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Nearest Neighbour Classification with Monotonicity Constraints

机译:具有单调性约束的最近邻分类

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摘要

In many application areas of machine learning, prior knowledge concerning the monotonicity of relations between the response variable and predictor variables is readily available. Monotonicity may also be an important model requirement with a view toward explaining and justifying decisions, such as acceptance/rejection decisions. We propose a modified nearest neighbour algorithm for the construction of monotone classifiers from data. We start by making the training data monotone with as few label changes as possible. The relabeled data set can be viewed as a monotone classifier that has the lowest possible error-rate on the training data. The relabeled data is subsequently used as the training sample by a modified nearest neighbour algorithm. This modified nearest neighbour rule produces predictions that are guaranteed to satisfy the monotonicity constraints. Hence, it is much more likely to be accepted by the intended users. Our experiments show that monotone kNN often outperforms standard kNN in problems where the monotonicity constraints are applicable.
机译:在机器学习的许多应用领域中,有关响应变量和预测变量之间关系的单调性的先验知识是很容易获得的。为了解释和证明决策(例如接受/拒绝决策),单调性也可能是重要的模型要求。我们提出了一种改进的最近邻算法,用于根据数据构造单调分类器。我们首先使训练数据单调,并尽可能减少标签更改。可以将重新标记的数据集视为在训练数据上具有最低可能错误率的单调分类器。重新标记的数据随后通过修改后的最近邻居算法用作训练样本。此修改后的最近邻规则产生的预测可以保证满足单调性约束。因此,目标用户很可能会接受它。我们的实验表明,在适用单调性约束的问题中,单调kNN通常优于标准kNN。

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