2023
DOI: 10.1111/exsy.13386
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Comparison study of unsupervised paraphrase detection: Deep learning—The key for semantic similarity detection

Abstract: Automatic detection of concealed plagiarism in the form of paraphrases is a difficult task, and finding a successful unsupervised approach for paraphrase detection is necessary as a precondition to change that. This comparative study identified the most efficient methods for unsupervised paraphrased document detection using similarity measures alone or combined with Deep Learning (DL) models. It proved the hypothesis that some DL models are more successful than the best statistically-based methods in that task… Show more

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“…Neural network models perform better than basic methods in various NLP tasks like text classification [13], [14], sentiment analysis [15], [16], named entity recognition [17], paraphrase detection [18], etc. Larger language models have further improved neural representation (surveyed in [19] and [20]) and brought new ways a language model can be used, such as prompting (surveyed in [21]).…”
Section: Introductionmentioning
confidence: 99%
“…Neural network models perform better than basic methods in various NLP tasks like text classification [13], [14], sentiment analysis [15], [16], named entity recognition [17], paraphrase detection [18], etc. Larger language models have further improved neural representation (surveyed in [19] and [20]) and brought new ways a language model can be used, such as prompting (surveyed in [21]).…”
Section: Introductionmentioning
confidence: 99%