Predicting independent living outcomes from written reports of social workers

Angelika Maier, P. Cimiano
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Abstract

In social care environments, the main goal of social workers is to foster independent living by their clients. An important task is thus to monitor progress towards reaching independence in different areas of their patients’ life. To support this task, we present an approach that extracts indications of independence on different life aspects from the day-to-day documentation that social workers create. We describe the process of collecting and annotating a corresponding corpus created from data records of two social work institutions with a focus on disability care. We show that the agreement on the task of annotating the observations of social workers with respect to discrete independent levels yields a high agreement of .74 as measured by Fleiss’ Kappa. We present a classification approach towards automatically classifying an observation into the discrete independence levels and present results for different types of classifiers. Against our original expectation, we show that we reach F-Measures (macro) of 95% averaged across topics, showing that this task can be automatically solved.
从社会工作者的书面报告中预测独立生活的结果
在社会关怀环境中,社会工作者的主要目标是培养他们的客户独立生活。因此,一项重要的任务是监测患者在生活的不同领域实现独立的进展情况。为了支持这项任务,我们提出了一种方法,从社会工作者创建的日常文件中提取不同生活方面的独立迹象。我们描述了收集和注释从两个社会工作机构的数据记录中创建的相应语料库的过程,重点是残疾护理。我们表明,对社会工作者的观察进行注释的任务的一致性,相对于离散的独立水平产生了高的一致性。74,由Fleiss ' Kappa测量。我们提出了一种分类方法,将观测数据自动分类为离散的独立水平,并给出了不同类型分类器的结果。与我们最初的预期相反,我们表明我们达到了F-Measures(宏观)在主题之间的平均值为95%,这表明该任务可以自动解决。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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