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1
Introduction
2
Mental Model
3
Pipeline
4
Work style
5
Building mathematical models
6
Interpretive lens
7
Evaluating outcomes without thinking
8
Obstacles to diversity
9
The Rooney Rule
10
Effect of the Rooney Rule
11
Unconstrained Optimization
12
Abstraction Barriers
13
Building a Model
14
Results
15
Bias Surface
16
Whats Behind the Cliff
17
When to Reserve a Slot
18
Intuition
19
Discussion
20
Discussion Structure
21
Formalization
Description:
Explore a keynote address from FAT* 2019 that delves into the complex interplay between fairness, rankings, and behavioral biases in decision-making processes. Examine how human biases can impact ranking systems and learn about formal models that analyze these effects. Discover potential interventions to mitigate bias and improve overall performance in screening decisions. Gain insights from speaker Jon Kleinburg of Cornell University as he presents joint research with Sendhil Mullainathan and Manish Raghavan. Follow the discussion on topics such as mental models, pipelines, work styles, and mathematical modeling approaches. Understand the concept of the Rooney Rule and its effects on diversity initiatives. Analyze unconstrained optimization, abstraction barriers, and the bias surface in decision-making contexts. Engage with the subsequent discussion led by Jennifer Wortman Vaughan from Microsoft Research to further explore the implications of this research on fairness and equity in algorithmic systems. Read more

Fairness, Rankings, and Behavioral Biases

Association for Computing Machinery (ACM)
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