Resource-constrained classification tasks are common in real-world applications such as allocating tests for disease diagnosis, hiring decisions when filling a limited number of positions, and defect detection in manufacturing settings under a limited inspection budget. Typical classification algorithms treat the learning process and the resource constraints as two separate and sequential tasks. Here we design an adaptive learning approach that considers resource constraints and learning jointly by iteratively fine-tuning misclassification costs. Via a structured experimental study using a publicly available data set, we evaluate a decision tree classifier that utilizes the proposed approach. The adaptive learning approach performs significantly better than alternative approaches, especially for difficult classification problems in which the performance of common approaches may be unsatisfactory. We envision the adaptive learning approach as an important addition to the repertoire of techniques for handling resource-constrained classification problems.
翻译:资源受限的分类任务在现实世界的应用中很常见,如分配疾病诊断测试、在填补有限职位时聘用决定和在有限的检查预算下在制造环境中发现缺陷等。典型的分类算法将学习过程和资源限制作为两个分别和先后的任务处理。我们在这里设计了适应性学习方法,通过迭接微调错误分类成本来考虑资源限制和共同学习。通过利用公开可得的数据集进行结构化的实验研究,我们评估了使用拟议方法的决策树分类方法。适应性学习方法比替代方法要好得多,特别是对于难以解决的分类问题,共同方法的绩效可能不能令人满意。我们设想适应性学习方法是对处理资源限制分类问题技术的重新组合的重要补充。