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SUMMARY; CHARSET=UTF-8 :Using Machine Learning to Create an Early Warning System for Welfare Recipients
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URL:http://www.exeter.ac.uk/events/details/?event=12273
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ATTACH: http://www.exeter.ac.uk/events/details/?event=12273
DTSTAMP:20220920T142016
LOCATION:Harrison Building 101
DESCRIPTION; CHARSET=UTF-8 :Using high-quality nation-wide social security data combined with machine learning tools, we develop predictive models of income support receipt intensities for any payment enrolee in the Australian social security system between 2014 and 2018.http://www.exeter.ac.uk/events/details/?event=12273
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