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Journal > Journal of Telematics and Informatics > Machine Learning Approaches on External Plagiarism Detection

 

Journal of Telematics and Informatics
Vol 4, No 2: September 2016
Machine Learning Approaches on External Plagiarism Detection
Subroto, Imam Much Ibnu ( Universitas Islam Sultan Agung)
Selamat, Ali ( Faculty of Computing, Universiti Teknologi Malaysia)
Assegaf, Badieah ( Informatics Engineering, Universitas Islam Sultan Agung)
Article Info   ABSTRACT
Published date:
15 Sep 2016
 
External plagiarism detection is a technique that refers to the comparison between suspicious document and different sources. External plagiarism models are generally preceded by candidate document retrieval and further analysis and then performed to determine the plagiarism occurring. Currently most of the external plagiarism detection is using similarity measurement approaches that are expressed by a pair of sentences or phrase considered similar. Similarity techniques approach is more easily understood using a formula which compares term or token between the two documents. In contrast to the approach of machine learning techniques which refer to the pattern matching and cannot directly comparing token or term between two documents. This paper proposes some machine learning techniques such as k-nearest neighbors (KNN), support vector machine (SVM) and artificial neural network (ANN) for external plagiarism detection and comparing the result with Cosine similarity measurement approach. This paper presented density based that normalized by frequency as the pattern. The result showed that all machine learning approach used in this experiment has better performance in term of accuracy, precision and recall.
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