TY - GEN
ID - cogprints2124
UR - http://cogprints.org/2124/
A1 - Wang, Jun
A1 - Zucker, Jean-Daniel
Y1 - 2000///
N2 - As opposed to traditional supervised learning, multiple-instance learning
concerns the problem of classifying a bag of instances, given bags that are
labeled by a teacher as being overall positive or negative. Current research
mainly concentrates on adapting traditional concept learning to solve this
problem. In this paper we investigate the use of lazy learning and Hausdorff
distance to approach the multiple-instance problem. We present two variants of
the K-nearest neighbor algorithm, called Bayesian-KNN and Citation-KNN, solving
the multiple-instance problem. Experiments on the Drug discovery benchmark data
show that both algorithms are competitive with the best ones conceived in the
concept learning framework. Further work includes exploring of a combination of
lazy and eager multiple-instance problem classifiers.
PB - Morgan Kaufmann
KW - multiple-instance problem
KW -
multiple-instance learning
KW -
lazing learning
KW -
nearest neighbor
TI - Solving Multiple-Instance Problem: A Lazy Learning Approach
SP - 1119
AV - public
EP - 1125
ER -