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首页> 外文期刊>Geoinformatica: An international journal of advances of computer science for geographic >Geographically weighted evidence combination approaches for combining discordant and inconsistent volunteered geographical information
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Geographically weighted evidence combination approaches for combining discordant and inconsistent volunteered geographical information

机译:地理加权证据组合方法,用于组合不一致和不一致的自愿性地理信息

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There is much interest in being able to combine crowdsourced data. One of the critical issues in information sciences is how to combine data or information that are discordant or inconsistent in some way. Many previous approaches have taken a majority rules approach under the assumption that most people are correct most of the time. This paper analyses crowdsourced land cover data generated by the Geo-Wiki initiative in order to infer the land cover present at locations on a 50 km grid. It compares four evidence combination approaches (Dempster-Shafer, Bayes, Fuzzy Sets and Possibility) applied under a geographically weighted kernel with the geographically weighted average approach applied in many current Geo-Wiki analyses. A geographically weighted approach uses a moving kernel under which local analyses are undertaken. The contribution (or salience) of each data point to the analysis is weighted by its distance to the kernel centre, reflecting Tobler's 1(st) law of geography. A series of analyses were undertaken using different kernel sizes (or bandwidths). Each of the geographically weighted evidence combination methods generated spatially distributed measures of belief in hypotheses associated with the presence of individual land cover classes at each location on the grid. These were compared with GlobCover, a global land cover product. The results from the geographically weighted average approach in general had higher correspondence with the reference data and this increased with bandwidth. However, for some classes other evidence combination approaches had higher correspondences possibly because of greater ambiguity over class conceptualisations and / or lower densities of crowdsourced data. The outputs also allowed the beliefs in each class to be mapped. The differences in the soft and the crisp maps are clearly associated with the logics of each evidence combination approach and of course the different questions that they ask of the data. The results show that discordant data can be combined (rather than being removed from analysis) and that data integrated in this way can be parameterised by different measures of belief uncertainty. The discussion highlights a number of critical areas for future research.
机译:能够组合众包数据非常令人感兴趣。信息科学中的关键问题之一是如何以某种方式组合不一致或不一致的数据或信息。许多以前的方法在大多数人大多数时候都是正确的假设下采用了多数规则方法。本文分析了Geo-Wiki计划生成的众包土地覆盖数据,以推断50 km网格上存在的土地覆盖。它比较了在地理加权内核下应用的四种证据组合方法(Dempster-Shafer,贝叶斯,模糊集和可能性)与当前许多Geo-Wiki分析中应用的地理加权平均方法。地理加权方法使用移动核,在该核下进行局部分析。每个数据点对分析的贡献(或显着性)由其到内核中心的距离加权,反映了Tobler的地理第一(第一)定律。使用不同的内核大小(或带宽)进行了一系列分析。每种地理加权证据组合方法都会生成对假设的空间分布度量,这些假设与与网格上每个位置处的单独土地覆盖类别有关。将这些与全球土地覆盖产品GlobCover进行了比较。通常,地理加权平均方法的结果与参考数据具有更高的对应性,并且随着带宽的增加而增加。但是,对于某些类别,其他证据组合方法具有较高的对应性,这可能是由于对类别概念的更大歧义和/或较低的众包数据密度。输出还允许映射每个类别中的信念。软映射和清晰映射的差异显然与每种证据组合方法的逻辑有关,当然也与它们对数据提出的不同问题有关。结果表明,不一致的数据可以合并(而不是从分析中删除),并且可以通过不同的信念不确定性度量来对以这种方式集成的数据进行参数化。讨论重点介绍了一些未来研究的关键领域。

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