Title :
Simulated annealing based classification
Author :
Finnerty, Scott ; Sen, Sandip
Author_Institution :
Dept. of Math. & Comput. Sci., Tulsa Univ., OK, USA
Abstract :
Attribute based classification has been one of the most active areas of machine learning research over the past decade. We view the problem of hypotheses formation for classification as a search problem. Whereas previous research acquiring classification knowledge have used a deterministic bias for forming generalizations, we use a more random bias for taking inductive leaps. We re-formulate the supervised classification problem as a function optimization problem, the goal of which is to search for a hypotheses that minimizes the number of incorrect classifications of training instances. We use a simulated annealing based classifier (SAC) to optimize the hypotheses used for classification. The particular variation of simulated annealing algorithm that we have used is known as Very Fast Simulated Re-annealing (VFSR). We use a batch-incremental mode of learning to compare SAC with a genetic algorithm based classifier, GABIL, and a traditional incremental machine learning algorithm, ID5R. By using a set of artificial target concepts, we show that SAC performs better on more complex target concepts
Keywords :
classification; generalisation (artificial intelligence); genetic algorithms; knowledge acquisition; learning (artificial intelligence); search problems; simulated annealing; GABIL; ID5R; SAC; Very Fast Simulated Reannealing; attribute based classification; batch-incremental mode; classification knowledge; deterministic bias; function optimization problem; generalizations; genetic algorithm based classifier; hypotheses formation; incorrect classifications; incremental machine learning algorithm; inductive leaps; machine learning research; random bias; search problem; simulated annealing algorithm; simulated annealing based classification; supervised classification problem; training instances; Business; Computational modeling; Genetic algorithms; Industrial training; Machine learning; Machine learning algorithms; Simulated annealing; Stochastic processes;
Conference_Titel :
Tools with Artificial Intelligence, 1994. Proceedings., Sixth International Conference on
Conference_Location :
New Orleans, LA
Print_ISBN :
0-8186-6785-0
DOI :
10.1109/TAI.1994.346392