field-wise learning
- Europe > Switzerland (0.04)
- Asia > Thailand (0.04)
- Oceania > Australia (0.04)
- (2 more...)
Field-wise Learning for Multi-field Categorical Data
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.
- Europe > Switzerland (0.04)
- Asia > Thailand (0.04)
- Oceania > Australia (0.04)
- (2 more...)
Review for NeurIPS paper: Field-wise Learning for Multi-field Categorical Data
Summary and Contributions: The authors present an approach for modelling categorical variables. Each categorical column in a table is termed'field' by the authors. The main idea appears to be based on splitting the regularisation term for each'field'. The authors present a thorough derivation of their method. A linear and a nonlinear model are developed.
Field-wise Learning for Multi-field Categorical Data
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.