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A Unified Framework for Knowledge Intensive Gradient Boosting: Leveraging Human Experts for Noisy Sparse Domains

机译:一个统一的知识密集梯度提升框架:利用人类专家嘈杂的稀疏域

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Incorporating richer human inputs including qualitative constraints such as monotonic and synergistic influences has long been adapted inside AI. Inspired by this, we consider the problem of using such influence statements in the successful gradient-boosting framework. We develop a unified framework for both classification and regression settings that can both effectively and efficiently incorporate such constraints to accelerate learning to a better model. Our results in a large number of standard domains and two particularly novel real-world domains demonstrate the superiority of using domain knowledge rather than treating the human as a mere labeler.
机译:包含更丰富的人体输入,包括单调和协同影响等定性约束,长期以来一直适应AI内。 灵感来自于此,我们考虑使用成功梯度升压框架中使用此类影响声明的问题。 我们为分类和回归设置开发统一框架,可以有效地和有效地纳入这种约束,以加速学习更好的模型。 我们的成果在大量标准域和两个特别是新的现实域名展示了使用域名知识的优越性,而不是将人类视为仅仅是贴标者。

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