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Autori principali: Joshi, Ananya, Mazaitis, Kathryn, Rosenfeld, Roni, Wilder, Bryan
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2306.16914
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author Joshi, Ananya
Mazaitis, Kathryn
Rosenfeld, Roni
Wilder, Bryan
author_facet Joshi, Ananya
Mazaitis, Kathryn
Rosenfeld, Roni
Wilder, Bryan
contents Irregularities in public health data streams (like COVID-19 Cases) hamper data-driven decision-making for public health stakeholders. A real-time, computer-generated list of the most important, outlying data points from thousands of daily-updated public health data streams could assist an expert reviewer in identifying these irregularities. However, existing outlier detection frameworks perform poorly on this task because they do not account for the data volume or for the statistical properties of public health streams. Accordingly, we developed FlaSH (Flagging Streams in public Health), a practical outlier detection framework for public health data users that uses simple, scalable models to capture these statistical properties explicitly. In an experiment where human experts evaluate FlaSH and existing methods (including deep learning approaches), FlaSH scales to the data volume of this task, matches or exceeds these other methods in mean accuracy, and identifies the outlier points that users empirically rate as more helpful. Based on these results, FlaSH has been deployed on data streams used by public health stakeholders.
format Preprint
id arxiv_https___arxiv_org_abs_2306_16914
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Computationally Assisted Quality Control for Public Health Data Streams
Joshi, Ananya
Mazaitis, Kathryn
Rosenfeld, Roni
Wilder, Bryan
Artificial Intelligence
Irregularities in public health data streams (like COVID-19 Cases) hamper data-driven decision-making for public health stakeholders. A real-time, computer-generated list of the most important, outlying data points from thousands of daily-updated public health data streams could assist an expert reviewer in identifying these irregularities. However, existing outlier detection frameworks perform poorly on this task because they do not account for the data volume or for the statistical properties of public health streams. Accordingly, we developed FlaSH (Flagging Streams in public Health), a practical outlier detection framework for public health data users that uses simple, scalable models to capture these statistical properties explicitly. In an experiment where human experts evaluate FlaSH and existing methods (including deep learning approaches), FlaSH scales to the data volume of this task, matches or exceeds these other methods in mean accuracy, and identifies the outlier points that users empirically rate as more helpful. Based on these results, FlaSH has been deployed on data streams used by public health stakeholders.
title Computationally Assisted Quality Control for Public Health Data Streams
topic Artificial Intelligence
url https://arxiv.org/abs/2306.16914