Selecting Examples for Partial Memory Learning
Machine Learning
Incremental Learning with Partial Instance Memory
ISMIS '02 Proceedings of the 13th International Symposium on Foundations of Intelligent Systems
Incremental learning with partial instance memory
Artificial Intelligence
Study on the Non-expandability of DNF and Its Application to Incremental Induction
ICIRA '08 Proceedings of the First International Conference on Intelligent Robotics and Applications: Part I
A survey on concept drift adaptation
ACM Computing Surveys (CSUR)
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This paper describes a partial-memory incremental learning method based on the AQ15c inductive learning system. The method maintains a representative set of past training examples that are used together with new examples to appropriately modify the currently held hypotheses. Incremental learning is evoked by feedback from the environment or from the user. Such a method is useful in applications involving intelligent agents acting in a changing environment, active vision, and dynamic knowledge-bases. For this study, the method is applied to the problem of computer intrusion detection in which symbolic profiles are learned for a computer system's users. In the experiments, the proposed method yielded significant gains in terms of learning time and memory requirements at the expense of slightly lower predictive accuracy and higher concept complexity, when compared to batch learning, in which all examples are given at once.