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Generative AI for Demystifying Legal Document: To Change Difficult Legal Language into Simple and Easy Explanations that everyone can understand

M. V. Khasne, M.R. Shaikh, Bachhav Piyusha Sharad, Avhad Ishani Charudatt, Salunkhe Bhargavi Balasaheb, Agale Pranjal Ravsaheb

Abstract


Legal documents such as contracts, agreements, and policies are often written in difficult language with technical words and long sentences, which makes them hard for ordinary people to understand without legal knowledge. This issue is even more challenging for illiterate people, visually impaired individuals, and those living in rural areas who cannot easily read or interpret these documents.

The proposed system uses Generative AI and Natural Language Processing (NLP) to change complex legal documents into simple and clear language. It can take inputs like PDF files, Word documents, or scanned copies and automatically extract the text. The AI then simplifies the content while keeping the original meaning. The system also provides both text and audio outputs so users can read the simplified version or listen to it, helping people better understand their rights and responsibilities and reducing the need for legal help, especially in rural areas.


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References


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Recent research articles on Natural Language Processing and Legal Technology.


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