π node [[bias_(ethics fairness)]]
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garden/KGBicheno/Artificial Intelligence/Introduction to AI/Week 3 - Introduction/Definitions/Bias_(Ethics-Fairness).md by @KGBicheno
bias (ethics/fairness)
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Stereotyping, prejudice or favoritism towards some things, people, or groups over others. These biases can affect collection and interpretation of data, the design of a system, and how users interact with a system. Forms of this type of bias include:
- automation bias
- confirmation bias
- experimenterβs bias
- group attribution bias
- implicit bias
- in-group bias
- out-group homogeneity bias
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Systematic error introduced by a sampling or reporting procedure. Forms of this type of bias include:
- coverage bias
- non-response bias
- participation bias
- reporting bias = sampling bias
- selection bias
Not to be confused with the bias term in machine learning models or prediction bias.
π stoas
- public document at doc.anagora.org/bias_(ethics-fairness)
- video call at meet.jit.si/bias_(ethics-fairness)
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