Meeting Room
Monday 23 April
h 9:30
::Guest
Vani K
PhD student @ Amrita University (India)
::Abstract
Plagiarism is increasingly becoming a major issue in the academic and
educational domains. Automated and effective plagiarism detection
systems are direly required to curtail this information breach,
especially in tackling idea plagiarism. The proposed approach is aimed
to detect such plagiarism cases, where the idea of a third party is
adopted and presented intelligently so that at the surface level,
plagiarism cannot be unmasked. The work aims to explore syntax-semantic
concept extractions with genetic algorithm in detecting cases of idea
plagiarism. The work mainly focuses on idea plagiarism where the source
ideas are plagiarized and represented in a summarized form. Plagiarism
detection is employed at both the document and passage levels by
exploiting the document concepts at various structural levels.
Initially, the idea embedded within the given source document is
captured using sentence level concept extraction with genetic algorithm.
Document level detection is facilitated with word-level concepts where
syntactic information is extracted and the non-plagiarized documents are
pruned. A combined similarity metric that utilizes the semantic level
concept extraction is then employed for passage level detection. The
proposed approach is tested on PAN 2014 plagiarism corpus for summary
obfuscation data, which represents a challenging case of idea
plagiarism. The results obtained are found to exhibit significant
improvement over the compared systems and hence reflects the potency of
the proposed syntax-semantic based concept extractions in detecting idea
plagiarism.
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