System for systematic literature review using multiple AI agents: Concept and an empirical evaluation

Systematic Literature Reviews (SLRs) have become the foundation of evidence-based studies, enabling researchers to identify, classify, and combine existing studies based on specific research questions. Conducting an SLR is largely a manual process. Over the previous years, researchers have made sign...

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Hauptverfasser: Sami, Abdul Malik, Rasheed, Zeeshan, Kemell, Kai-Kristian, Waseem, Muhammad, Kilamo, Terhi, Saari, Mika, Duc, Anh Nguyen, Systä, Kari, Abrahamsson, Pekka
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creator Sami, Abdul Malik
Rasheed, Zeeshan
Kemell, Kai-Kristian
Waseem, Muhammad
Kilamo, Terhi
Saari, Mika
Duc, Anh Nguyen
Systä, Kari
Abrahamsson, Pekka
description Systematic Literature Reviews (SLRs) have become the foundation of evidence-based studies, enabling researchers to identify, classify, and combine existing studies based on specific research questions. Conducting an SLR is largely a manual process. Over the previous years, researchers have made significant progress in automating certain phases of the SLR process, aiming to reduce the effort and time needed to carry out high-quality SLRs. However, there is still a lack of AI agent-based models that automate the entire SLR process. To this end, we introduce a novel multi-AI agent model designed to fully automate the process of conducting an SLR. By utilizing the capabilities of Large Language Models (LLMs), our proposed model streamlines the review process, enhancing efficiency and accuracy. The model operates through a user-friendly interface where researchers input their topic, and in response, the model generates a search string used to retrieve relevant academic papers. Subsequently, an inclusive and exclusive filtering process is applied, focusing on titles relevant to the specific research area. The model then autonomously summarizes the abstracts of these papers, retaining only those directly related to the field of study. In the final phase, the model conducts a thorough analysis of the selected papers concerning predefined research questions. We also evaluated the proposed model by sharing it with ten competent software engineering researchers for testing and analysis. The researchers expressed strong satisfaction with the proposed model and provided feedback for further improvement. The code for this project can be found on the GitHub repository at https://github.com/GPT-Laboratory/SLR-automation.
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title System for systematic literature review using multiple AI agents: Concept and an empirical evaluation
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