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On the Trade-Off Between Consistency and Coverage in Multi-label Rule Learning Heuristics

机译:关于多标志统治学习启发式的一致性与覆盖的权衡

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Recently, several authors have advocated the use of rule learning algorithms to model multi-label data, as rules are interpretable and can be comprehended, analyzed, or qualitatively evaluated by domain experts. Many rule learning algorithms employ a heuristic-guided search for rules that model regularities contained in the training data and it is commonly accepted that the choice of the heuristic has a significant impact on the predictive performance of the learner. Whereas the properties of rule learning heuristics have been studied in the realm of single-label classification, there is no such work taking into account the particularities of multi-label classification. This is surprising, as the quality of multi-label predictions is usually assessed in terms of a variety of different, potentially competing, performance measures that cannot all be optimized by a single learner at the same time. In this work, we show empirically that it is crucial to trade off the consistency and coverage of rules differently, depending on which multi-label measure should be optimized by a model. Based on these findings, we emphasize the need for configurable learners that can flexibly use different heuristics. As our experiments reveal, the choice of the heuristic is not straight-forward, because a search for rules that optimize a measure locally does usually not result in a model that maximizes that measure globally.
机译:最近,几位作者主张使用规则学习算法,多标签数据模型,因为规则是可解释和可被理解,分析,或由领域专家定性评价。许多规则学习算法采用了规则中包含的训练数据模型规律,并普遍认为启发式的选择对学习者的预测性能有显著影响启发式引导的搜索。而规则学习启发式的性能已经在单标签分类的领域进行了研究,有没有这样的工作,要考虑到多标签分类的特殊性。这是令人惊讶的,因为多标签预测的质量在各种不同的,通常而言评估潜在的竞争,不能全部由一个单一的学习,同时优化性能的措施。在这项工作中,我们经验表明,这是至关重要的不同权衡规则的一致性和覆盖面,取决于其多标签措施应通过模型进行优化。基于这些发现,我们强调学习者的配置能够灵活使用不同的启发式的需要。由于我们的实验显示,启发式的选择不是直接的,因为该优化措施本地通常不导致,在全球范围最大化是衡量一个模型规则的搜索。

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