Title: FUR XII, LUISS, Roma, June 24, 2006
1- FUR XII, LUISS, Roma, June 24, 2006
- Financially Stimulated Effort Hits
- Individual Cognitive Constraints
- Evidence From a Forecasting Task with Varying
Working Memory Load - by Ondrej Rydval, CERGE-EI, Prague
- Acknowledgements invaluable comments
especially from Andreas Ortmann and Nat Wilcox,
financial support from Grant Agency of the Czech
Republic and Hlavka Foundation - COMMENTS WELCOME!!!
2MOTIVATION
- I examine how performance-contingent financial
incentives interact with intrinsic motivation and
cognitive constraints in determining individual
differences in cognitive performance. - Camerer and Hogarth (1999, JRU) propose a
capital-labor framework describing how financial
incentives may interact in non-trivial ways with
intrinsic motivation to induce cognitive effort
(labor), and how cognitive effort productivity
may vary across individuals due to their
different cognitive constraints (capital). - Even if salient financial incentives induce high
effort, both financial and cognitive resources
may be wasted for individuals whose cognitive
constraints inhibit performance improvements. - This prediction, if warranted, calls for
attention to individual cognitive constraints in
designing efficient incentive schemes in firms,
experimental settings, and elsewhere. - The next slide shows the main blocks of the
capital-labor framework
3Here is how one can think of the capital-labor
framework. I briefly outline the literature and
the main research questions
financial incentives
Camerer Hogarth (1999)
Cognitive Production
Labor theory of cognition
Capital-Labor Framework
cognitive performance
Crowding out?
intrinsic motivation
Benabou Tirole trilogy, Cacioppo et al. (1996)
cognitive effort
cognitive capital
Degree of complementarity?
Labor theory of cognition Smith Walker (1993),
Wilcox (1993)
Experimental psychology Engle Kane (2004)
4DESIGN
- I provide an initial empirical test of the
capital-labor framework, focusing on the
complementarity of cognitive capital and effort. - To impose theoretical structure on the framework,
one can broadly think of cognitive constraints as
a vector composed of general cognitive capital
and task-specific capital. - Drawing on contemporary cognitive psychology,
I measure individual differences in general
cognitive capital by a working memory span test
a strong and robust predictor of general fluid
intelligence as well as performance in cognitive
tasks requiring controlled information
processing. - Since pre-existing task-specific capital (think
of expertise) is vital for performance in many
field cognitive tasks but is hard to measure,
I intentionally minimize its potential relevance
by designing a controlled laboratory experiment
where working memory is itself the main component
of task-specific capital, aside expertise
acquired endogenously through on-task learning. - The next slide shows what working memory is and
why it is a useful measure of individual
differences in cognitive capital
5- Working memory is a domain-general ability to
control and rapidly reallocate attention among
competing cognitive uses, over and beyond
domain-specific short-term memory capacity.
People with high working memory are better able
to code and store a limited amount of
task-relevant information and keep this
information accessible during the execution of
complex, information-interfering cognitive and
behavioral tasks. - A typical working memory span test has two
interacting components - - processing component e.g. calculating simple
equations (9/3)-2? - - memory component e.g. memorizing a sequence
of letters - In the test, subjects observe several sequences
with alternating processing and memory components
(sequences have various length). - After a given sequence, subjects must recall the
memory components in correct order (e.g.
letters). - Throughout the test, subjects must also maintain
accuracy/speed on the processing component. - Subjects working memory score depends on the
number of memory components recalled in correct
order. - Note A typical short-term memory test only has
the memory component.
6DESIGN cont.
- To identify the impact of working memory on
cognitive performance, I supply external memory
to subjects as a treatment - In a computerized time-series forecasting task,
two screens with forecast-relevant information
are presented either concurrently or sequentially
gt two between-subject treatments. - HYPOTHESIS to be tested Since the Sequential
(Concurrent) treatment offers less (more)
external memory to subjects and hence features
a higher (lower) working memory load, working
memory should be a stronger (weaker) determinant
of forecasting performance, after controlling for
other between-subject cognitive, motivational and
personality differences. - The next several slides show how I experimentally
implemented the time-series forecasting task and
in particular the Sequential and Concurrent
treatments
7Time-series forecasting task (a la Klayman, 1988)
Subjects repeatedly forecast Omega, a sum of
Signal, Repeating pattern and Error. They observe
8-period history windows of Signal and Omega (see
the green columns). Subjects are told that to
accurately forecast Omega, they need to discover
the Repeating (seasonal) pattern from successive
values of Omega and Signal by subtracting them.
The unobserved, random Error makes this task
harder but subjects know the Error distribution
(uniform discrete). Subjects forecast next-period
value of Omega. To be able to do that (as Signal
is unpredictable), they are shown next-period
value of Signal. Concurrent treatment subjects
observe Signal and Omega on one
screen. Sequential treatment subjects observe
Signal and Omega on two successive
screens. Financial incentives to forecast
accurately are high subjects can earn up to
70-80 PPP Dollars.
8Here is what Concurrent treatment subjects
observe on a typical screen (for period 15)
subjects combine Signal and Omega values to
forecast period-16 Omega.
Current period Current period
15 of 100 Time remaining 15 Time remaining 15
Signal Omega
Period 8 10 64
Period 9 20 50
Period 10 10 24
Period 11 40 90
Period 12 10 36
Period 13 30 52
Period 14 20 66
Current period 15 10 48
Next period 16 30 ?
9By contrast, Sequential treatment subjects first
observe a screen with Signal values only they
memorize Signal values and wait for the
corresponding Omega screen
Current period Current period
15 of 100 Time remaining 10 Time remaining 10
Signal
Period 8 10
Period 9 20
Period 10 10
Period 11 40
Period 12 10
Period 13 30
Period 14 20
Current period 15 10
Next period 16 30
10and once the corresponding Omega screen appears,
Sequential treatment subjects combine the
previously memorized Signal values with the
observed Omega values to forecast period-16 Omega.
Current period Current period
15 of 100 Time remaining 10 Time remaining 10
Omega
Period 8 64
Period 9 50
Period 10 24
Period 11 90
Period 12 36
Period 13 52
Period 14 66
Current period 15 48
Next period 16 ?
11Forecasting performance absolute forecast errors
The graph below shows 12-period moving averages
of absolute forecast errors, averaged across
subjects in each forecasting period, separately
for the Sequential and Concurrent treatment.
Sequential (average)
absolute forecast errors
Concurrent (average)
EARLY
LATE
12Forecasting performance absolute forecast errors
The Concurrent treatment (with lower working
memory load) has lower absolute forecast errors
(on average) throughout the task but
statistically significant learning occurs in both
treatments between EARLY and LATE stages of the
task.
Sequential (average)
absolute forecast errors
Concurrent (average)
EARLY
LATE
13Heterogeneity in forecasting performance
Same graph, with 10th and 90th percentiles added
to averages, reveals substantial across-subject
heterogeneity in absolute forecast errors in both
treatments. As hypothesized, working memory
should better explain the heterogeneity in the
Sequential treatment (with higher working memory
load). I focus on the LATE stage.
90th percentiles for Concurrent (o) and
Sequential ()
absolute forecast errors
Sequential (average)
Concurrent (average)
10th percentiles for Concurrent (o) and
Sequential ()
EARLY
LATE
14Correlations between forecasting performance and
working memory
Concurrent treatment spearman -0.0006
(p0.997) pearson -0.2208 (p0.155)
As hypothesized, working memory is much stronger
negatively correlated with subjects LATE
absolute forecast errors in the Sequential
treatment (with higher working memory load). By
contrast, other measured cognitive, motivational,
personality and demographic individual
differences cannot explain between-subject
performance variation in the Sequential
treatment. I nevertheless control for these in
the formal analysis that follows
LATE absolute forecast error
working memory
LATE absolute forecast error
Sequential treatment spearman -0.3028
(p0.048) pearson -0.4540 (p0.002)
working memory
15Testing the hypothesis that working memory is a
stronger determinant of forecasting performance
in the Sequential treatment
- I regress LATE absolute forecast error on
working memory and other potential determinants
of forecasting performance short term memory,
math ability, intrinsic motivation, etc. The
figure below shows only several selected
specifications as explained by the labels. - As some subjects performance is top-bounded, I
use Censored Least Absolute Deviations (CLAD)
estimator. So far I have 43 observations per
treatment (students from Prague non-selective
universities). - The bars are coefficient estimates for working
memory. The estimates for the Sequential
treatment generally have economically meaningful
magnitude. A yellow bar indicates that working
memory has a significant impact on forecasting
performance (at 10 level). A green bar indicates
that, in addition, the impact of working memory
is significantly larger in the Sequential
treatment (at 10 level).
Estimation with working memory only
with short term memory and math ability added
with intrinsic motivation further added
with EARLY performance added as a proxy for
intrinsic forecasting ability (covariates
partialled out of the proxy)
same, but with an alternative working memory
measure that has short term memory and math
ability partialled out
Estimate for the hardest forecasting season only,
with covariates added
same, but with EARLY performance proxy added
16Testing the hypothesis that working memory is a
stronger determinant of forecasting performance
in the Sequential treatment
- Conclusion The impact of working memory
(cognitive capital) on forecasting performance is
clearly stronger in the Sequential than in the
Concurrent treatment - but establishing this result more robustly may
require more observations.
Estimation with working memory only
with short term memory and math ability added
with intrinsic motivation further added
with EARLY performance added as a proxy for
intrinsic forecasting ability (covariates
partialled out of the proxy)
same, but with an alternative working memory
measure that has short term memory and math
ability partialled out
Estimate for the hardest forecasting season only,
with covariates added
same, but with EARLY performance proxy added
17CONCLUSION / ROAD AHEAD
- Working memory, or rather lack thereof, clearly
presents a cognitive constraint on forecasting
performance. - In additional treatments (not completed), the
working memory constraint is interacted with
variation in financial incentives by offering
subjects to purchase external memory at
different relative prices subjects start in the
harder Sequential treatment but can purchase
switching to the easier Concurrent treatment. - What individual characteristics, beside working
memory, will determine buying behavior? Will more
external memory be bought under higher financial
incentives? - In each period, subjects also bet on the quality
of their forecasts, prior to placing a forecast.
Financial return to betting is decreasing in
subjects absolute forecast error. - Especially psychologists have argued that
performance in cognitive tasks is likely to be
also affected by peoples confidence in their
abilities. Bets provide a measure of confidence
in ones forecasting abilities. Initial results
suggest that working memory affects how quickly
bets respond to improvements in forecasting
accuracy. - I will next investigate a two-equation system
where both bets and performance are treated as a
result of dynamic learning processes, using
exogenous variation in the quality of forecasting
feedback to identify the impact of bets on
performance.