2022
DOI: 10.1007/s10618-022-00887-4
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FiSH: fair spatial hot spots

Abstract: Pervasiveness of tracking devices and enhanced availability of spatially located data has deepened interest in using them for various policy interventions, through computational data analysis tasks such as spatial hot spot detection. In this paper, we consider, for the first time to our best knowledge, fairness in detecting spatial hot spots. We motivate the need for ensuring fairness through statistical parity over the collective population covered across chosen hot spots. We then characterize the task of ide… Show more

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Cited by 1 publication
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“…The statistical rigor in those methods would limit the extent of errors in predicting problematic booths. Further, there has been emerging literature on demographic fairness in hot spot detection (P and Sundaram 2022), with applications to hot spot policing. The overall idea is to ensure that the collective population across areas judged as problematic are demographically diverse and representative of the broader population.…”
Section: Polling Booth Protectionmentioning
confidence: 99%
“…The statistical rigor in those methods would limit the extent of errors in predicting problematic booths. Further, there has been emerging literature on demographic fairness in hot spot detection (P and Sundaram 2022), with applications to hot spot policing. The overall idea is to ensure that the collective population across areas judged as problematic are demographically diverse and representative of the broader population.…”
Section: Polling Booth Protectionmentioning
confidence: 99%