Magazine Article

Confidence-Based Feature Acquisition

TBMG-7624

03/01/2010

Abstract
Content

Confidence-based Feature Acquisition (CFA) is a novel, supervised learning method for acquiring missing feature values when there is missing data at both training (learning) and test (deployment) time. To train a machine learning classifier, data is encoded with a series of input features describing each item. In some applications, the training data may have missing values for some of the features, which can be acquired at a given cost. A relevant JPL example is that of the Mars rover exploration in which the features are obtained from a variety of different instruments, with different power consumption and integration time costs. The challenge is to decide which features will lead to increased classification performance and are therefore worth acquiring (paying the cost).

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Citation
"Confidence-Based Feature Acquisition," Mobility Engineering, March 1, 2010.
Additional Details
Publisher
Published
Mar 1, 2010
Product Code
TBMG-7624
Content Type
Magazine Article
Language
English