Multi-View Reasoning: Consistent Contrastive Learning for Math Word Problem
Math word problem solver requires both precise relation reasoning about quantities in the text and reliable generation for the diverse equation. Current sequence-to-tree or relation extraction methods regard this only from a fixed view, struggling to simultaneously handle complex semantics and diver...
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Zusammenfassung: | Math word problem solver requires both precise relation reasoning about
quantities in the text and reliable generation for the diverse equation.
Current sequence-to-tree or relation extraction methods regard this only from a
fixed view, struggling to simultaneously handle complex semantics and diverse
equations. However, human solving naturally involves two consistent reasoning
views: top-down and bottom-up, just as math equations also can be expressed in
multiple equivalent forms: pre-order and post-order. We propose a multi-view
consistent contrastive learning for a more complete semantics-to-equation
mapping. The entire process is decoupled into two independent but consistent
views: top-down decomposition and bottom-up construction, and the two reasoning
views are aligned in multi-granularity for consistency, enhancing global
generation and precise reasoning. Experiments on multiple datasets across two
languages show our approach significantly outperforms the existing baselines,
especially on complex problems. We also show after consistent alignment,
multi-view can absorb the merits of both views and generate more diverse
results consistent with the mathematical laws. |
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DOI: | 10.48550/arxiv.2210.11694 |