A Solution to Treat Mixed-Type Human Datasets from Socio-Ecological Systems

Lisa B. Clark, E. González, A. Henry, A. Sher
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引用次数: 1

Abstract

Abstract Coupled human and natural systems (CHANS) are frequently represented by large datasets with varied data including continuous, ordinal, and categorical variables. Conventional multivariate analyses cannot handle these mixed data types. In this paper, our goal was to show how a clustering method that has not before been applied to understanding the human dimension of CHANS: a Gower dissimilarity matrix with partitioning around medoids (PAM) can be used to treat mixed-type human datasets. A case study of land managers responsible for invasive plant control projects across rivers of the southwestern U.S. was used to characterize managers’ backgrounds and decisions, and project properties through clustering. Results showed that managers could be classified as “federal multitaskers” or as “educated specialists”. Decisions were characterized by being either “quick and active” or “thorough and careful”. Project goals were either comprehensive with ecological goals or more limited in scope. This study shows that clustering with Gower and PAM can simplify the complex human dimension of this system, demonstrating the utility of this approach for systems frequently composed of mixed-type data such as CHANS. This clustering approach can be used to direct scientific recommendations towards homogeneous groups of managers and project types.
处理来自社会生态系统的混合类型人类数据集的解决方案
人与自然耦合系统(CHANS)通常由包含连续、有序和分类变量的大型数据集来表示。传统的多变量分析无法处理这些混合数据类型。在本文中,我们的目标是展示如何使用一种以前未被应用于理解CHANS的人类维度的聚类方法:具有围绕介质划分(PAM)的Gower不相似矩阵来处理混合类型的人类数据集。以负责美国西南部河流入侵植物控制项目的土地管理者为例,通过聚类来表征管理者的背景和决策,以及项目属性。结果显示,管理人员可以被归类为“联邦多任务”或“受过教育的专家”。决策的特点要么是“迅速和积极”,要么是“彻底和仔细”。项目目标要么是综合生态目标,要么是范围更有限。本研究表明,使用Gower和PAM聚类可以简化该系统复杂的人的维度,证明了这种方法对于经常由混合类型数据组成的系统(如CHANS)的实用性。这种聚类方法可用于将科学建议指向同类的管理人员组和项目类型。
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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