Integration is indispensable, not only in mathematics, but also in a wide range of other fields. A deep learning method has recently been developed and shown to be capable of integrating mathematical functions that could not previously be integrated on a computer. However, that method treats integration as equivalent to natural language translation and does not reflect mathematical information. In this study, we adjusted the learning model to take mathematical information into account and developed a wide range of learning models that learn the order of numerical operations more robustly. In this way, we achieved a 98.80% correct answer rate with symbolic integration, a higher rate than that of any existing method. We judged the correctness of the integration based on whether the derivative of the primitive function was consistent with the integrand. By building an integrated model based on this strategy, we achieved a 99.79% rate of correct answers with symbolic integration.
翻译:不仅在数学方面,而且在许多其他领域,融合都是不可或缺的。最近开发了一种深层次的学习方法,并证明能够整合以前无法纳入计算机的数学功能。然而,这种方法将整合视为等同于自然语言翻译,并不反映数学信息。在这项研究中,我们调整了学习模式,以考虑到数学信息,并开发了广泛的学习模式,从而更有力地了解数字操作的顺序。这样,我们实现了98.80%的正确回答率,象征性整合率高于任何现有方法。我们根据原始功能的衍生物是否与原功能相一致来判断整合的正确性。我们根据这一战略建立了一个综合模型,从而实现了99.79%的正确回答率,并实现了象征性整合。