Comparative Study of Human Interaction Pattern Mining Approaches

  • S. Uma et al.

Abstract

Opinion Mining and Sentiment Analysis in Natural Language Processing (NLP) are challenging, as they require deep understanding. Understanding involves methods that could differentiate between the facts of explicit and implicit, regular and irregular, syntactical and semantic language rules. Researches oriented towards Natural Language Processing and Sentiment Analysis have many unresolved problems like co-reference resolution, negation handling, anaphora goals, named-element acknowledgment, and word-sense disambiguation. This paper is proposed to develop an Optimized Partial Ancestral Graph (O-PAG) which is capable of mining patterns in human interactions and compare it with an existing tree based pattern mining approach. The experimental results are exposed to number of frequent interactions made and execution time. Results indicate that the overall performance can reach considerable improvements on using O-PAG approach.

Published
2019-12-21
How to Cite
et al., S. U. (2019). Comparative Study of Human Interaction Pattern Mining Approaches. International Journal of Advanced Science and Technology, 28(17), 919 - 926. Retrieved from http://sersc.org/journals/index.php/IJAST/article/view/2455