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Authors:
Steve Chan
Keywords: Satire; Natural Language Processing; Deep Learning; Dimensionality Reduction; Bi-Normal Separation Feature Scaling; Modified Association Matrix.
Abstract:
There are bypass mechanisms to Natural Language Processing capabilities, such as the usage of irony, sarcasm, and satire, particularly as pertains to Computer-Mediated Communications. The problem then is that of the gradations between irony, sarcasm, and satire. Irony is used to convey, usually, the opposite meaning of the actual things said, but its purpose is not necessarily intended to hurt the target. The purpose of sarcasm, unlike irony, is to hurt the target. Satire might utilize irony, exaggeration, ridicule, and/or humor to expose and criticize shortcomings and/or vices of the target. The detection of these usages is an intriguing challenge. For example, sarcasm detection is difficult as there are several gradations; sarcasm might be comprised of real sarcasm, semi-irony, or friendly sarcasm. Determining the cognitive context, which triggered the original manifestation remains a bridge to be solidified. Also, sarcasm detection often exceeds even the concept of context, as it can be distorted by either the sender and/or receiver. This remains a herculean challenge in the domain, as others remain focused on first-order metarepresentations (e.g., analogies), while the challenges of second-order metarepresentations are more sparsely addressed. This paper presents a possible framework to address the problem by utilizing Bi-Normal Separation Feature Scaling for informing a Modified Association Matrix as contrasted to a framework utilizing Inverse Document Frequency and a prototypical Association Matrix. It is posited that the former will exhibit faster convergence and accuracy for enhanced detection of irony, sarcasm, as well as satire, and preliminary results seem to indicate this. The main output of the paper is a potential solution stack that directly contends with the second-order metarepresentation issue.
Pages: 56 to 62
Copyright: Copyright (c) IARIA, 2018
Publication date: November 18, 2018
Published in: conference
ISSN: 2519-8599
ISBN: 978-1-61208-683-5
Location: Athens, Greece
Dates: from November 18, 2018 to November 22, 2018