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Shape Constraints for Set Functions

机译:设置功能的形状约束

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Set functions predict a label from a permutation-invariant variable-size collection of feature vectors. We propose making set functions more understandable and regularized by capturing domain knowledge through shape constraints. We show how prior work in monotonic constraints can be adapted to set functions, and then propose two new shape constraints designed to generalize the conditioning role of weights in a weighted mean. We show how one can train standard functions and set functions that satisfy these shape constraints with a deep lattice network. We propose a non-linear estimation strategy we call the semantic feature engine that uses set functions with the proposed shape constraints to estimate labels for compound sparse categorical features. Experiments on real-world data show the achieved accuracy is similar to deep sets or deep neural networks, but provides guarantees on the model behavior, which makes it easier to explain and debug.
机译:SET函数从特征向量的置换不变变量集合预测标签。通过捕获通过形状约束来捕获域知识,我们建议使SET功能更加理解和规范化。我们展示了在单调约束中的工作方式如何适应设置功能,然后提出两个新的形状约束,旨在概括加权平均值中权重的调节作用。我们展示了如何培训标准函数和设置满足这些形状约束的功能的标准功能和设置具有深晶格网络的功能。我们提出了一种非线性估计策略,我们调用了使用SET功能的语义特征引擎,其中包含所提出的形状约束来估算复合稀疏分类特征的标签。真实世界数据的实验表明,实现的准确性类似于深度集或深神经网络,但在模型行为上提供了保证,这使得更容易解释和调试。

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