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논문검색

Reflective Thinking, Machine Learning, and User Authentication via Artificial K-lines

초록

영어

Artificial K-lines (AKL) is a structure that can be used to store different types of knowledge, as long as this knowledge is represented by series of events connected by causality. Unlike, and, perhaps, complementary to, Artificial Neural Networks (ANN), AKL can combine inter-domain knowledge and its knowledge base can be augmented dynamically without rebuilding of the entire system. In this paper we demonstrate the diversity of AKL by illustrating, through examples, its workings for three applications across three completely different areas of study. The first example demonstrates that our structure can generate a solution where most other known technologies are either incapable of, or very complicated in doing so. The second example illustrates a novel, human-like, way of machine learning. The third example presents a behavior metrics based method for password authentication.

목차

Abstract
 1. Introduction and Background
 2. Artificial K-lines
 3. Reflective Thinking and Artificial Creativity
  3.1. Robot & Assembly Line Example
  3.2 Artificial K-lines and Artificial Creativity
 4. Artificial K-lines and Machine Learning
 5. Artificial K-lines and User Authentication
 6. Comparison with Neural Networks
 7. Conclusion
 References

저자정보

  • Anestis A. Toptsis Dept. of Computer Science and Engineering, York University

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