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No Classification without Representation: Assessing Geodiversity Issues in Open Data Sets for the Developing World

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arxiv 1711.08536 v1 pith:4KX4T7HL submitted 2017-11-22 stat.ML

No Classification without Representation: Assessing Geodiversity Issues in Open Data Sets for the Developing World

classification stat.ML
keywords datasetsdevelopingopenworldanalyzeassessavailable
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Modern machine learning systems such as image classifiers rely heavily on large scale data sets for training. Such data sets are costly to create, thus in practice a small number of freely available, open source data sets are widely used. We suggest that examining the geo-diversity of open data sets is critical before adopting a data set for use cases in the developing world. We analyze two large, publicly available image data sets to assess geo-diversity and find that these data sets appear to exhibit an observable amerocentric and eurocentric representation bias. Further, we analyze classifiers trained on these data sets to assess the impact of these training distributions and find strong differences in the relative performance on images from different locales. These results emphasize the need to ensure geo-representation when constructing data sets for use in the developing world.

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Cited by 3 Pith papers

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    Literature review catalogs geographic biases in AI from training data imbalances to generative outputs over-favoring prototypical places and discusses diversity evaluations.