Title: Baum, 1974
1Baum, 1974
2Describes basic matching law
- P1/P1P2 R1/R1 R2
- Revises to P1/P2R1/R2
- Notes that Staddon (1968) found can log it out to
get straight lines - Also adds two parameters k and a (we will use b
and a) - New version Log(P1/P2) alog(R1/R2) log b
- P1/P2 b(R1/R2)a
- Where a undermatching
- B bias
- What is b and a? bias and undermatching
3What is Undermatching?
- Fantino, Squires, Delbruck and Peterson (1972)
defined - Any preference less extreme than the matching
relation would predict - Systematic deviation from the matching relation
for preferences toward both alternatives, in the
direction of indifference - What would be indifference? What value of the
slope of the line? - What would we call it when the slope of a of the
line fitted according to equation is LESS THAN
one? - Greater than one?
- in a sense, is a discrimination or sensitivity
model tells us how sensitive the animal is to
changes in the (rate) of reward between the two
alternatives
4This is an example of almost perfect matching
with little bias. Why?
This is an example of undermatching with some
bias towards the RIGHT feeder. Why?
This is an example of overmatching with little
bias. Why? Is overmatching BETTER than matching
or undermatching? Why or why not?
5Factors affecting the a or undermatching
parameter
- Discriminability between the stimuli signaling
the two schedules - Discrminability between the two rates of
reinforcers - Component duration
- COD and COD duration
- Deprivation level
- Others?
6Bias
- Definition magnitude of preference is shifted to
one reinforcer when there is apparent equality
between the rewards - Unaccounted for preference
- Is experimenters failure to make both
alternatives equal! - Calculated using the intercept of the line
- Positive bias is a preference for R1
- Negative bias is a preference for R2
7Four Sources of Bias
- response bias
- discrepancy between scheduled and obtained
reinforcement - qualitatively different reinforcers
- qualitatively different reinforcement schedules
8Response bias
- Difficulty of making response one response key
harder to push than other - Qualitatively different reinforcers Spam vs.
cream brulee - Color
- Side of box, etc
9Difference between scheduled and obtained rate of
reinforcement
- Animal pauses, lowers obtained reinforcement even
though programmed at higher rate (delivery
dependent on responding!) - Thus matching law applies only to obtained
reward, - if large discrepancies between obtained and
scheduled, must use obtained to see animals
preference - If use wrong version of R1 and R2, can created
LARGE bias rather than changes in reward
sensitivity - Other data suggests that this may not be true
- animals attend to programmed or scheduled reward
in social situations - May react because they are not getting what they
expected or thought they were supposed to get
10Qualitatively Different Rewards
- Matching law only takes into consideration the
rate of reward - If qualitatively different, must add this in
- So P1/P2 V1/V2(R1/R2)a
- Must add in additional factor for qualitative
differences - Interestingly, can get u-shaped functions rather
than hyperbolas this way move to economic models
that allow for U-shaped rather than hyperbolic
functions.
11Qualitatively different reinforcement schedules
- Use of VI versus VR
- Animal should show exclusive choice for VR, or
minimal responding to VI - Can control response rate, but not time
- Not match in typical sense, but is still
optimizing
12So, does the matching law work?
- Matching holds up well under mathematical and
data tests - some limitations for model
- tells us about sensitivity to reward and bias
- now where would social interactions fit into
this?
13Now, can use it as a model to test against!
- Lets add a slightly different model
- Optimization models or Idea Free Distribution
- Same idea, just with groups
14Optimal Foraging/Ideal Free Distribution
- A model of optimal foraging which describes the
relative distribution of foraging animals between
patches differing in resource density - In its simplest form, the ideal free distribution
predicts that the relative number of animals in
each of two patches (N1 and N2 ) will be related
to the relative resource density of the two
patches (A1 and A2). - N1/N2 A1/A2
15Similarity to the Matching Law
- It its logarithmic form, the ideal free
distribution is described by - log (N1/N2) a log (A1/A2)
log b - a represents the degree of sensitivity of the
group behavior to differences in resource
distribution. - b represents a greater (or lesser) number of
animals than expected in a patch for reasons
unrelated to resource distribution. (e.g.,
predation danger between patches). -
- Equation 1 and Equation 2 are obviously quite
similar, and a number of recent authors have in
fact explored the similarities between the models
16Generalized Matching Law Ideal Free
Distribution?
- The competition dimension is a particularly
critical difference between the models because
competition drives predictions of ideal free
distribution. - Despite the formal similarities, some important
differences - the matching law describes the behavior of a
single animal exposed to two sources of
reinforcement, - while the ideal free distribution describes the
distribution of multiple animals between two
resource patches. - The presence of multiple animals introduces a
dimension of competition into the ideal free
distribution that is not found in the matching
law.
17Differing Predictions
- Consider a foraging environment with two patches
producing resources at different rates. - When a single animal is present, foraging at the
high-rate patch is clearly the better strategy
(assuming low rates of changeover between
patches). - Changes when multiple animals present
- increase in the number of animals present in a
patch increases competition for resources, - This, in turn, decreases the rate at which an
individual animals acquires the resource
(individual capture rate).
18Individual vs. group
- Under such conditions, an individual can increase
its capture rate by adopting a contrarian
strategy and foraging in the patch with fewer
resources but fewer competitors as well. - The system will be at equilibrium when capture
rates for individuals at each patch are equal. - Assuming that all animals are equally good
competitors, this will occur when the relative
number of animals in a patch equals (or matches)
the relative rate at which the patch produces
resources.
19Interesting asymmetry between the models.
- A group of animals each individually following
the matching law would also, over the long run,
adhere to the ideal free distribution. - The opposite is not true, though. All
individuals may not match. - It is possible for a group of animals to follow
the ideal free distribution but for few or none
of the individual animals to adhere to the
matching law. - This would occur, for example, if animals were
distributed between patches in proportion to
resource density but did move between patches.
20Competition and Matching?
- Competition clearly is an important difference
between the models. - Competition itself has been widely studied,
especially in relation to the ideal free
distribution - However, competition has rarely been studied
explicitly in the context of the matching law. - These questions might be addressed by introducing
an element of competition into a matching
paradigm.
21How might sensitivity change?
- Introduction of a competitor might serve as a
distraction resulting in a decreased
sensitivity to reinforcement (see Baum, 1974). - Alternatively, introduction of a competitor might
increase the importance of sensitivity to
reinforcement because presence of a competitor
reduces the individual capture rate.
22How might bias change?
- It is quite possible that bias would not change
at all. - Alternatively, the presence of a competitor might
cause a subject to remain in one or the other
resource patch independent of reinforcement rate,
which would be reflected in an increased bias.
23Now lets look at OUR rats
- What kind of data are we collecting?
- Matching law data
- IDF data
- Can we determine individual rat
- A parameter, sensitivity to reward or Matching
- Bias
- Can we determine ideal free distribution for the
group? - What kinds of differences should we see?
- Why?
24Reading for Next WeekBaum and Kraft
- Examines this competition issue
- Might see REAL similarities between their
research and ours - Be prepared to make some predictions regarding
your rats