Field-wise Learning for Multi-field Categorical Data
This work offers an incremental improvement in modeling multi-field categorical data, which is relevant for practitioners dealing with datasets containing heterogeneous groups.
This paper introduces a field-wise learning method for multi-field categorical data, which addresses the challenge of learning a universal model for heterogeneous groups by fitting simple, efficient one-to-one field-focused models. The proposed model, utilizing linear models with variance and low-rank constraints, demonstrates superior performance on two large-scale datasets.
We propose a new method for learning with multi-field categorical data. Multi-field categorical data are usually collected over many heterogeneous groups. These groups can reflect in the categories under a field. The existing methods try to learn a universal model that fits all data, which is challenging and inevitably results in learning a complex model. In contrast, we propose a field-wise learning method leveraging the natural structure of data to learn simple yet efficient one-to-one field-focused models with appropriate constraints. In doing this, the models can be fitted to each category and thus can better capture the underlying differences in data. We present a model that utilizes linear models with variance and low-rank constraints, to help it generalize better and reduce the number of parameters. The model is also interpretable in a field-wise manner. As the dimensionality of multi-field categorical data can be very high, the models applied to such data are mostly over-parameterized. Our theoretical analysis can potentially explain the effect of over-parametrization on the generalization of our model. It also supports the variance constraints in the learning objective. The experiment results on two large-scale datasets show the superior performance of our model, the trend of the generalization error bound, and the interpretability of learning outcomes. Our code is available at https://github.com/lzb5600/Field-wise-Learning.