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Evaluation of Question Answering Systems: Complexity of judging a natural language

2022-09-10 12:29:04
Amer Farea, Zhen Yang, Kien Duong, Nadeesha Perera, Frank Emmert-Streib

Abstract

Question answering (QA) systems are among the most important and rapidly developing research topics in natural language processing (NLP). A reason, therefore, is that a QA system allows humans to interact more naturally with a machine, e.g., via a virtual assistant or search engine. In the last decades, many QA systems have been proposed to address the requirements of different question-answering tasks. Furthermore, many error scores have been introduced, e.g., based on n-gram matching, word embeddings, or contextual embeddings to measure the performance of a QA system. This survey attempts to provide a systematic overview of the general framework of QA, QA paradigms, benchmark datasets, and assessment techniques for a quantitative evaluation of QA systems. The latter is particularly important because not only is the construction of a QA system complex but also its evaluation. We hypothesize that a reason, therefore, is that the quantitative formalization of human judgment is an open problem.

Abstract (translated)

URL

https://arxiv.org/abs/2209.12617

PDF

https://arxiv.org/pdf/2209.12617.pdf


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