There is a recent growing interest in applying Deep Learning techniques to tabular data, in order to replicate the success of other Artificial Intelligence areas in this structured domain. Specifically interesting is the case in which tabular data have a time dependence, such as, for instance financial transactions. However, the heterogeneity of the tabular values, in which categorical elements are mixed with numerical items, makes this adaptation difficult. In this paper we propose a Transformer architecture to represent heterogeneous time-dependent tabular data, in which numerical features are represented using a set of frequency functions and the whole network is uniformly trained with a unique loss function.
翻译:最近人们越来越有兴趣将深学习技术应用于表格数据,以便在这一结构化领域复制其他人工情报领域的成功经验。具体有趣的是,表格数据具有时间依赖性,例如金融交易。然而,表格数值的异质性,即绝对要素与数字项目混杂在一起,使得这一调整难以进行。在本文件中,我们提议了一个变换器结构,以代表不同时间依赖的表格数据,其中数字特征使用一套频率函数表示,整个网络都经过统一培训,具有独特的损失功能。