š¹ Bias
What it means (simple)
Bias is when an AI system consistently favors or disadvantages certain people or outcomes.
Why it happens
- Training data is skewed or incomplete
- Historical data already contains human bias
- Some groups are underrepresented
Easy example
- If a hiring AI is trained mostly on resumes from men, it may prefer male candidates, even when women are equally qualified.
Key idea to remember
Bias = systematic unfair preference caused by data or design
š¹ Veracity
What it means (simple)
Veracity is about how truthful, accurate, and reliable the data is.
Why it matters
- AI learns from data.
- Bad data = bad decisions.
Easy example
- If traffic data is outdated or incorrect, a navigation AI may send you into traffic jams instead of avoiding them.
Key idea to remember
Veracity = can you trust the data?
š¹ Robustness
What it means (simple)
Robustness is how well an AI system handles errors, noise, attacks, or unexpected situations.
Why it matters
- Real-world data is messy.
- Robust systems do not break easily.
Easy example
- A facial recognition system that fails when lighting changes or someone wears glasses is not robust.
Key idea to remember
Robustness = stays reliable under stress or weird inputs
š¹ Fairness
What it means (simple)
Fairness means the AI treats different individuals and groups equitably and avoids discrimination.
How it is different from bias
- Bias is the problem
- Fairness is the goal
Easy example
- A loan approval AI should evaluate applicants based on financial criteria, not race, gender, or location.
Key idea to remember
Fairness = equal treatment for comparable cases
š§ One-Line Memory Hooks
- Bias ā unfair patterns
- Veracity ā data truthfulness
- Robustness ā handles stress and noise
- Fairness ā equal and ethical outcomes
š Comparison Table
| Concept | What It Focuses On | Simple Question It Answers | Example Problem |
|---|---|---|---|
| Bias | Skewed outcomes | Is the model unfairly favoring someone? | Hiring AI prefers men |
| Veracity | Data quality | Is the data accurate and trustworthy? | Outdated or false records |
| Robustness | Stability and reliability | Does the system still work under bad conditions? | Model fails with noisy input |
| Fairness | Ethical treatment | Are people treated equally? | Loan AI discriminates by region |
š„ Confusion Cleared.
ā Confusing bias with fairness
ā Bias is the issue, fairness is the objective
ā Thinking robustness is accuracy
ā A model can be accurate but not robust
ā Ignoring data quality
ā Low veracity silently destroys models
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