Discrimination
I. History
- 14th Amendment
- “Equal protection of the laws”
a) Clearly applies to state and local governments; may apply to private entities.
- Yick Wo v Hopkins (1886)
a) Each of more than 200 Chinese applicants to operate a laundry in wooden building is denied; all but 1 white successful
- Gomillion v Lightfoot (1960)
- State legislature redraws boundary of a city from a square to a 28-sided figure, excluding 395/400 black voters
- Brown v Board of Education (1954)
- Explicit use of social science evidence
- Civil Rights Act of 1964
- Clear expansion of 14th amendment protections.
- Creation of administrative agencies follows.
- Title VII
a) Disparate treatment: employer “simply treats some people less favorably than others because of their race, color, religion or national origin.”
b) Disparate impact: employment practices that are neutral on their face in their treatment of different groups but that in fact fall more harshly on one group than another.
- Legitimate business interest exception.
a) Griggs v Duke Power Co. (1971): Employment tests that demonstrate disparate impact can be used in tests can be shown to serve a “valid business necessity.”
b) International Brotherhood of Teamsters v US (1977)
II. Standards
- Village of Arlington Heights v Metopolitan Housing Corp (1977)
- Standard of proof: “a clear pattern unexplainable on grounds other than race”
- Burden of proof: Plaintiff must provide evidence of conduct that “if otherwise unexplained is more likely than not based on the consideration of impermissible factors”
- Burden then shifts to defendant to show “some legitimate nondiscriminatory reason” for the outcome.
III. Statistical Tests
- Binomial probability
- Castaneda v Partida (1977)
a) Jury selection case
b) USSC accepts binomial test and “2 or 3 standard deviations” standard
- Hazelwood School District v US (1977)
a) USSC extends test to employment cases
- 80% Rule
- EEOC
- Swain v Alabama
- Connecticut v Teal (1982)
- Statistical problem with the 80% rule
a) Example
Consider the example of a jurisdiction with 100,000 people -- 80,000 whites and 20,000 blacks -- with a jury pool having 900 whites and 100 blacks. In this case, blacks make up 20% of the population but only 10% of the jury pool. By the 80% rule, this difference would be too small to cause a presumption of discrimination even though whites are selected to be in the pool at a rate more than twice that of blacks (the ratio of the selection rates – 1.125%/0.5%).
The 80% RulePopulation / Pool / Selection rate
Whites / 80,000 / 900 / 1.125%
Blacks / 20,000 / 100 / 0.5%
Absolute rate / 20% / 10%
The problem becomes clear, if we examine the worst case scenario – when no blacks would be selected to be in the pool: the difference in the absolute rate is still not more than 20%, although the ratio of the selection rates is infinite.
The 80% RulePopulation / Pool / Selection rate
Whites / 80,000 / 1000 / 1.25%
Blacks / 20,000 / 0 / 0.0 %
Absolute rate / 20% / 0%
IV. Typical Statistical Strategy
- Plaintiff - must build “prima facia” case
- Show disparate impact
- Demonstrate that effect cannot be explained by typical legitimate factors
- Defense
- Data too broad
- Data too shallow
- Intent not shown
- Effect explainable by other factors
V. Social Science Used to Describe Context
- Price Waterhouse v Hopkins (1987)
- Empirical research on sex stereotyping is generally accepted
- Stereotyping can create discriminatory consequences
- Stereotypes about women shape perceptions of acceptable roles
- Sex stereotypes have demonstrably negative effects on women in work settings
- Conditions that promote stereotyping were present in petitioner's work setting
- Problem of "mixed-motive" cases