We present a new fully-symbolic Bayesian model of semantic parsing and reasoning which we hope to be the first step in a research program toward more domain- and task-general NLU and AI. Humans create internal mental models of their observations which greatly aid in their ability to understand and reason about a large variety of problems. We aim to capture this in our model, which is fully interpretable and Bayesian, designed specifically with generality in mind, and therefore provides a clearer path for future research to expand its capabilities. We derive and implement an inference algorithm, and evaluate it on an out-of-domain ProofWriter question-answering/reasoning task, achieving zero-shot accuracies of 100% and 93.43%, depending on the experimental setting, thereby demonstrating its value as a proof-of-concept.
翻译:我们提出了一种新的完全顺从的贝叶斯语语语解析和推理模式,我们希望这能成为研究计划的第一步,更注重领域和任务性通用NLU和AI。 人类创建了他们观察的内部心理模式,极大地帮助他们理解和理解大量各种问题的能力。 我们的目标是在我们的模型中捕捉到这一点,这个模型完全可以解释,而贝叶斯语是专门设计,其设计是通用的,因此为未来研究扩展其能力提供了更清晰的路径。 我们得出并实施了一种推论算法,并评估了一种外部的校准Writer质询/论证任务,实现了100%和93.43%的零结果,这取决于实验环境,从而显示了其作为证据概念的价值。