论文标题
通过学习分析表达式的组成概括
Compositional Generalization by Learning Analytical Expressions
论文作者
论文摘要
组成概括是人类的基本且必不可少的智力能力,它使我们能够轻松地重组已知的部分。但是,现有的基于神经网络的模型已被证明在这种能力上非常缺乏。受认知工作的启发,可以通过具有符号函数的可变插槽来捕获组合性,我们提出了一种令人耳目一新的视图,该视图将记忆启动的神经模型与分析表达式连接起来,以实现组成概括。我们的模型由两个合作神经模块,作曲家和求解器组成,非常适合认知论点,同时能够通过层次结构的增强学习算法以端到端的方式进行培训。众所周知的基准扫描实验表明,我们的模型抓住了构图概括的巨大能力,解决了以100%精确度的先前作品解决的所有挑战。
Compositional generalization is a basic and essential intellective capability of human beings, which allows us to recombine known parts readily. However, existing neural network based models have been proven to be extremely deficient in such a capability. Inspired by work in cognition which argues compositionality can be captured by variable slots with symbolic functions, we present a refreshing view that connects a memory-augmented neural model with analytical expressions, to achieve compositional generalization. Our model consists of two cooperative neural modules, Composer and Solver, fitting well with the cognitive argument while being able to be trained in an end-to-end manner via a hierarchical reinforcement learning algorithm. Experiments on the well-known benchmark SCAN demonstrate that our model seizes a great ability of compositional generalization, solving all challenges addressed by previous works with 100% accuracies.