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Interpreting the Fuzzy Semantics of Natural-Language Spatial Relation Terms with the Fuzzy Random Forest Algorithm

机译:用模糊随机森林算法解释自然语言空间关系项的模糊语义

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Na?ve Geography, intelligent geographical information systems (GIS), and spatial data mining especially from social media all rely on natural-language spatial relations (NLSR) terms to incorporate commonsense spatial knowledge into conventional GIS and to enhance the semantic interoperability of spatial information in social media data. Yet, the inherent fuzziness of NLSR terms makes them challenging to interpret. This study proposes to interpret the fuzzy semantics of NLSR terms using the fuzzy random forest (FRF) algorithm. Based on a large number of fuzzy samples acquired by transforming a set of crisp samples with the random forest algorithm, two FRF models with different membership assembling strategies are trained to obtain the fuzzy interpretation of three line-region geometric representations using 69 NLSR terms. Experimental results demonstrate that the two FRF models achieve good accuracy in interpreting line-region geometric representations using fuzzy NLSR terms. In addition, fuzzy classification of FRF can interpret the fuzzy semantics of NLSR terms more fully than their crisp counterparts.
机译:朴素的地理,智能地理信息系统(GIS)和空间数据挖掘,尤其是来自社交媒体的空间数据挖掘,都依赖于自然语言空间关系(NLSR)术语,将常识性空间知识纳入常规GIS中并增强空间信息的语义互操作性在社交媒体数据中。然而,NLSR术语固有的模糊性使其难以解释。本研究提出使用模糊随机森林(FRF)算法来解释NLSR术语的模糊语义。基于通过使用随机森林算法转换一组清晰样本而获得的大量模糊样本,训练了两个具有不同成员组装策略的FRF模型,以使用69个NLSR项获得对三个线区域几何表示的模糊解释。实验结果表明,两种FRF模型在使用模糊NLSR项解释线区域几何表示时均具有良好的准确性。此外,FRF的模糊分类比清晰的NLSR术语可以更全面地解释NLSR术语的模糊语义。

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