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Main Authors: Dhakal, Abhiyan, Paudel, Kausik, Sigdel, Sanjog
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.15292
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author Dhakal, Abhiyan
Paudel, Kausik
Sigdel, Sanjog
author_facet Dhakal, Abhiyan
Paudel, Kausik
Sigdel, Sanjog
contents We propose an automated pipeline for performing literature reviews using semantic similarity. Unlike traditional systematic review systems or optimization based methods, this work emphasizes minimal overhead and high relevance by using transformer based embeddings and cosine similarity. By providing a paper title and abstract, it generates relevant keywords, fetches relevant papers from open access repository, and ranks them based on their semantic closeness to the input. Three embedding models were evaluated. A statistical thresholding approach is then applied to filter relevant papers, enabling an effective literature review pipeline. Despite the absence of heuristic feedback or ground truth relevance labels, the proposed system shows promise as a scalable and practical tool for preliminary research and exploratory analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2509_15292
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An Artificial Intelligence Driven Semantic Similarity-Based Pipeline for Rapid Literature
Dhakal, Abhiyan
Paudel, Kausik
Sigdel, Sanjog
Artificial Intelligence
We propose an automated pipeline for performing literature reviews using semantic similarity. Unlike traditional systematic review systems or optimization based methods, this work emphasizes minimal overhead and high relevance by using transformer based embeddings and cosine similarity. By providing a paper title and abstract, it generates relevant keywords, fetches relevant papers from open access repository, and ranks them based on their semantic closeness to the input. Three embedding models were evaluated. A statistical thresholding approach is then applied to filter relevant papers, enabling an effective literature review pipeline. Despite the absence of heuristic feedback or ground truth relevance labels, the proposed system shows promise as a scalable and practical tool for preliminary research and exploratory analysis.
title An Artificial Intelligence Driven Semantic Similarity-Based Pipeline for Rapid Literature
topic Artificial Intelligence
url https://arxiv.org/abs/2509.15292