论文
论文题目: Modeling of spatial stratified heterogeneity
第一作者: Guo Jiangang, Wang Jinfeng, Xu Chengdong, Song Yongze
联系作者:
发表年度: 2022
摘  要: Spatial stratified heterogeneity (SSH) refers to the geographical phenomena in which the geographical attributes within-strata are more similar than the between-strata, which is ubiquitous in the real world and offers information implying the causation of nature. Stratification, a primary approach to SSH, generates strata using a priori knowledge or thousands of supervised and unsupervised learning methods. Selecting reasonable stratification methods for spatial analysis in specific domains without prior knowledge is challenging because no method is optimal in a general sense. However, a systematic review of a large number of stratification methods is still lacking. In this article, we review the methods for stratification, categorize the existing typical stratification methods into four classes - univariate stratification, cluster-based stratification, multicriteria stratification, and supervised stratification - and construct their taxonomy. Finally, we present a summary of the software and tools used to compare and perform stratification methods. Given that different stratification methods reflect distinct human understandings of spatial distributions and associations, we suggest that further studies are needed to reveal the nature of geographical attributes by integrating SSH, advanced algorithms, and interdisciplinary methods.
英文摘要:
刊物名称: GISCIENCE & REMOTE SENSING
全文链接:
论文类别: SCI