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X-WR-CALNAME;VALUE=TEXT:The Seven Deadly Selection Biases
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SUMMARY:The Seven Deadly Selection Biases
DESCRIPTION:<strong><a data-url="https://selection-biases-3-5-18.eventbrite.com" href="https://selection-biases-3-5-18.eventbrite.com" target="_blank" title="">REGISTER</a></strong><br><em>This event is part of the Research, Rigor &amp; Reproducibility Series</em><br><strong>Speaker:</strong> Xiao-Li Meng, PhD, Dean, Graduate School of Arts and Sciences, and the Whipple V.N. Jone Professor of Statistics, Harvard University <em>(on sabbatical 2017-2018 academic year) </em>(<a data-url="https://gsas.harvard.edu/person/xiao-li-meng" href="https://gsas.harvard.edu/person/xiao-li-meng" target="_blank" title="">full bio here</a>)<br><strong>Description: </strong>This talk provides a statistical perspective on the roles the seven S’s (sins?) play in increasing the amount of irreproducible research, in medical and life sciences and beyond: <ol>	<li>		Selections in hypotheses (e.g., subgroup analysis);	</li>	<li>		Selections in data (e.g., deleting “outliers” or only using “complete cases”);	</li>	<li>		Selections in methodologies (e.g., for goodness of fit);	</li>	<li>		Selections in due diligence and debugging (e.g., triple checking only when the outcome seems undesirable);	</li>	<li>		Selections in publication (e.g., only when p-value &lt;0.05);	</li>	<li>		Selections in reporting/summary (e.g., suppressing caveats);	</li>	<li>		Selections in understanding and interpretation (e.g., our preference for deterministic, “common sense” interpretation).	</li></ol><p>	The <em>Big Data Paradox</em> and <em>Simpson’s Paradox</em> will be used to demonstrate that the problem of irreproducible research is getting BIGGER with Big Data. A cocktail treatment approach together with a <em>selfish/blowfish test</em> is suggested to combat this problem.<br> </p>
LOCATION:Waterhouse Room, Gordon Hall, 1st. Fl., 25 Shattuck Street
STATUS:CONFIRMED
DTSTART:20180305T180000Z
DTEND:20180305T193000Z
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