Measuring the Performance of Hospitals in Lebanese qadas Using PCA- DEA Model

A. Nasser
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引用次数: 2

Abstract

We study in this paper the performance of Hospitals in Lebanon. Using the nonparametric method Data Envelopment Analysis (DEA), we are able to measures relative efficiency of Hospitals in Lebanon. DEA is a technique that uses linear programming and it measures the relative efficiency of similar type of organizations termed as Decision Making Units (DMUs). In this study, due to the lack of individual data on hospital level, each DMU refers to a qada in Lebanon where the used data represent the aggregation of input and outputs of different hospitals within the qada. In DEA, the inclusion of more number of inputs and /or outputs results in getting a more number of efficient units. Therefore, selecting the appropriate inputs and outputs is a major factor of DEA results. Therefore, we use here the Principal Component Analysis (PCA) in order to reduce the data structure into certain principal components which are essential for identifying efficient DMUs. It is important to note that we have used the basic BCC-input model for the entire analysis. We considered 24 DMUs for the study, using DEA on original data; we got 17 DMUs out of 24 DMUs as efficient. Then we considered 1 PC for inputs and 1 PC for output with almost 80 percent variances, resulting in 3 DMUs as efficient and 21 as inefficient. Using 1 PC for input and 2 PCs for output with 90 percent variance for both input and output, we got 9 DMUs as efficient and 15 DMUs as inefficient. Finally, we have attempted to identify the efficient units with 2 PCs and for 2 PCs for input and outputs with variance more than 95 percent, resulting in 10 efficient DMUs and 14 inefficient DMUs. In Principal Component analysis, if the variance lies between 80 percent to-90 percent it is judged as a meaningful one. It is concluded that Principal Component Analysis plays an important role in the reduction of input output variables and helps in identifying the efficient DMUs and improves the discriminating power of DEA.
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用PCA- DEA模型衡量黎巴嫩qadas医院绩效
本文对黎巴嫩医院的绩效进行了研究。使用非参数方法数据包络分析(DEA),我们能够衡量黎巴嫩医院的相对效率。DEA是一种使用线性规划的技术,它测量被称为决策单元(dmu)的类似类型组织的相对效率。在本研究中,由于缺乏医院层面的个体数据,每个DMU代表黎巴嫩的一个qada,其中使用的数据代表该qada内不同医院的输入和输出的总和。在DEA中,包含更多数量的输入和/或输出导致获得更多数量的有效单位。因此,选择合适的投入产出是影响DEA结果的主要因素。因此,我们在这里使用主成分分析(PCA),以便将数据结构减少到某些主成分,这些主成分对于识别有效的dmu至关重要。值得注意的是,我们在整个分析中使用了基本的bcc输入模型。我们考虑了24个dmu进行研究,对原始数据使用DEA;24个dmu中有17个是有效的。然后我们考虑1个PC作为输入,1个PC作为输出,差异几乎为80%,结果是3个dmu是高效的,21个是低效的。使用1台PC作为输入,2台PC作为输出,输入和输出的方差为90%,我们得到9个dmu为高效,15个dmu为低效。最后,我们试图确定具有2台pc和2台pc的有效单元,用于输入和输出的方差超过95%,从而产生10个有效的dmu和14个低效的dmu。在主成分分析中,如果方差介于80%到90%之间,则判断为有意义的方差。结果表明,主成分分析在减少投入产出变量和识别有效决策单元方面具有重要作用,提高了DEA的判别能力。
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