What is AI Bias?

Short & Sweet AI - En podkast av Dr. Peper

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The ethics surrounding AI are complicated yet fascinating to discuss. One issue that sits front and center is AI bias, but what is it? AI is based on algorithms, fed by data and experiences. The problem is when that data is incorrect, biased or based on stereotypes. Unfortunately, this means that machines, just like humans, are guided by potentially biased information. This means that your daily threat from AI is not from the machines themselves, but their bias. In this episode of Short and Sweet AI, I talk about this further and discuss a very serious problem: artificial intelligence bias. In this episode, find out: What AI bias is?The effects of AI biasThe three different types of bias and how they affect AIHow AI contributes to selection biasImportant Links & Mentions:Amazon scraps secret AI recruiting tool that showed bias against womenGoogle Hired Timnit Gebru to be an outspoken critic of unethical AI Biased Algorithms Learn from Biased Data: 3 Kinds Biases Found In AI DatasetsBiased Programmers? Or Biased Data? A Field Experiment in Operationalizing AI EthicsResources:Venture Beat – Study finds diversity in data science teams is key in reducing algorithmic biasThe New York Times - We Teach A.I. Systems Everything, Including Our BiasesEpisode Transcript:Today I’m talking about a very serious problem: artificial intelligence bias.AI Ethics The ethics of AI are complicated. Every time I go to review this area, I’m dazed by all the issues. There are groups in the AI community who wrestle with robot ethics, the threat to human dignity, transparency ethics, self-driving car liability, AI accountability, the ethics of weaponizing AI, machine ethics, and even the existential risk from superintelligence. But of all these hidden terrors, one is front and center. Artificial intelligence bias. What is it?Machines Built with BiasAI is based on algorithms in the form of computer software. Algorithms power computers to make decisions through something called machine learning. Machine learning algorithms are all around us. They supply the Netflix suggestions we receive, the posts appearing at the top of our social media feeds, they drive the results of our google searches. Algorithms are fed on data. If you want to teach a machine to recognize a cat, you feed the algorithm thousands of cat images until it can recognize a cat better than you can. The problem is machine learning algorithms are used to make decisions in our daily lives that can have extreme consequences. A computer program may help police decide where to send resources, or who’s approved for a mortgage, who’s accepted to a university or who gets the job.  More and more experts in the field are sounding the alarm. Machines, just...

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