Revealing the Technology Development of Natural Language Processing: A Scientific Entity-Centric Perspective
This study analyzes the development of technologies in Natural Language Processing (NLP) from an entity-centric perspective, extracting methods, datasets, metrics, and tools to measure their impact via co-occurrence networks. The research reveals that while pre-trained language models like BERT and Transformer have become mainstream, the average number of entities per paper is increasing, indicating a growing knowledge burden for researchers.