Automatic question generation based on sentence structure analysis using machine learning approach
Miroslav Bl\v{s}t\'ak, Viera Rozinajov\'a

TL;DR
This paper presents a machine learning-based framework for automatic question generation from English text, combining linguistic patterns with data-driven learning to produce high-quality, diverse questions that outperform existing systems.
Contribution
The authors introduce a novel hybrid approach that integrates linguistic pattern analysis with machine learning to improve question generation quality and adaptability.
Findings
Generated questions outperform state-of-the-art systems.
Questions are comparable to human-created ones.
The system allows continuous improvement through reinforcement learning.
Abstract
Automatic question generation is one of the most challenging tasks of Natural Language Processing. It requires "bidirectional" language processing: firstly, the system has to understand the input text (Natural Language Understanding) and it then has to generate questions also in the form of text (Natural Language Generation). In this article, we introduce our framework for generating the factual questions from unstructured text in the English language. It uses a combination of traditional linguistic approaches based on sentence patterns with several machine learning methods. We firstly obtain lexical, syntactic and semantic information from an input text and we then construct a hierarchical set of patterns for each sentence. The set of features is extracted from the patterns and it is then used for automated learning of new transformation rules. Our learning process is totally…
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