Title :
An analysis of criteria for the evaluation of learning performance
Author :
Dai, Honghua ; Liu, James ; Ciesielski, Victor
Author_Institution :
Dept. of Comput. Sci., Monash Univ., Clayton, Vic., Australia
Abstract :
The criteria for the evaluation of learning performance is essential for identifying a better learning algorithm. The basic criteria including accuracy and time complexity are commonly used in the evaluation of learning performance. The paper presents several new criteria including absolute LPA (low prediction accuracy) error, relative LPA error and predictive ability in addition to the various important criteria which are specific to the evaluation of learning performance in diverse learning task domains. The experimental results show that LPA error rates and predictive ability are useful in evaluating learning performance particularly in learning from large noisy databases
Keywords :
computational complexity; errors; knowledge acquisition; learning (artificial intelligence); very large databases; absolute low prediction error; accuracy; large noisy databases; learning algorithm; learning performance evaluation criteria; learning task domains; predictive ability; relative low prediction accuracy error; time complexity; Accuracy; Computational complexity; Computer science; Error analysis; Length measurement; Machine learning; Machine learning algorithms; Performance analysis; Performance evaluation; Time measurement;
Conference_Titel :
Intelligent Information Systems, 1996., Australian and New Zealand Conference on
Conference_Location :
Adelaide, SA
Print_ISBN :
0-7803-3667-4
DOI :
10.1109/ANZIIS.1996.573895