics