The use of AI in HR, particularly for employee performance evaluations, has sparked important conversations about fairness and objectivity. We've explored the potential benefits and challenges of integrating AI into performance management, and even discussed the broader impact of AI on workplace culture. Today, we're zeroing in on a critical aspect of AI in performance reviews: how to avoid bias.
It's indisputable that stakeholders rely on employee performance evaluations —reviewing individual and team contributions to strategic business goals—for critical talent development insights. Why? They foster employee retention and engagement as ROI optimizers, depending on three crucial things:
Unfortunately, according to a 2022 Forbes Report, a disappointing and meager 14% of employees feel inspired by their performance reviews. A 2023 Gallup Poll aligns with this, pinpointing that only 33% of US employees think their employer tries to engage them. Finally, according to the US Bureau of Labor Statistics, stakeholders can expect a 47% annual voluntary and involuntary staff turnover, with replacement costs going as high as 200% of salary.
The primary reason for these worrying metrics is reliance on human skills (misdirected by several biases) and traditional (outdated) tools that have lost touch with the optimal employee experience. As a result:
An innovative and game-changing response is crucial to reverse these anti-retention, pro-churn employee influences disrupting businesses and costing them millions of dollars. This article presents a strategic approach to reducing bias in performance evaluations. How? With generative AI performance management tools that include sophisticated bias detection techniques.
So, what exactly is bias in employee performance reviews? It's when personal opinions or prejudices unfairly influence how an employee's work is evaluated.
Traditional performance evaluation methods raise memorability/recall issues. An excellent example of this is when managers focus on recent performance, discounting earlier contributions—referred to as Recency Bias. It's not the only obstructive type in performance evaluations; consider the following:
The four above are only the tip of a performance evaluation "bias iceberg" that includes the following:
What is Generative AI in HR?
Generative AI in HR is a technology that uses artificial intelligence to automate and enhance various HR processes. By seamlessly reducing human bias, it provides objective insights and a complete employee performance overview. The AI-driven performance management tools that fall under this category can efficiently scan massive volumes of raw input from team members, surveys, customer interactions, self-evaluations, and learning & development phases in a fraction of human time, leaving no gaps.
In summary, modern AI software delivers insightful under- and over-performance patterns. It covers a vast field of quantitative and qualitative data related to employee behavior, sorting and scoring it with evolving algorithms. In so doing, AI-driven data analytics saves valuable time and simultaneously ensures accuracy untainted by human bias. Nothing delivers more peace of mind when making actionable decisions than knowing the evidence supporting them is practically irrefutable.
Examples of AI in the workplace
At the cutting edge of the generative AI curve, savvy stakeholders use their tools to streamline the entire performance evaluation process. It includes:
As a result, employees are more likely to cooperate, leading to faster and more effective improvements that benefit both the business and its team members.
We've highlighted how AI significantly reduces human bias in performance evaluations, but it's crucial to appreciate that technological biases can creep into the results. To offset this obstruction, input data must:
Data cleansing or “scrubbing” is a massive subject in its own right. Trained data engineers apply structured techniques that address such inconsistencies as duplicate records, incorrect entries at source (e.g., wrong numbers, typographical and syntax errors), and incomplete or conflicting data. Specialized tools like RingLead, SAS Data Quality, Informatica, and others can help automate and streamline this process, ensuring your AI system receives the most accurate and reliable data possible. In short, it minimizes the risk of "garbage in, garbage out" and helps keep technological bias at a minimum.
Macorva's AI programs are trained to further enhance fairness and objectivity in performance insights. Our AI risk analysis feature flags potentially biased language or unsupported statements for manager review, providing an additional layer of scrutiny. By combining robust data cleansing practices with AI-powered checks and balances, you can create a performance review process that's both efficient and equitable.
Algorithmic Transparency and Explainability
Organizations should not expect their employees to blindly trust AI-driven evaluations without any explanation. Thus, AI transparency and the ability to explain certain decisions are crucial, even if the technical details might be complex for some employees to fully grasp.
The first critical step is transparently establishing your AI program’s authenticity. This relies on the AI software's "Ethical Considerations and Compliance," a topic that deserves its own discussion (see Section E below). When you present AI thoughtfully and transparently, it'll go a long way in easing employee concerns as you transition from old-school methods to cutting-edge technology. Besides that:
For example, suppose an employee asks:
Remember, machine learning algorithms enable your AI to improve responses over time, which brings us to the technology’s next critical benefit.
Continuous Learning and Adaptation
Continuous learning is at the crux of AI performance software. Many AI experts call it lifelong or incremental learning, a feature that signifies the technology has no limits as to how many angles and trends it can find in the same data and how much data it can include in its evaluations.
How do the AI algorithms do it?
Underlying all these steps is generative AI’s ability to monitor performance data in real-time, alerting itself and stakeholders of potential biases as they occur. More on this under Real-Time Monitoring and Alerts (see F below).
In summary, an AI-driven system’s output changes significantly as it progressively monitors data expansion in real-time, learning more, adapting to data expansion, and delivering better performance review insights while improving its own capabilities.
Nothing has been at the receiving end of workplace shifting more than the HR function, impacting productivity and employee engagement throughout the company. Generative AI automation has already impacted many companies' administration work and traditional performance evaluations, reducing manual or rater involvement by up to 70 percent. The saving of human time and effort creates the breathing room for HR to:
According to McKinsey, the generative AI options give managers "superpowers when it comes to HR topics," including performance evaluation. There's less tactical intervention, more guidance, less static same-old repetition, and more personalized proactive involvement.
In summary, it paves the way for a more strategic HR focus, underlined by improved, streamlined processes to support the business's AI aspirations. Finally, the association with professional generative AI providers like Macorva strengthens management's efforts to stay in touch with rapid industry advances and accelerated sophistication.
To offset employee criticism and skepticism severely obstructing the transition of one’s performance evaluation framework to AI technologies, stakeholders must meet or exceed all the industry's best security privacy protections. Also, they must prioritize showing the software’s pedigree—licenses, certificates, and relevant industry regulatory recognition—as vibrant, robust, professional, and secure to ensure non-discrimination and fairness from end to end in employee review processes.
Here are some common sense ethical AI in HR suggestions that go a long way to establishing credibility and adding significantly to employees accepting the shift from traditional methods:
Under various sections above, we've emphasized generative AI's continuous learning capabilities, the need for data cleansing, and the potential threat of technological biases as information conflicts impact results. One of the generative AI software's robust features (supported by machine learning) is that it doesn't allow these detected feedback obstructions to reoccur.
Excellent examples are Macorva and other software providers' successful efforts to:
While generative AI holds great promise for transforming performance evaluations, it's crucial to approach its implementation thoughtfully and strategically. To fully understand the potential benefits and challenges of integrating AI into your HR practices, we invite you to explore our additional insights on this topic:
The insights provided in this article show that employee performance evaluation and the generative AI revolution have merged with exceptional results. So, the question isn't if AI technology will enter your employee performance review strategies but how seamlessly and effectively you can integrate it.
To achieve this seamless integration, it's essential to partner with solutions that prioritize both technological innovation and responsible AI practices.
So, contact Macorva to request a demo and discover how our technology can help you meet your HR needs, delivering the exceptional support they demand with every employee interaction.