CLSep 29, 2024

The Nature of NLP: Analyzing Contributions in NLP Papers

arXiv:2409.19505v211 citationsh-index: 56
Originality Synthesis-oriented
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This work provides a data-driven lens for understanding NLP research trends, which is incremental as it builds on existing taxonomies and analysis methods.

The authors tackled the problem of defining NLP research by quantitatively analyzing papers, creating a dataset of 2k annotated abstracts and applying a model to 29k papers to trace trends, showing that NLP papers now contribute in more ways than ever before.

Natural Language Processing (NLP) is an established and dynamic field. Despite this, what constitutes NLP research remains debated. In this work, we address the question by quantitatively examining NLP research papers. We propose a taxonomy of research contributions and introduce NLPContributions, a dataset of nearly $2k$ NLP research paper abstracts, carefully annotated to identify scientific contributions and classify their types according to this taxonomy. We also introduce a novel task of automatically identifying contribution statements and classifying their types from research papers. We present experimental results for this task and apply our model to $\sim$$29k$ NLP research papers to analyze their contributions, aiding in the understanding of the nature of NLP research. We show that NLP research has taken a winding path -- with the focus on language and human-centric studies being prominent in the 1970s and 80s, tapering off in the 1990s and 2000s, and starting to rise again since the late 2010s. Alongside this revival, we observe a steady rise in dataset and methodological contributions since the 1990s, such that today, on average, individual NLP papers contribute in more ways than ever before. Our dataset and analyses offer a powerful lens for tracing research trends and offer potential for generating informed, data-driven literature surveys.

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