使用结果感知聚类的目标策略建议

Ananth Balashankar, S. Fraiberger, Eric Deregt, M. Gorgens, L. Subramanian
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引用次数: 0

摘要

使用观测数据的政策建议通常依赖于对从整个人口中抽取的观测样本进行计量经济模型估计。然而,不同的政策行动可能对人口的不同子群体是最优的。在本文中,我们提出了结果感知聚类,这是一种将人口划分为不同聚类并得出聚类级政策建议的新方法。结果感知聚类在两个基本维度上不同于传统的聚类算法。首先,给定一个特定的感兴趣的结果,结果感知聚类基于选择与结果变量密切相关的一小部分特征来分割总体。其次,聚类算法的目标是基于聚类大小平衡约束、聚类间和聚类内距离在约简特征空间中的组合来生成接近均匀的聚类。我们基于对来自观察数据的一组浓缩的可操作策略特征(可能部分重叠或不同于用于分割的特征)的标准多元回归,为每个结果感知集群生成有针对性的策略建议。我们在生活水平测量研究-农业综合调查(lsm - isa)数据集上实施了我们的结果感知聚类方法,以产生有针对性的政策建议,以改善撒哈拉以南非洲农民的成果。基于对lsm - isa的详细分析,我们得出了三个撒哈拉以南非洲国家的农民人口的结果意识集群,并表明集群层面的目标政策建议与人口层面的政策有很大不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Targeted Policy Recommendations using Outcome-aware Clustering
Policy recommendations using observational data typically rely on estimating an econometric model on a sample of observations drawn from an entire population. However, different policy actions could potentially be optimal for different subgroups of a population. In this paper, we propose outcome-aware clustering, a new methodology to segment a population into different clusters and derive cluster-level policy recommendations. Outcome-aware clustering differs from conventional clustering algorithms across two basic dimensions. First, given a specific outcome of interest, outcome-aware clustering segments the population based on selecting a small set of features that closely relate with the outcome variable. Second, the clustering algorithm aims to generate near-homogeneous clusters based on a combination of cluster size-balancing constraints, inter and intra-cluster distances in the reduced feature space. We generate targeted policy recommendations for each outcome-aware cluster based on a standard multivariate regression of a condensed set of actionable policy features (which may partially overlap or differ from the features used for segmentation) from the observational data. We implement our outcome-aware clustering method on the Living Standards Measurement Study - Integrated Surveys on Agriculture (LSMS-ISA) dataset to generate targeted policy recommendations for improving farmers outcomes in sub-Saharan Africa. Based on a detailed analysis of the LSMS-ISA, we derive outcome-aware clusters of farmer populations across three sub-Saharan African countries and show that the targeted policy recommendations at the cluster level significantly differ from policies that are generated at the population level.
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