What caused the biased results?

A company is developing a merchandise sales application The product team uses training data to teach the AI model predicting sales, and discovers emergent bias.

What caused the biased results?
A . The AI model was trained in winter and applied in summer.
B . The application was migrated from on-premise to a public cloud.
C . The team set flawed expectations when training the model.
D . The training data used was inaccurate.

Answer: A

Explanation:

Emergent bias is a type of bias that arises when an AI model encounters new or different data or scenarios that were not present or accounted for during its training or development. Emergent bias can cause the model to make inaccurate or unfair predictions or decisions, as it may not be able to generalize well to new situations or adapt to changing conditions. One possible cause of emergent bias is seasonality, which means that some variables or patterns in the data may vary depending on the time of year. For example, if an AI model for merchandise sales prediction was trained in winter and applied in summer, it may produce biased results due to differences in customer behavior, demand, or preferences.

Latest AIP-210 Dumps Valid Version with 90 Q&As

Latest And Valid Q&A | Instant Download | Once Fail, Full Refund

Subscribe
Notify of
guest
0 Comments
Inline Feedbacks
View all comments