Challenges in Domain-Specific Abstractive Summarization and How to Overcome them
Afzal, Anum, Vladika, Juraj, Braun, Daniel, Matthes, Florian
–arXiv.org Artificial Intelligence
However, they show several limitations when used for a task such as domain-specific abstractive text summarization. This paper identifies three of those limitations as research problems in the context of abstractive text summarization: 1) Quadratic complexity of transformer-based models with respect to the input text length; 2) Model Hallucination, which is a model's ability to generate factually incorrect text; and 3) Domain Shift, which happens when the distribution of the model's training and test corpus is not the same. Along with a discussion of the open research questions, this paper also provides an assessment of existing state-of-the-art techniques relevant to domain-specific text summarization to address the research gaps.
arXiv.org Artificial Intelligence
Jul-3-2023
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