Title of article :
Anomalous Behavior Detection Framework Using HTM-Based Semantic Folding Technique
Author/Authors :
Masood Khan, Hamid Gomal University - D.I.Khan, Pakistan , Masud Khan, Fazal Gomal University - D.I.Khan, Pakistan , Khan, Aurangzeb Department of Computer Science - University of Science and Technology - Bannu, Pakistan , Zubair Asghar, Muhammad Gomal University - D.I.Khan, Pakistan , Alghazzawi, Daniyal M Faculty of Computing and Information Technology - King Abdulaziz University - Jeddah, Saudi Arabia
Abstract :
Upon the working principles of the human neocortex, the Hierarchical Temporal Memory model has been developed which is a
proposed theoretical framework for sequence learning. Both categorical and numerical types of data are handled by HTM.
Semantic Folding Theory (SFT) is based on HTM to represent a data stream for processing in the form of sparse distributed
representation (SDR). For natural language perception and production, SFT delivers a solid structural background for semantic
evidence description to the fundamentals of the semantic foundation during the phase of language learning. Anomalies are the
patterns from data streams that do not follow the expected behavior. Any stream of data patterns could have a number of
anomaly types. In a data stream, a single pattern or combination of closely related patterns that diverges and deviates from
standard, normal, or expected is called a static (spatial) anomaly. A temporal anomaly is a set of unexpected changes between
patterns. When a change first appears, this is recorded as an anomaly. If this change looks a number of times, then it is set to a
“new normal” and terminated as an anomaly. An HTM system detects the anomaly, and due to continuous learning nature, it
quickly learns when they become the new normal. A robust anomalous behavior detection framework using HTM-based SFT
for improving decision-making (SDR-ABDF/P2) is a proposed framework or model in this research. The researcher claims that
the proposed model would be able to learn the order of several variables continuously in temporal sequences by using an
unsupervised learning rule.
Keywords :
HTM-Based , HTM , Preliminary
Journal title :
Computational and Mathematical Methods in Medicine