Title: Developing a Hiring System
1Developing a Hiring System
- OK, Enough Assessing
- Who Do We Hire??!!
2Summary of Performance-Based Hiring
- Understand performance expectations
- List attributes that predict performance
- Match attributes with selection tools
- Choose/develop each tool effectively
- Make performance-based decisions
3List of Critical Attributes
4Performance Attributes Matrix
5Who Do You Hire??
6Common Decision-Making Errors
- Switching to non-performance factors
- Succumbing to the Tyranny of the Best
- Reverting to intuition or gut feel
7Information Overload!!
- Leads to
- Reverting to gut instincts
- Mental Gymnastics
8Combining Information to Make Good Decisions
- Mechanical methods are superior to Judgment
approaches - Multiple Regression
- Multiple Cutoff
- Multiple Hurdle
- Profile Matching
- High-Impact Hiring approach
9Multiple Regression Approach
- Predicted Job perf a b1x1 b2x2 b3x3
- x predictors b optimal weight
- Issues
- Compensatory assumes high scores on one
predictor compensate for low scores on another - Assumes linear relationship between predictor
scores and job performance (i.e., more is
better)
10Multiple Cutoff Approach
- Sets minimum scores on each predictor
- Issues
- Assumes non-linear relationship between
predictors and job performance - Assumes predictors are non-compensatory
- How do you set the cutoff scores?
11How Do You Set Cut Scores?
- Expert Judgment
- Average scores of current employees
- Good employees for profile matching
- Minimally satisfactory for cutoff models
- Empirical linear regression
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13Multiple Cutoff Approach
- Sets minimum scores on each predictor
- Issues
- Assumes non-linear relationship between
predictors and job performance - Assumes predictors are non-compensatory
- How do you set the cutoff scores?
- If applicant fails first cutoff, why continue?
14Multiple Hurdle Model
Finalist Decision
Background
Interview
Test 1
Test 2
Pass
Pass
Pass
Pass
Fail
Fail
Fail
Fail
Reject
15Multiple Hurdle Model
- Multiple Cutoff, but with sequential use of
predictors - If applicant passes first hurdle, moves on to the
next - May reduce costs, but also increases time
16Profile Matching Approach
- Emphasizes ideal level of KSA
- e.g., too little attention to detail may produce
sloppy work too much may represent
compulsiveness - Issues
- Non-compensatory
- Small errors in profile can add up to big mistake
in overall score - Little evidence that it works better
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19How Do You Compare Finalists?
- Multiple Regression approach
- Y (predicted performance) score based on formula
- Cutoff/Hurdle approach
- Eliminate those with scores below cutoffs
- Then use regression (or other formula) approach
- Profile Matching
- Smallest difference score is best
- ? (Ideal-Applicant) across all attributes
- In any case, each finalist has an overall score
20Making Finalist Decisions
- Top-Down Strategy
- Maximizes efficiency, but also likely to create
adverse impact if CA tests are used - Banding Strategy
- Creates bands of scores that are statistically
equivalent (based on reliability) - Then hire from within bands either randomly or
based on other factors (inc. diversity)
21Applicant Total Scores 94 93 89 88 87 87 86 81 81
80 79 79 78 72 70 69 67
22Limitations of Traditional Approach
- Big Business Model
- Large samples that allow use of statistical
analysis - Resources to use experts for cutoff scores, etc.
- Assumption that youre hiring lots of people from
even larger applicant pools
23A More Practical Approach
- Rate each attribute on each tool
- Desirable
- Acceptable
- Unacceptable
- Develop a composite rating for each attribute
- Combining scores from multiple assessors
- Combining scores across different tools
- A judgmental synthesis of data
- Use composite ratings to make final decisions
24Improving Ratings
- Use intuitive rating system
- Unacceptable
- Did not demonstrate levels of attribute that
would predict acceptable performance - Acceptable
- Demonstrated levels that would predict acceptable
performance - Desirable
- Demonstrated levels that would predict
exceptional performance
25Categorical Decision Approach
- Eliminate applicants with unacceptable
qualifications - Then hire candidates with as many desirable
ratings as possible - Finally, hire as needed from applicants with
acceptable ratings - Optional weight attributes by importance
26Sample Decision Table
27Using the Decision Table 1 More Positions than
Applicants
28Using the Decision Table 2 More Applicants than
Positions
29Numerical Decision Approach
- Eliminate applicants with unacceptable
qualifications - Convert ratings to a common scale
- Obtained score/maximum possible score
- Weight by importance of attribute and measure to
develop composite score
30Numerical Decision Approach
31Numerical Decision Approach
32Summary Decision-Making
- Focus on critical requirements
- Focus on performance attribute ratings
- Not overall evaluations of applicant or tool
- Eliminate candidates with unacceptable composite
ratings on any critical attribute - Then choose those who are most qualified
- Make offers first to candidates with highest
numbers of desirable ratings