CLAIHCIRLGDec 7, 2021

Question Answering Survey: Directions, Challenges, Datasets, Evaluation Matrices

arXiv:2112.03572v138 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that synthesizes existing knowledge for researchers in the QA field.

This survey analyzes research directions in question answering (QA) based on question type, answer type, evidence sources, and modeling approaches, and discusses open challenges such as automatic question generation and low resource availability, while presenting available datasets and evaluation measures.

The usage and amount of information available on the internet increase over the past decade. This digitization leads to the need for automated answering system to extract fruitful information from redundant and transitional knowledge sources. Such systems are designed to cater the most prominent answer from this giant knowledge source to the user query using natural language understanding (NLU) and thus eminently depends on the Question-answering(QA) field. Question answering involves but not limited to the steps like mapping of user question to pertinent query, retrieval of relevant information, finding the best suitable answer from the retrieved information etc. The current improvement of deep learning models evince compelling performance improvement in all these tasks. In this review work, the research directions of QA field are analyzed based on the type of question, answer type, source of evidence-answer, and modeling approach. This detailing followed by open challenges of the field like automatic question generation, similarity detection and, low resource availability for a language. In the end, a survey of available datasets and evaluation measures is presented.

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