预测长期无家可归:使用客户历史比较算法的重要性

IF 1.5 Q2 SOCIAL WORK
G. Messier, Caleb John, Ayush Malik
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引用次数: 8

摘要

摘要本文研究了如何最好地比较预测长期无家可归者的算法,以确定住房计划的良好候选人。预测方法可以快速将潜在的慢性庇护所使用者转介到住房,但有时也会错误地识别出不会成为慢性庇护所的人(假阳性)。我们使用住房使用历史来证明,这些假阳性通常仍然是住房的好候选者。使用这种方法,我们将预测长期无家可归的简单阈值方法与更复杂的逻辑回归和神经网络算法进行了比较。虽然传统的二进制分类性能指标表明机器学习算法的性能优于阈值技术,但对三种算法识别的队列的避难所访问历史的检查表明,它们选择了具有非常相似特征的组。这对资源受限的非营利组织具有重要意义,因为阈值技术可以使用比机器学习算法简单得多的信息技术基础设施来实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Chronic Homelessness: The Importance of Comparing Algorithms using Client Histories
Abstract This paper investigates how to best compare algorithms for predicting chronic homelessness for the purpose of identifying good candidates for housing programs. Predictive methods can rapidly refer potentially chronic shelter users to housing but also sometimes incorrectly identify individuals who will not become chronic (false positives). We use shelter access histories to demonstrate that these false positives are often still good candidates for housing. Using this approach, we compare a simple threshold method for predicting chronic homelessness to the more complex logistic regression and neural network algorithms. While traditional binary classification performance metrics show that the machine learning algorithms perform better than the threshold technique, an examination of the shelter access histories of the cohorts identified by the three algorithms show that they select groups with very similar characteristics. This has important implications for resource constrained not-for-profit organizations since the threshold technique can be implemented using much simpler information technology infrastructure than the machine learning algorithms.
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来源期刊
CiteScore
4.20
自引率
6.70%
发文量
6
期刊介绍: This peer-reviewed, refereed journal explores the potentials of computer and telecommunications technologies in mental health, developmental disability, welfare, addictions, education, and other human services. The Journal of Technology in Human Services covers the full range of technological applications, including direct service techniques. It not only provides the necessary historical perspectives on the use of computers in the human service field, but it also presents articles that will improve your technology literacy and keep you abreast of state-of-the-art developments.
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