{"id":63007,"date":"2022-03-30T07:00:48","date_gmt":"2022-03-30T06:00:48","guid":{"rendered":"https:\/\/www.clickworker.com\/?p=63007"},"modified":"2022-12-09T13:02:38","modified_gmt":"2022-12-09T12:02:38","slug":"ai-bias","status":"publish","type":"post","link":"https:\/\/www.clickworker.com\/customer-blog\/ai-bias\/","title":{"rendered":"Top 9 Ways to Overcome or Prevent AI Bias"},"content":{"rendered":"\r\n\r\n
Smart algorithms are only as good as their training data sets. As such, it’s not surprising that algorithmic bias (or Bias in Artificial Intelligence = AI Bias) increasingly pops up when Artificial Intelligence (AI<\/a>) and Machine Learning (ML<\/a>) models go into production.<\/p>\r\n AI bias is dangerous because it could easily lead to poor decisions with disastrous consequences. I’m sure you have come across examples<\/a> of AI bias in the news, like AI’s inability to recognize minorities and so on. So, it’s not hard to imagine businesses finding themselves in a legal nightmare.<\/p>\r\n How do you overcome or prevent AI bias?<\/p>\r\n\r\n\r\n\r\n Unfortunately, eliminating AI bias is challenging, and we must accept that we can’t stop it entirely. However, we can reduce bias by taking proactive steps to prevent it. The first step in this process is understanding how AI training datasets<\/a> can help generate and evolve AI models.<\/p>\r\n It’s important because research<\/a> suggests that we’re severely lacking when it comes to highly inclusive and diverse datasets. For example, as many as 24% of companies surveyed reported that it was mission-critical to enable access to unbiased, diverse, global AI datasets.<\/p>\r\n\r\n AI is supposed to intervene whenever it detects human bias. So, it’s natural to think that smart algorithms are unbiased. But you would be wrong, very wrong!<\/p>\r\n Both AI and ML models are created by people and often train on socially trained datasets. So, there is always a risk of existing human biases creeping into ML models and amplifying the negative consequences that come along with it.<\/p>\r\n ML algorithms analyze historical data tables and produce a training model. Once created, a new row of data is fed into the model, returning a prediction. For example, you can train a model on automobile transactions and then leverage the model to predict future sale prices of unsold vehicles remaining in the parking lot.<\/p>\r\nHow Drives AI Bias?<\/h2>\r\n