Neural-Symbolic Solver for Math Word Problems with Auxiliary Tasks
Previous math word problem solvers following the encoder-decoder paradigm fail to explicitly incorporate essential math symbolic constraints, leading to unexplainable and unreasonable predictions. Herein, we propose Neural-Symbolic Solver (NS-Solver) to explicitly and seamlessly incorporate differen...
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Zusammenfassung: | Previous math word problem solvers following the encoder-decoder paradigm
fail to explicitly incorporate essential math symbolic constraints, leading to
unexplainable and unreasonable predictions. Herein, we propose Neural-Symbolic
Solver (NS-Solver) to explicitly and seamlessly incorporate different levels of
symbolic constraints by auxiliary tasks. Our NS-Solver consists of a problem
reader to encode problems, a programmer to generate symbolic equations, and a
symbolic executor to obtain answers. Along with target expression supervision,
our solver is also optimized via 4 new auxiliary objectives to enforce
different symbolic reasoning: a) self-supervised number prediction task
predicting both number quantity and number locations; b) commonsense constant
prediction task predicting what prior knowledge (e.g. how many legs a chicken
has) is required; c) program consistency checker computing the semantic loss
between predicted equation and target equation to ensure reasonable equation
mapping; d) duality exploiting task exploiting the quasi duality between
symbolic equation generation and problem's part-of-speech generation to enhance
the understanding ability of a solver. Besides, to provide a more realistic and
challenging benchmark for developing a universal and scalable solver, we also
construct a new large-scale MWP benchmark CM17K consisting of 4 kinds of MWPs
(arithmetic, one-unknown linear, one-unknown non-linear, equation set) with
more than 17K samples. Extensive experiments on Math23K and our CM17k
demonstrate the superiority of our NS-Solver compared to state-of-the-art
methods. |
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DOI: | 10.48550/arxiv.2107.01431 |