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FutureGen: A RAG-based Approach to Generate the Future Work of Scientific Article

About

The Future Work section of a scientific article outlines potential research directions by identifying gaps and limitations of a current study. This section serves as a valuable resource for early-career researchers seeking unexplored areas and experienced researchers looking for new projects or collaborations. In this study, we generate future work suggestions from a scientific article. To enrich the generation process with broader insights and reduce the chance of missing important research directions, we use context from related papers using RAG. We experimented with various Large Language Models (LLMs) integrated into Retrieval-Augmented Generation (RAG). We incorporate an LLM feedback mechanism to enhance the quality of the generated content and introduce an LLM-as-a-judge framework for robust evaluation, assessing key aspects such as novelty, hallucination, and feasibility. Our results demonstrate that the RAG-based approach using GPT-4o mini, combined with an LLM feedback mechanism, outperforms other methods based on both qualitative and quantitative evaluations. Moreover, we conduct a human evaluation to assess the LLM as an extractor, generator, and feedback provider.

Ibrahim Al Azher, Miftahul Jannat Mokarrama, Zhishuai Guo, Sagnik Ray Choudhury, Hamed Alhoori• 2025

Related benchmarks

TaskDatasetResultRank
Theorem GenerationFuture Theorem Prediction dataset (test)
Structure Score0.645
15
Future Paper Retrieval2K (47K pool) (test)
Target Similarity (Tgt-Sim)0.451
11
Mathematical Claim GenerationMathematical Claim Generation LLM Judge Evaluation pre-2024 GPT
Content Score1.4
8
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