2023
DOI: 10.20944/preprints202310.0511.v1
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Interpretable Geometry Problem Solving Using Improved RetinaNet and Graph Convolutional Network

Pengpeng Jian,
Fucheng Guo,
Cong Pan
et al.

Abstract: This paper proposes an interpretable geometry solution based on the formal language set of text and diagram. Geometry problems are solved by machines, which still poses challenges in natural language processing and computer vision. Significant progress promotes existing methods in the extraction of geometric formal languages. However, the neglect of the graph structure information in the formal language and the lack of further refinement of the extracted language set can lead to the poor effect of the theorem … Show more

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