Morris Zieve
2023
Systematic TextRank Optimization in Extractive Summarization
Morris Zieve
|
Anthony Gregor
|
Frederik Juul Stokbaek
|
Hunter Lewis
|
Ellis Marie Mendoza
|
Benyamin Ahmadnia
Proceedings of the 14th International Conference on Recent Advances in Natural Language Processing
With the ever-growing amount of textual data, extractive summarization has become increasingly crucial for efficiently processing information. The TextRank algorithm, a popular unsupervised method, offers excellent potential for this task. In this paper, we aim to optimize the performance of TextRank by systematically exploring and verifying the best preprocessing and fine-tuning techniques. We extensively evaluate text preprocessing methods, such as tokenization, stemming, and stopword removal, to identify the most effective combination with TextRank. Additionally, we examine fine-tuning strategies, including parameter optimization and incorporation of domain-specific knowledge, to achieve superior summarization quality.
Search