Jonathan Ashley, Brian Marcus, et al.
Ergodic Theory and Dynamical Systems
We consider the online learning problem for binary relations defined over two finite sets, each clustered into a relatively small number k, l of types (such a relation is termed a (k, l)-binary relation), extending the models of S. Goldman, R. Rivest, and R. Schapire (1993, SIAM J. Comput. 22, 1006-1034). We investigate the learning complexity of (k, l)-binary relations with respect to both the self-directed and adversary-directed learning models. We also generalize this problem to the learning problem for (k1, . . ., kd)-d-ary relations. In the self-directed model, we exhibit an efficient learning algorithm which makes at most kl + (n - k)log k + (m -l)log l mistakes, where n and m are the number of rows and columns, roughly twice the lower bound we show for this problem, 1/4⌊log k⌋ ⌊log l⌋ + 1/2(n - k) ⌊log k⌋ + 1/2(m -l) ⌊log l⌋. In the adversary-directed model, we exhibit an efficient algorithm for the (2,2)-binary relations, which makes at most n + m + 2 mistakes, only two more than the lower bound we show for this problem, n + m. As for (k1, . . ., kd)-d-ary relations, we obtain lower bounds and upper bounds on the number of mistakes in the self-directed model, teacher-directed model, and adversary-directed model. Finally we show that, although the sample consistency problem for (2,2)-binary relations is solvable in polynomial time, the same problem for (2,2,2)-ternary relations is already NP-complete. © 2002 Elsevier Science (USA).
Jonathan Ashley, Brian Marcus, et al.
Ergodic Theory and Dynamical Systems
A. Gupta, R. Gross, et al.
SPIE Advances in Semiconductors and Superconductors 1990
Sankar Basu
Journal of the Franklin Institute
Harpreet S. Sawhney
IS&T/SPIE Electronic Imaging 1994