Abstract concepts are said to be the basis of higher
order cognition in human, and no concept is more important than the
concept of identity. William James (1890/1950) was perhaps the first to
note that our "sense of sameness is the very keel and backbone of our
thinking." (p. 459). Over the past century, the ability to judge whether
items are the same or different has been a central focus
in cognitive development, cognition, and comparative cognition (e.g.,
Daehler & Bukatko, 1985; Mackintosh, 2000; Shettleworth, 1998; Thompson
& Oden, 2000). For example, abstract thinking is considered to be the
basis of equivalence operations in math (e.g., "item I is the same as
item J"), conservation tasks, and may be a necessary prerequisite for
learning language (e.g., Marcus et al., 1999; Piaget & Inhelder,
1966/1969; Siegler, 1996). This thinking is abstract because it is based
on rules which allow subjects’ judgments to transcend the training
stimuli and is therefore called higher order. Abstract-concept learning
is the focus of this article. Issues of testing and verifying
abstract-concept learning with animals in same/different (S/D) and
matching-to-sample (MTS) tasks are discussed. In addition, we review
some of the research on abstract-concept learning.
In cognitive and comparative psychology,
abstract-concept learning is, unfortunately, often confused with
categorization because both are frequently referred to as concept
learning. To clarify, there are two types of categorization, 1) natural
concepts, which are accounted for by stimulus generalization based on
specific features, and 2) associative concepts, which are accounted for
by second-order conditioning. Natural concept learning (also called
perceptual concept learning) involves categorizing (sorting) stimuli
(e.g., those found in nature like pictures of birds, flowers, people, or
artificial ones like shapes) based on stimulus perceptual similarity
into appropriate categories (e.g., Herrnstein, Loveland, & Cable 1976;
Medin, 1989; Wasserman, Kiedinger, & Bhatt, 1988). Associative concept
learning (also called functional concept learning) involves categorizing
stimuli based on a common response or outcome regardless of perceptual
similarity into appropriate categories (e.g., Urcuioli, 2006; Vaughan,
1988; Wasserman, DeVolder, & Coppage, 1992).
Abstract-concept learning is different.
Abstract-concept learning cannot be accounted for by these
generalization processes. Abstract-concept learning involves judging a
relationship between stimuli based on a rule (e.g., identity,
difference, oddity, greater than, addition, subtraction). The rule is
considered to be abstract when it can be applied to novel stimuli.
Since Thorndike’s (1911/1998) experimental studies in
comparative psychology, theories of animal intelligence have focused on
cross-species comparisons in their ability to learn abstract concepts
(e.g., D’Amato, Salmon, & Colombo 1985; Mackintosh, 1988; Premack,
1983b; Thompson, 1995). Abstract-concept learning has been the
centerpiece of theories of animal intelligence because it represents
higher-order learning. In terms of hierarchies of learning abilities,
categorization is considered to be a lower level of learning than
abstract-concept learning. Many theories of animal intelligence have
been centered on levels of learning (e.g., Herrnstein, 1990; Thomas,
1980, 1996; Thompson & Oden, 2000). As a result, nonhuman animals
believed to form abstract concepts were thought to be more intelligent
than those presumed to not reach the higher level (e.g., Premack, 1978,
1983a).
The focus on hierarchies of learning abilities has
produced an emphasis on discovering which species (i.e., who)
have or do not have a particular ability. This approach is akin to the
cognitive-modular approach, which argues that failure to pass a test (to
attain a higher level) is evidence that a species lacks the requisite
cognitive module to do so (cf., Tooby & Cosmides, 2000). Consequently,
this focus on who has resulted in single experiments, often with limited
parameter manipulation, to demonstrate whether or not a species has the
ability to learn abstract concepts (generally) and thereby determine if
it has inherited the requisite cognitive module. In essence, this
endeavor boils down to a search for qualitative differences. The problem
with such an all-or-none approach is that one assumes that the
procedures adequately assessed the abilities of each species. Some
procedures do not adequately fit the predispositions of the species and
can create what appear to be qualitative species differences based on,
for example, the level of transfer in abstract-concept learning tasks.
The approach is tantamount to proving that transfer failure is a
cognitive inadequacy not a procedural inadequacy. The problem faced by
experimenters is to discover procedures that are adequate for testing
abstract-concept learning. Hence, it becomes difficult to conduct the
task variations (called systematic variation) to insure that some
alleged cognitive inability is really lacking (but see Bitterman, 1965,
1975; Kamil, 1988). That is, to compare the functional relationship of
some variable across species one needs to know whether performance
depends on the same variable for the species in question. If the answer
is unknown, then judgment should be suspended. Doing otherwise is trying
to prove the null hypothesis (Macphail, 1985).
A different approach to abstract-concept learning is
the general-process account. There are, to be sure, degrees of
generality. A strong version of the general-process view would be that
all vertebrates have the abstract-concept learning ability, regardless
of whether the ability evolved through their homology or homoplasy. A
somewhat weaker version of the general-process view would be that a wide
variety of animals (e.g., food storing birds) have the ability (cf.
Papini, 2002). For sure, there will be differences in abstract-concept
learning abilities across species, but the key, in our view, is to
discover whether or not there are conditions that reveal the generality
in their eventual ability to fully learn an abstract concept. Generality
can be revealed by exploring how abstract-concept learning works
under various parameter manipulations. This approach can ultimately
reveal whether a difference in performance across species is a
qualitative difference (i.e., the presence or absence of a cognitive
module) or a quantitative difference (i.e., a general process).
A focus on how instead of who should be
productive in discovering the mechanisms that underlie abstract-concept
learning in a variety of evolutionarily diverse species. This approach
to studying abstract-concept learning is supported by positive transfer
results from phylogenetically diverse species which were once thought to
be incapable of S/D abstract-concept learning (i.e., a qualitative
absence in this cognitive module), including language-naïve chimpanzees
(Thompson, Oden, & Boysen, 1997), baboons (Bovet & Vauclair, 2001),
capuchin monkeys (Wright, Rivera, Katz, & Bachevalier, 2003), rhesus
monkeys (Wright, Santiago, Urcuioli, & Sands, 1984), parrots
(Pepperberg, 1987), and pigeons (Katz & Wright, 2006). Additional
studies have found evidence consistent with S/D abstract-concept
learning, however, due to procedural limitations, the results are open
to alternative explanations. The issues we discuss next center around
the criteria that we believe are important to achieve in order to rule
out alternative explanations.
Importance of Abstract-Concept Learning Criteria
Over the past 30 years the criteria for
abstract-concept learning has become a moving target (Cook 2002;
Premack, 1978; Wright, 1991; Wright & Katz, 2006). As new findings have
been revealed new requirements have been imposed. In this section we
present criteria that we and others believe are important to establish
abstract-concept learning because they can help rule out alternative
explanations based on the novelty of the stimuli (criteria 1 and 2) and
inconclusive results (criterion 3).
1. Transfer stimuli must be novel. Transfer
stimuli need to be novel to release behavior from a prior
reinforcement history that could confound transfer performance. If
transfer stimuli are not novel, then such stimuli would not function
as a test of abstract-concept learning. Furthermore, transfer
stimuli should be dissimilar (i.e., novel) from training stimuli to
rule out stimulus generalization as the sole basis of transfer
performance. Thus, it is important to carefully select transfer
stimuli that do not foster stimulus generalization. Additionally,
novel transfer stimuli should not be combined with training stimuli
in a test trial because the training item may influence how to
respond during transfer. In such cases, accurate transfer
performance may not be due to abstract-concept learning but to some
other strategy (e.g., based on exclusion, Kastak & Schusterman,
2002).
2. Transfer stimuli should not be repeated. One
consequence of repeating transfer stimuli is subjects may rapidly
learn how to accurately respond to these repeated test stimuli
(e.g., Premack, 1978; Thompson & Oden, 2000; Wright, Cook, Rivera,
Sands, & Delius, 1988). Criterion 2 is more easily achieved than it
once was with the proliferation of computers allowing for diversity
in stimuli. However, in cases in which stimuli need to be repeated
because of the limited number of available novel stimuli (e.g.,
Wright & Delius, 2005), trial 1 performance should be presented
and/or the appropriate statistical tests should be conducted to show
stable performance across repetitions of the transfer stimuli before
repetitions may be averaged.
3. Full abstract-concept learning in which
baseline performance is equal to transfer performance should be
achieved. To explain, assume baseline performance is 90%, transfer
performance is 70%, and chance is 50%. Are we to conclude that the
abstract concept controls responding part of the time and some other
process, perhaps stimulus generalization, controls responding the
remainder of the time? Or that either process could be exclusively
controlling responding? The interpretation is unclear. If subjects
have really learned the abstract concept, then there ought to be
some set of conditions in which they could perform as accurately
with novel stimuli as with the familiar training stimuli. Although
full abstract-concept learning may be difficult to obtain, in our
view it is a necessary requirement to make a more definitive
conclusion concerning species ability. We feel this requirement, if
the right parameter is manipulated, can be obtained.
Importance of Two-Item Same/Different Discrimination
Figure 1. An example of a
different and same display each in a 3 x 2 array used in
Cook, Katz, & Cavoto (1997). |
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Figure 2. Examples of multi-item
displays used in Young & Wasserman (1997), ranging from
a same (OD/16S) to different display (16D/0S). The
labels represent how many items in the display were
different and same. Note. From Figure 5, "Entropy
detection by pigeons: Response to mixed visual displays
after same-different discrimination training," by M. E.
Young and E. A. Wasserman, 1997, Journal of Experimental
Psychology: Animal Behavior Processes, 23, p. 163.
Copyright 1997 by the American Psychological
Association. Adapted with permission. |
|
Another issue, specific to conclusions concerning
abstract same/different concept learning, is the use of two-items in a
stimulus display. Any species that is purported to be able to learn a
S/D concept should be able to do it with two items. When we developed
our procedure for pigeons and first presented our findings at the
International Conference on Comparative Cognition in 2001, only one
published study had found evidence that pigeons could learn an abstract
S/D concept with two-item displays to any high degree of accuracy (72%;
Santiago & Wright, 1984). Since that time other articles have been
published showing some support for two-item S/D concept learning in
pigeons (Blaisdell & Cook, 2005; Cook, Kelly, & Katz, 2003). Like the
Santiago & Wright (1984) study both of these studies found partial
transfer. Partial transfer, as opposed to full transfer, is suggestive
and encouraging but is inconclusive due to the possibility that multiple
cues are controlling behavior (criterion 3). The interpretation of the
results from Blaisdell & Cook (2005) is further complicated by retesting
transfer with the same stimuli (without statistical support to rule out
learning of the transfer stimuli, criterion 2), questionable novelty of
some colors tested during transfer (criterion 1), and the use of two
stimulus pairs presented simultaneously (i.e., 4 stimuli) in the
procedure. This latter complication may be on a slightly different
level, provided the pigeons were doing what people would do if they were
instructed to "choose the pair with two different stimuli."
Psychophysically, this would be a two-alternative forced choice task
(2AFC), whereas the single pair case would be analogous to a
psychophysical Yes-No task. Detectability in these two tasks is related
by the square root of two, with the 2AFC task being easier than the
Yes-No task (Green & Swets, 1966; Smith & Duncan, 2004). The only real
potential problem with the S/D task with two pairs is whether the
pigeons are doing something other than what humans would do in this task
(which is difficult to know without comparative data).
Because abstract-concept learning with the two-item
S/D task has remained elusive over the past 30 years, researchers have
used multi-item S/D discriminations that vary from the traditional
two-item S/D discrimination (e.g., for a current review of this work see
Cook & Wasserman, 2006). These discriminations have involved stimulus
displays that usually involve more than two items (e.g., Cook, Katz, &
Cavoto, 1997; Gibson, Wasserman, & Cook, 2006; Young & Wasserman, 1997).
It is important to distinguish between two-item and multi-item S/D
discriminations because the underlying mechanisms used for stimulus
abstraction may be different (cf., Mackintosh, 2000). For a point of
clarification, multi-item displays like those shown in Figure 1 often
contain two unique items (e.g., U and +) but are not considered a
two-item S/D discrimination because they repeat items (e.g., +) within a
display, which results in a variety of potential mechanisms that may
control behavior (e.g., global features that promote oddity or entropy).
Consider findings from Cook et al. (1997) using
visual search displays in which pigeons indicate whether a target item
(e.g., the U in the left panel of Figure 1) is present (a different
trial) or not (a same trial). This discrimination is based in
part on an oddity mechanism (Cook 1992; Katz & Cook, 2000, 2003). For
example, Cook et al. (1997) demonstrated that as the number of locations
simultaneously used in the visual search displays decreased from 6 (3 x
2 array) to 4 (2 x 2 array) to 3 (1 x 3 array) the pigeons’ overall
performance decreased respectively from 81.5% to 78.3% to 74.7% due to
the target item becoming less odd on different trials. Pigeons
were never tested with displays containing two stimuli (i.e., 1 x 1
array, the two-item discrimination) and it remains unclear whether the
birds could accurately discriminate same from different
displays under such conditions. (For a follow-up study consistent with
this interpretation see Cook & Wasserman, 2006). Next, consider findings
from Wasserman, Young, and colleagues. In their entropy-based S/D
discrimination, pigeons typically indicate whether repeated items in a
multi-item array are the same or different based on the
number of repeated items in a display (e.g., Young & Wasserman, 1997).
For example, as the number of different items decreased from 16 unique
items (16D/0S; max entropy) to 16 identical items (0D/16S; minimum
entropy) different responding decreased due to the decrease in entropy
(see Figure 2). In follow-up studies, to explore the role of entropy in
the task, the number of simultaneous locations used to present items in
an array was systematically decreased (similar to that described for
Cook et al., 1997) from sixteen to two (i.e., a two-item
discrimination). The result of decreasing the number of items in an
array is a decrease in the amount of entropy. When the number of items
was reduced to two per trial, performance was equivalent to chance
(Young, Wasserman, Hilfers, & Dalrymple, 1999) or pigeons’ responded
same (Young, Wasserman, & Garner, 1997). These findings show the
pigeon’s failure to respond different to small entropy values. In
summary, in the cases discussed, two-item performance has either not
been tested (Cook et al. 1997) or pigeons do not accurately discriminate
displays of two items (Young, Wasserman, & Garner, 1997; Young et al.,
1999).
In our opinion, one needs to train and test subjects
with displays containing only two items so that what has been called
true or standard S/D concept learning can be tested (Mackintosh,
2000; Premack, 1983a). S/D concept learning is "true" when two items are
present because it minimizes possible global perceptual features (e.g.,
oddity) that might confound the interpretation. Additionally, if the
learned behavior is really based upon discriminating a difference
between objects, then what is the rationale for it not applying to the
simplest of all cases – two objects? The multi-item array experiments do
not produce true S/D concept learning. Such experiments do indicate
oddity and entropy-based strategies (Gibson, Wasserman, & Cook, 2006;
Wasserman, Young, & Cook, 2004). But, for all the reasons just
discussed, the interpretation of what the subjects are doing in the task
is simplest when there are just two items and the subject judges whether
they are same or different.
Importance of Parametrically Varying Set-Size: Set-Size Functions
Our approach to S/D concept learning has been to
adhere to what we believe are the critical issues for abstract-concept
learning and empirically rule out alternative explanations to
abstract-concept learning (see Wright & Katz, 2006). We wanted to
compare, as directly as possible, S/D concept learning of monkeys and
pigeons. But since there was no clear indication from the literature as
to the number of training pairs that might accomplish this goal, we made
the number of training pairs a parameter of the experiment. Thus, we
varied set size, the number of items used to construct the training
pairs. Several studies had shown indications of a set-size effect on
abstract-concept learning (e.g., Moon & Harlow, 1955; Overman & Doty,
1980; Weinstein, 1941; Wright et al., 1988), but none had studied the
effects of a substantial range of set size on abstract-concept learning.
We studied the effects of set size on
abstract-concept learning from 8 to 128 items for capuchin monkeys
(Wright, Rivera, Katz, & Bachevalier, 2003) and rhesus monkeys (Katz,
Wright, & Bachevalier, 2002), and from 8 to 1024 items for pigeons (Katz
& Wright, 2006). These comparative experiments were conducted with the
same training pairs, testing pairs, choice responses, visual-angles of
the displays, and performance criteria, providing one of the closest
comparisons across species as diverse as monkeys and pigeons on S/D
abstract-concept learning. In our S/D procedure the subjects were
presented with two pictures and a white box (see Figure 3 and its
caption for more details). If the pair of pictures were the same
then a response (touch/peck) to the lower picture is correct. If the
pair of pictures were different then a response to the white box
was correct. Subjects were first trained with a small set size of 8
items (see Figure 4). There were 100 trials in a session (50 same
and 50 different trials). After reaching the performance
criterion, they were then transfer tested with novel items. The set size
was then increased to 16, 32, 64, and 128 (and for pigeons 256, 512, and
1024) items with subsequent transfer tests at each set-size expansion
(except at 16). Each transfer test lasted six sessions and contained 90
baseline (training stimuli) and 10 transfer trials. Transfer trials were
constructed from novel items (pictures) never before seen by the pigeons
(criterion 1). Each transfer item was tested once to avoid any learning
effects that might occur if they had been repeated (criterion 2). The
testing items were selected to be dissimilar from the training items and
one another (criterion 1; many of these items can be seen in Wright &
Katz, 2006).
Figure 3. Examples of a two-item
same and different display used with capuchin monkeys,
rhesus monkeys, and pigeons. The examples are
proportional to the actual displays. The display sizes
were smaller for pigeons to equate visual angle across
species. Rhesus monkeys and pigeons were required to
first make observing responses (touches or pecks) to the
upper picture before they were presented simultaneously
the two pictures and white rectangle permitting a choice
(left panel). Capuchin monkeys were not required to make
this initial observing response requirement (right
panel). In either procedure, a touch or peck to the
lower picture was correct on same trials and a touch or
peck to the white rectangle was correct on different
trials. After a choice response, displays were
extinguished, correct choices rewarded, and a 15-s
intertrial interval separated trials. Thus, except for
the initial observing response, the sequence of events
was identical across species. Note. From Figure 1,
"Mechanisms of same/different abstract-concept learning
by rhesus monkeys (Macaca mulatta)," by J. S. Katz, A.
A. Wright, and J. Bachevalier, 2002, Journal of
Experimental Psychology: Animal Behavior Processes, 28,
p. 361. Copyright 2002 by the American Psychological
Association. Adapted with permission. |
|
Figure 4. The initial 8 training
items used to train the three species in the S/D
procedure. This 8-item set was used to construct the 64
training pairs (8 same and 56 different). These pairs
were randomly selected during training. Note. From
Figure 1, "Mechanisms of same/different abstract-concept
learning by rhesus monkeys (Macaca mulatta)," by J. S.
Katz, A. A. Wright, and J. Bachevalier, 2002, Journal of
Experimental Psychology: Animal Behavior Processes, 28,
p. 361. Copyright 2002 by the American Psychological
Association. Adapted with permission. |
|
Figure 5 shows baseline and transfer performance for
species across set size. Transfer performance increased with set size.
These set-size functions show that monkeys fully learned (i.e., transfer
performance equivalent to baseline performance) the concept by 128 items
and pigeons by 256 items with displays containing only two pictures.
Additionally, the animals’ transfer performance showed little or no
correlation with human similarity ratings of the training and test items
suggesting transfer was not a function of stimulus generalization from
item features (Wright & Katz, 2006). If the subjects’ choice responses
were controlled by the similarity of transfer to training stimuli then
there would have been a positive correlation in as much as humans,
monkeys, and pigeons perceive the stimuli in a common way.
Figure 5. Mean percentage correct
for baseline and transfer at each set size for the three
species in the S/D procedure. Error bars represent SEMs.
Note. From Figure 3, "Same/different abstract-concept
learning by pigeons," by J. S. Katz and A. A. Wright,
2006, Journal of Experimental Psychology: Animal
Behavior Processes, 32, p. 85. Copyright 2006 by the
American Psychological Association. Adapted with
permission. |
|
The results from control experiments corroborated
these findings by ruling out training and testing experience as possible
factors contributing to the increase in transfer performance. In one
control experiment, we ruled out the possibility that extended training
alone might produce abstract-concept learning. A training-control group
of naïve pigeons and one rhesus monkey were trained with the same 8-item
set as the other animals but with no set-size expansion (i.e., a fixed
set of 8-items). These training-control animals were transfer tested at
equivalent points in time to the set-size expansion pigeons or monkeys,
so that they too would have the same experience with the same transfer
pairs at the same points in training. Also, a testing-control group of
pigeons were trained like the training-control group but these pigeons
were tested only at the end of training (i.e., one transfer test). The
testing-control animals controlled for the possibility that any transfer
by training-control animals might be due to exposure of the transfer
trials. The results for the experimental and control groups are shown in
Figure 6. For pigeons, the control groups showed no transfer indicating
that the full concept learning by the experimental group (i.e., pigeons
that experienced set-size expansion) was due to set-size expansion. The
absence of transfer for the training-control animals also means that the
novel transfer trials themselves did not foster transfer across testing.
The pigeons experienced 60 novel item pairings (90 individual pictures)
across each of the 6 transfer sessions resulting in a total of 420 novel
item pairings over all the transfer tests, which is somewhat of a
set-size expansion only the items were not repeated. After training
occurred with the fixed set of eight items, pigeons apparently needed
more than one-trial training with novel stimuli and/or novel stimuli
combined with training stimuli (during training) to increase their level
of transfer. The same conclusion is supported by the experiments with
rhesus monkeys. There is one apparent difference across these two
species: the control monkey showed an increase in abstract-concept
learning during the second and third test and a decrease to chance
during the fourth test. The reason for this species difference is
unclear, but suggests that there may be a sensitive period for
developing relational learning and transferring this learning to novel
stimuli (i.e., abstract-concept learning). The end result is the same
for pigeons and rhesus monkeys, as overtraining with the 8-items may
block relational learning.
These abstract-concept learning set-size functions
(Figure 5) were the first for any species. The functions help explain
why previous experiments with small set sizes are likely to have
resulted in claims that pigeons could not learn the abstract S/D
concept. The results were also the first to show full concept learning
with pigeons in a two-item S/D task. The control groups for both pigeons
and rhesus monkeys were also the first of their kind to be used in a
test of abstract-concept learning. Although the monkey set-size
functions were of steeper slope (i.e., faster growth of concept
learning) than the pigeon set-size functions, all species eventually
showed full concept learning (transfer equivalent to baseline)
indicating a qualitative similarity in abstract-concept learning. The
somewhat slower acquisition of the S/D concept by pigeons means that
they had to experience more exemplars of the rule than monkeys in order
to fully transfer this rule to novel pairs of items. Why this is the
case is unclear, but even humans need to be trained with several
exemplars of a rule in order to fully transfer it (Chen & Mo, 2004).
Figure 6. Mean percentage correct
for baseline and transfer in the experimental and
control groups of pigeons (left panel) and rhesus
monkeys (right panel) at each set size or at equivalent
points in training in the S/D procedure. Error bars
represent SEMs. Note. From Figure 2, "Same/different
abstract-concept learning by pigeons," by J. S. Katz and
A. A. Wright, 2006, Journal of Experimental Psychology:
Animal Behavior Processes, 32, p. 84. From Figure 7,
"Mechanisms of same/different abstract-concept learning
by rhesus monkeys (Macaca mulatta)," by J. S. Katz, A.
A. Wright, and J. Bachevalier, 2002, Journal of
Experimental Psychology: Animal Behavior Processes, 28,
p. 366. Copyrights 2006 and 2002 by the American
Psychological Association. Adapted with permission. |
|
Importance of Set Size, Observing Response, and
Matching-To-Sample
Figure 7. An example of
matching-to-sample displays used with pigeons. Pigeons
were required to first make observing responses (pecks)
to the sample (upper) cartoon before they were presented
simultaneously the sample and two comparison cartoons
(left panel). Some pigeons were not required to make
this initial observing response requirement (right
panel). In either procedure, a peck to the comparison
cartoon that matches the sample cartoon was correct.
After a choice response, correct choices were rewarded,
and an intertrial interval separated trials. Thus,
except for the initial observing response, the sequence
of events was identical across procedures. |
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Set size is also important for pigeons in the MTS
procedure (Wright et al., 1988). In typical MTS tasks, the subject is
first presented a sample item (e.g., apple). After an observing response
to the sample, two comparison items (e.g., apple and grapes) are
typically presented (see left side of Figure 7). The correct response is
to choose the comparison item (apple) that matches the sample. As with
S/D, if the subject has learned the abstract matching concept (i.e.,
relating each comparison item to the sample item) so that it responds
relationally on every trial, then it should do so on novel transfer
trials and transfer performance should be as accurate as with the
training stimuli. Wright et al. (1988) showed that pigeons trained with
a large set size of 152 items fully learned the abstract concept and
that pigeons trained with a small set size of only two items did not
transfer above chance (see Figure 8).
But there is another parameter, the observing
response, which is important in abstract-concept learning. For example,
pigeons do not need to be trained with a large set size to show full
concept learning if they are required to respond to the sample item 20
times (FR20). Wright (1997, 2001) showed full transfer by pigeons with a
set size of three items and an FR20. However, if the sample was pecked
only once (as it was in Wright et al., 1988) or not at all (the three
MTS stimuli presented all at once; see right side of Figure 7) there was
no transfer.
The full concept learning of the pigeons in the FR20
group from Wright (1997) was the reason we choose an FR20 for the S/D
discrimination with pigeons. Clearly, there are differences between
these two tasks, because the pigeons trained with 8 items and a sample
response requirement of FR20 showed no abstract-concept learning. These
differences between S/D and MTS could be due to any one or a combination
of factors. 1) Was it a difference in the task requirements between S/D
and MTS that was critical? In MTS there is always one comparison that
matches the sample as in a 2AFC Signal Detection Task. 2) Does the
sample observing response requirement have a different effect on MTS
concept learning than on S/D concept learning? 3) Does the training set
size have a different effect on MTS concept learning than on S/D concept
learning? 4) Was horizontal presentation of stimuli in the MTS tasks
critical to concept learning? The prior MTS experiments (Wright, 1997,
2001; Wright et al., 1988) presented stimuli from the floor of the
operant chamber, as opposed to being presented vertically on the front
panel. 5) Was the older EGA video monitor with its slower scan rate
critical to MTS concept learning? Any or all of these factors might have
played a role and deserve attention in comparing S/D and MTS procedures.
In regard to our S/D procedure, the results at the
very least imply that the role of the observing response for pigeons on
S/D concept learning needs to be explored. Additionally, there is reason
to believe we would find an observing response effect on S/D concept
learning for pigeons because there was an effect with rhesus monkeys.
Rhesus monkeys trained with an FR10 showed a steeper set-size function
than a monkey trained with an FR0; showing an observing response effect
on abstract-concept learning (see Figure 9). It would be surprising to
find an effect of the observing-response requirement in rhesus monkeys,
but not in pigeons. Parametrically manipulating the observing response
would also be interesting for comparative reasons because in S/D
abstract-concept learning pigeons were required to peck the upper item
20 times and rhesus to touch it 10 times, but capuchins did not touch
the upper item at all. Capuchins were presented both items
simultaneously (plus the white rectangle) and only required to make a
choice response. Hence, how the observing response influences
abstract-concept learning and interacts with set size across species in
the S/D task is unclear. This interaction is important to understand as
it may influence how the task is solved.
Figure 8. Mean percentage correct
for trained displays (baseline) and novel-stimulus
displays (transfer) at each set size for separate groups
of pigeons in the MTS procedure. Error bars represent
SEMs. Note. From Figure 7, "Concept learning by pigeons:
Matching-to-sample with trial-unique video picture
stimuli," by A. A. Wright et al., 1988, Animal Learning
& Behavior, 16, p. 443. Copyright 1988 by the
Psychonomic Society. Adapted with permission. |
|
Figure 9. Mean percentage correct
for baseline and transfer at each set size for rhesus
monkeys trained with ten sample observing response
(FR10) or no sample observing response (FR0) in the S/D
procedure. Error bars represent SEMs. Note. From Figure
6, "Abstract-concept learning and list-memory processing
by capuchin and rhesus monkeys" by A. A. Wright, J. J.
Rivera, J. S. Katz, and J. Bachevalier, 2003, Journal of
Experimental Psychology: Animal Behavior Processes, 29,
p. 191. Copyright 2003 by the American Psychological
Association. Adapted with permission. |
|
Discerning Different Item-Specific Strategies
One of the issues addressed by Wright (1997) was how
pigeons solve the MTS task when they fail transfer to novel stimuli. At
the time, the explanation for failure to transfer to novel stimuli was
that performance was tied to specific features of the training stimuli,
i.e., item-specific learning (e.g., Carter & Werner, 1978; Wright,
1997). If subjects learn the MTS task item-specifically, then, in
principle, performance can be controlled by either the configural
pattern of the three stimuli or by if-then rules tied to the specific
sample and comparison stimuli (e.g., Carter & Eckerman, 1975; Carter &
Werner, 1978; Wright, 1997). Configural pattern learning involves
learning choice responses to specific displays based on the configural
gestalt or pattern (e.g., similar to an abstract painting or bed quilt)
of the whole display. If-then rule learning involves learning specific
stimulus-response chains to the sample and correct comparison stimulus
in the MTS display, for example, "If red sample then choose red
comparison", (Skinner, 1950). More than a quarter of a century ago the
case was made that pigeons do not learn the MTS concept because they
learn if-then rules (Carter & Werner, 1978). The possibility of
configural-gestalt learning was raised by Carter & Werner (1978), but
was rejected in favor of if-then rule learning with very little evidence
to support either possibility.
Figure 10. The twelve display
configurations constructed from the three cartoon items
(apple, duck, grapes) used in the MTS procedure. Pigeons
were trained with either the top or bottom six displays.
Notice that the role of each item in each of the two
training sets is counterbalanced for sample frequency,
correct comparison position, and incorrect comparison
position. The six displays of the set not used in
training were used to test for if-then rule learning.
Note. From Figure 1, "Concept learning and learning
strategies," by A. A. Wright, 1997, Psychological
Science, 8, p. 120. Copyright 1997 by Blackwell
Publishing. Adapted with permission. |
|
The possibility of different ways of learning has
been raised off and on for many years (e.g., Carter & Werner, 1978;
Lashley, 1938; Zentall & Hogan, 1974), but it was not until 1997 that it
was made clear how these different possibilities might be tested
(Wright, 1997). Wright devised a test for if-then rule learning. He
divided the 12 possible displays constructed from three items (apple,
duck, grapes) so that the roles of each item could be counterbalanced
within each of two subsets of 6 displays each (see Figure 10). Using
this split-set design, one set of 6 displays (e.g., the top 6 displays
of Figure 10) was used in training the MTS discrimination and the other
set (e.g., the bottom 6 displays of Figure 10) was used specifically to
test for if-then rule learning (but were counterbalanced in the
experiment). If the pigeons learned the task by if-then rules, they
should have transferred their performance to the set of 6 displays not
used in training, i.e., novel displays constructed from the same
familiar items used in training, because the same if-then rules (e.g.,
"If duck then choose duck comparison") would be equally effective with
either subset. If the pigeons learned the task configurally, they should
have failed to transfer to the untrained displays. Wright also varied
the number of observing responses (FR 0, 1, 10, or 20) to the sample
across groups. The results are shown in Figure 11. When pigeons did not
learn the abstract concept, they fully learned the MTS task configurally
(FR0 and FR1). Pigeons that were required to peck the sample 20 times
fully learned the matching concept, even with a small training set of 3
items, as shown by transfer to novel stimuli being as good as
training-trial performance. These results clearly show that pigeons are
capable of learning a variety of strategies and that parametric
manipulation can influence what strategy is learned.
Figure 11. Mean percentage
correct for trained, untrained, and novel-stimulus
displays from Wright (1997). Error bars represent SEMs.
Data are further divided by the number of responses
required to the sample for each group. Untrained
displays refer to tests of the six displays not used in
training. Novel-stimulus displays refer to tests with
trial-unique novel cartoon items not seen in training.
The dotted line represents chance performance. Note.
From Figure 2, "Concept learning and learning
strategies," by A. A. Wright, 1997, Psychological
Science, 8, p. 121. Copyright 1997 by Blackwell
Publishing. Adapted with permission. |
|
Conclusions
In closing, we would like to make a few comments
about the importance of tasks which can be solved by different
strategies. Such tasks are important to study because they can help
reveal the cognitive flexibility of human and nonhuman animals. MTS and
S/D are two such tasks that can be solved by either relational or
item-specific strategies (e.g., Carter & Warner, 1978; Cumming &
Berryman, 1965; Wright, 1997). A variety of species including capuchin
monkeys (Wright et al., 2003), chimpanzees (Oden, Thompson, & Premack,
1988), dolphins (Herman, Hovancik, Gory, & Bradshaw, 1989), humans
(Weinstein, 1941), parrots (Pepperberg, 1987), rhesus monkeys (Wright et
al., 1984), sea lions (Kastak & Schusterman, 1994), and even pigeons
(Katz & Wright, 2006; Wright, 1997) can solve the MTS and/or S/D task
either item-specifically or relationally. The pervasiveness of such
multiple strategy use is clearly seen across the human life-span in a
wide variety of tasks including arithmetic, time telling, serial recall,
spelling, and conservation (for a review see Siegler, 1996). For
example, when solving addition problems children (5-7 years old) can use
a combination of the MIN (counting up by ones from the larger addend by
the smaller addend), decomposition (transforming a difficult problem
into two simpler ones), guessing, or retrieval (accessing the answer
from memory) strategies. Hence, how animals learn the MTS and S/D tasks
may share similar processes compared with how humans generally learn and
solve problems. Understanding how these processes are quantitatively and
qualitatively same or different across species can advance our
knowledge about how animals process and think about things. Such
progress may decrease the commonly misperceived gap between human
higher-order cognitive processing and that of nonhuman animals.
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