BEGIN:VCALENDAR
PRODID:-//Grails iCalendar plugin//NONSGML Grails iCalendar plugin//EN
VERSION:2.0
CALSCALE:GREGORIAN
METHOD:PUBLISH
BEGIN:VEVENT
DTSTAMP:20260513T220048Z
DTSTART;TZID=Europe/London:20200110T184500
DTEND;TZID=Europe/London:20200110T184500
SUMMARY:Overcoming Opacity in Machine Learning @ AISB 2020
UID:20260519T182653Z-iCalPlugin-Grails@philevents-web-6b96c54f56-bljdq
TZID:Europe/London
LOCATION:Waldegrave Rd\, London\, United Kingdom\, TW1 4SX
DESCRIPTION:<p>Computing systems are <em>opaque</em> when their behavior cannot be explained or understood. This is the case when it is difficult to know how or why inputs are transformed into corresponding outputs\, and when it is not clear which environmental features and regularities are being tracked. The widespread use of <em>machine learning</em> has led to a proliferation of opaque computing systems\, giving rise to the so-called <em>Black Box Problem in AI</em>. Because this problem has significant practical\, theoretical\, and ethical consequences\, research efforts in <em>Explainable AI</em> aim to solve the Black Box Problem through post hoc analysis\, or to evade the Black Box Problem through the use of interpretable systems. Nevertheless\, questions remain about whether or not the Black Box Problem can actually be solved or evaded\, and if so\, what it would take to do so. <br><br>This symposium brings together researchers from <em>Artificial Intelligence\, Cognitive Science\, Philosophy\,</em> and <em>Law</em> to investigate the nature\, causes\, and consequences of opacity in different scientific\, technical\, and social domains\, as well as to explore and evaluate recent efforts to overcome opacity in Explainable AI.</p>
ORGANIZER;CN=Carlos Zednik:
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