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Identifying Communities of Trust and Confidence in the Charity and Not-for-Profit Sector: A Memetic Algorithm Approach

机译:识别慈善机构和非营利性领域的信任和信心社区:一种迭代算法方法

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In this study we analyse complete networks derived from field survey and market research through proposing an efficient methodology based on proximity graphs and clustering techniques enhanced with a new community detection algorithm. The specific context is the charity and Not-For-Profit sector in Australia and consumer behaviours within this context. To investigate the performance of this methodology we conduct experiments on the network extracted from a dataset that contains responses of 1,550 individual Australians to 43 questions in a quantitative survey conducted on behalf of the Australian Charities and Not-for-Profits Commission to study the public trust and confidence in Australian charities. Here, we generate the distance matrix by computing the Spearman correlation coefficient as a similarity metric among individuals. Then, several types of k-Nearest Neighbour (kNN) graphs were calculated from the distance matrix and the new community detection algorithm detected groups of consumers by optimizing a quality function called "modularity". Comparison of obtained results with the results of the BGLL algorithm, a heuristic given by the publicly available package Gephi and the MST-kNN algorithm, a graph-based approach to compute clusters that has several applications in bioinformatics and finance, reveals that our methodology is effective in partitioning of complete graphs and detecting communities. The combined results indicate that behavioural models that investigate trust in charities may need to be aware of intrinsic differences among subgroups as revealed by our analysis.
机译:在本研究中,我们通过基于接近图和聚类技术提出了一种新的社区检测算法,分析了源自现场调查和市场研究的完整网络。具体背景是澳大利亚慈善和非营利性部门以及在这方面的消费行为。为了调查该方法的性能,我们对从数据集中提取的网络进行实验,其中包含1,550个个人澳大利亚人对43个问题代表澳大利亚慈善机构和非营利组织委员会进行的定量调查,以研究公众信托对澳大利亚慈善机构的信心。这里,我们通过将Spearman相关系数计算为各个之间的相似度量来生成距离矩阵。然后,通过优化称为“模块化”的质量函数来计算来自距离矩阵和新的社区检测算法检测到消费者组的几种类型的k最近邻居(knn)图。与BGLL算法结果的结果比较,由公开的包装Gephi和MST-KNN算法给出的启发式,一种基于图形的方法来计算具有多种生物信息学和金融中具有若干应用的簇,揭示了我们的方法有效地分区完整图和检测社区。合并结果表明,调查慈善信任的行为模型可能需要了解我们分析所揭示的子组之间的内在差异。

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