a possibility in algorithmic fairness: can calibration and equal error rates be reconciled? (5min)
Published 3 years ago • 105 plays • Length 4:17Download video MP4
Download video MP3
Similar videos
-
21:51
a possibility in algorithmic fairness: can calibration and equal error rates be reconciled?
-
25:00
recovering from biased data: can fairness constraints improve accuracy?
-
21:28
ec'22: algorithmic design: fairness versus accuracy
-
1:44:13
ec'18 tutorial: algorithmic fairness (part 1): defining and designing fair algorithms
-
19:42
an algorithmic framework for fairness elicitation
-
1:56:52
algorithmic fairness (joint webinar series)
-
14:06
algorithmic fairness
-
1:09:55
berkman klein center presents (deep) learning from the bench: a conversation on algorithmic fairness
-
1:23:51
inherent trade-offs in algorithmic fairness
-
1:07:06
multigroup fairness | polylogues
-
7:45
detection and mitigation of algorithmic bias via predictive parity
-
19:43
lexicographically fair learning: algorithms and generalization
-
14:48
net benefit, calibration, threshold selection, and training objectives for algorithmic fairness...
-
11:50
a complexity-theoretic perspective on fairness
-
2:56
balancing fairness and accuracy in machine learning: an insightful take
-
1:24:09
algorithmic fairness: why it's hard, and why it's interesting (cvpr 2022 tutorial) — part 2
-
0:39
mitigating bias in ai: strategies for algorithmic fairness
-
4:25
algorithmic decision making and the cost of fairness
-
4:01
affirmative algorithms: relational equality as algorithmic fairness
-
57:15
panel 3 — fairness, bias and race in an algorithmic world