학술논문

Is from ought? A comparison of unsupervised methods for structuring values-based wisdom-of-crowds estimates
Document Type
Original Paper
Source
Journal of Computational Social Science. :1-51
Subject
Data science
Clustering
Unsupervised machine learning
Wisdom of crowds
Values
Language
English
ISSN
2432-2717
2432-2725
Abstract
Many social and ecological problems require us to consider objectively verifiable phenomena as well as subjective states of knowledge and associated value systems. When approximating the facts of reality, the wisdom of crowds phenomenon demonstrates that many pooled estimates can be more accurate than individual or expert estimates. For complex and social systems, wisdom of crowd approaches are improved by aggregating knowledge over subpopulations. In this paper we consider subpopulations defined by different sets of shared values. We first discuss two approaches to qualitatively understanding differences in value sets held by individuals and groups, which in turn motivate our discussion of three unsupervised methods for identifying subpopulations based upon value-laden statements in narrative data from hyperlocal maternal and child health (MCH) contexts in Gombe State, Nigeria. We employ data science techniques and compare methods to assess the stability of inferences. We find the hypothesized groups to be method dependent and discuss implications for wisdom-of-crowd estimates in sustainable development contexts.