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PRODID:-//Svensk epidemiologisk förening - SVEP - ECPv6.15.20//NONSGML v1.0//EN
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X-WR-CALDESC:Händelser för Svensk epidemiologisk förening - SVEP
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DTSTART;TZID=Europe/Paris:20230327T140000
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DTSTAMP:20260418T232754
CREATED:20230218T094739Z
LAST-MODIFIED:20230218T094739Z
UID:1045-1679925600-1679932800@www.epidemiologi.nu
SUMMARY:SVEP årsmöte och webinar
DESCRIPTION:Håll tiden för webbinar och årsmöte måndag 27 mars\, 14.00-16.00: \n14.00-15.00: Tibor V Varga\, Assistant Professor\, Dept Public Health\, University of Copenhagen: \nAlgorithmic fairness and bias in epidemiological research \nAlgorithms will soon completely surround us – from college applications\, through self-driving cars to clinical decision making\, algorithms are becoming an organic part of our lives. In entering this era\, we rely heavily on algorithms of varying complexity\, in part to generate fair decisions by avoiding human biases. However\, societal inequities and downstream data biases often further propagate biases into decisions for the future. In addition\, while most algorithms are tuned to generate the most accurate predictions\, less attention is paid to generating fair results. In this talk\, I will give a primer on algorithmic fairness\, introduce the most common biases in machine learning\, recent examples from the algorithmic fairness literature\, and give an overview of the most common fairness metrics. \n15.15-16.00: Årsmöte\, Svensk epidemiologisk förening \nArrangementet hölls online via länken \nhttps://gu-se.zoom.us/j/64974422185?pwd=dFlMMHFkWVNFd1YvU0d6RVJJdGhzQT09 \nPasscode fås via kontakt med styrelsen eller i invitationsmail.
URL:https://www.epidemiologi.nu/event/svep-arsmote-och-webinar/
LOCATION:Online
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