Sciweavers

CSB
2004
IEEE

Weighting Features to Recognize 3D Patterns of Electron Density in X-Ray Protein Crystallography

14 years 3 months ago
Weighting Features to Recognize 3D Patterns of Electron Density in X-Ray Protein Crystallography
Feature selection and weighting are central problems in pattern recognition and instance-based learning. In this work, we discuss the challenges of constructing and weighting features to recognize 3D patterns of electron density to determine protein structures. We present SLIDER, a feature-weighting algorithm that adjusts weights iteratively such that patterns that match query instances are better ranked than mismatching ones. Moreover, SLIDER makes judicious choices of weight values to be considered in each iteration, by examining specific weights at which matching and mismatching patterns switch as nearest neighbors to query instances. This approach reduces the space of weight vectors to be searched. We make the following two main observations: (1) SLIDER efficiently generates weights that contribute significantly in the retrieval of matching electron density patterns; (2) the optimum weight vector is sensitive to the distance metric i.e. feature relevance can be, to a certain exten...
Kreshna Gopal, Tod D. Romo, James C. Sacchettini,
Added 20 Aug 2010
Updated 20 Aug 2010
Type Conference
Year 2004
Where CSB
Authors Kreshna Gopal, Tod D. Romo, James C. Sacchettini, Thomas R. Ioerger
Comments (0)