algorithm bias / en Confronting and combatting algorithm bias at CoNECD conference /news/2021-03/confronting-and-combatting-algorithm-bias-conecd-conference <span>Confronting and combatting algorithm bias at CoNECD conference</span> <span><span>Anonymous (not verified)</span></span> <span><time datetime="2021-03-24T08:19:31-04:00" title="Wednesday, March 24, 2021 - 08:19">Wed, 03/24/2021 - 08:19</time> </span> <div class="layout layout--gmu layout--twocol-section layout--twocol-section--30-70"> <div class="layout__region region-first"> <div data-block-plugin-id="field_block:node:news_release:field_associated_people" class="block block-layout-builder block-field-blocknodenews-releasefield-associated-people"> <h2>In This Story</h2> <div class="field field--name-field-associated-people field--type-entity-reference field--label-visually_hidden"> <div class="field__label visually-hidden">People Mentioned in This Story</div> <div class="field__items"> <div class="field__item"><a href="/profiles/jbaldo" hreflang="und">James Baldo</a></div> </div> </div> </div> </div> <div class="layout__region region-second"> <div data-block-plugin-id="field_block:node:news_release:body" class="block block-layout-builder block-field-blocknodenews-releasebody"> <div class="field field--name-body field--type-text-with-summary field--label-visually_hidden"> <div class="field__label visually-hidden">Body</div> <div class="field__item"><p>Algorithms&nbsp;help us&nbsp;make hard decisions every day. Credit card companies, job boards, and more&nbsp;use&nbsp;fast-thinking algorithms to fairly decipher who fits their chosen criteria. But sometimes, they aren’t always as fair as they appear.&nbsp;</p> <p>At the annual Collaborative Network for Engineering and Computing Diversity (CoNECD) conference in January, the Director of the MS Data Analytics Engineering program, James&nbsp;Baldo, presented how algorithm biases arise and where data analysts and algorithm creators could make changes to increase fairness.&nbsp;</p> <p>“I looked at algorithm bias from a high-level technical perspective to show the audience that yes, algorithms can be biased, but that there is more to it than a yes or no analysis,” says&nbsp;Baldo.&nbsp;</p> <p>There are numerous aspects of algorithms that could hold bias. The data used for the algorithm, the core of the algorithm itself, and even the people interpreting the algorithm’s data could be where bias sneaks into the decision-making process, says&nbsp;Baldo.&nbsp;</p> <p>“Algorithms use artificial intelligence and are designed by computational data that may have an inherent and unintentional bias,” he says. “Employment decisions are a good example. If an algorithm is using a sample of data to sift through applicants for a software engineering job that doesn’t include many women, the algorithm could unintentionally sift women out.”&nbsp;</p> <p>Baldo&nbsp;says there have been numerous studies on algorithm bias. Still, he shared&nbsp;his thoughts&nbsp;at the conference because he felt it was important for&nbsp;conference attendees to understand algorithm bias’s root causes.&nbsp;&nbsp;</p> <p>“One slide I presented discussed how we achieve fairness with algorithms. We need to look at the data and try and detect biases in it. We can train people who interpret the data and educate them on the best practices,” says&nbsp;Baldo. “I mainly wanted my presentation to raise awareness, and I wanted to take some of the mystery out of algorithms.”&nbsp;</p> <p>From a data perspective,&nbsp;Baldo&nbsp;works to embed these best practices into the data analytics engineering program. “We are trying to&nbsp;embed&nbsp;education on the effects of&nbsp;algorithm bias&nbsp;into the MS program. Since it is an interdisciplinary program, we have to work together to figure out how to do that collaboratively.”&nbsp;</p> <p>Baldo&nbsp;sees&nbsp;algorithm bias awareness and prevention&nbsp;as crucial for building the data analytics workforce. “The social fabric of this is very important, and we have a responsibility as engineers to address it, and this was a start.”&nbsp;</p> </div> </div> </div> <div data-block-plugin-id="field_block:node:news_release:field_content_topics" class="block block-layout-builder block-field-blocknodenews-releasefield-content-topics"> <h2>Topics</h2> <div class="field field--name-field-content-topics field--type-entity-reference field--label-visually_hidden"> <div class="field__label visually-hidden">Topics</div> <div class="field__items"> <div class="field__item"><a href="/taxonomy/term/7296" hreflang="en">Data Analytics Engineering</a></div> <div class="field__item"><a href="/taxonomy/term/4766" hreflang="en">data analytics</a></div> <div class="field__item"><a href="/taxonomy/term/8521" hreflang="en">algorithm bias</a></div> </div> </div> </div> </div> </div> Wed, 24 Mar 2021 12:19:31 +0000 Anonymous 81491 at