03827nam 22005775 450 991073603170332120230731224336.03-658-42062-610.1007/978-3-658-42062-8(MiAaPQ)EBC30670635(Au-PeEL)EBL30670635(DE-He213)978-3-658-42062-8(PPN)272257583(CKB)27899960300041(EXLCZ)992789996030004120230731d2023 u| 0engurcnu||||||||txtrdacontentcrdamediacrrdacarrierAnalyzing Non-Textual Content Elements to Detect Academic Plagiarism /by Norman Meuschke1st ed. 2023.Wiesbaden :Springer Fachmedien Wiesbaden :Imprint: Springer Vieweg,2023.1 online resource (290 pages)Print version: Meuschke, Norman Analyzing Non-Textual Content Elements to Detect Academic Plagiarism Wiesbaden : Springer Fachmedien Wiesbaden GmbH,c2023 9783658420611 Introduction -- Academic Plagiarism Detection -- Citation-based Plagiarism Detection -- Image-based Plagiarism Detection -- Math-based Plagiarism Detection -- Hybrid Plagiarism Detection System -- Conclusion and Future Work -- References.Identifying plagiarism is a pressing problem for research institutions, publishers, and funding bodies. Current detection methods focus on textual analysis and find copied, moderately reworded, or translated content. However, detecting more subtle forms of plagiarism, including strong paraphrasing, sense-for-sense translations, or the reuse of non-textual content and ideas, remains a challenge. This book presents a novel approach to address this problem—analyzing non-textual elements in academic documents, such as citations, images, and mathematical content. The proposed detection techniques are validated in five evaluations using confirmed plagiarism cases and exploratory searches for new instances. The results show that non-textual elements contain much semantic information, are language-independent, and resilient to typical tactics for concealing plagiarism. Incorporating non-textual content analysis complements text-based detection approaches and increases the detection effectiveness, particularly for disguised forms of plagiarism. The book introduces the first integrated plagiarism detection system that combines citation, image, math, and text similarity analysis. Its user interface features visual aids that significantly reduce the time and effort users must invest in examining content similarity. About the author Norman Meuschke is a Senior Researcher for Information Retrieval and Natural Language Processing at the University of Göttingen, Germany.Natural language processing (Computer science)Image processing—Digital techniquesComputer visionPattern recognition systemsNatural Language Processing (NLP)Computer Imaging, Vision, Pattern Recognition and GraphicsAutomated Pattern RecognitionNatural language processing (Computer science).Image processing—Digital techniques.Computer vision.Pattern recognition systems.Natural Language Processing (NLP).Computer Imaging, Vision, Pattern Recognition and Graphics.Automated Pattern Recognition.808.025Meuschke Norman1380401MiAaPQMiAaPQMiAaPQBOOK9910736031703321Analyzing Non-Textual Content Elements to Detect Academic Plagiarism3421662UNINA