Title:
Why
do we say the things we do?
Author: Ada
Tam
Category: Cool Science
“Please pass me the pork… I mean fork.” Slips-of-the-tongue
can be embarrassing. However, by analysing the types of errors
and when they are produced, researchers have gained insight
into how they occur and a better understanding of the mechanisms
that underlie word production.
Have
you ever noticed that speech blunders tend to be real words
or at least sound like one? Research has shown that speech
errors seem to obey the “rules of the language” that determine
what sounds like a real word and what does not.1
People learn through experience about sound patterns that
occur in language. These patterns are stored in each person’s
lexicon, which acts as a ‘mental dictionary’. Guidance provided
by the lexicon makes uttering ‘impossible’ sound combinations
unlikely since the sounds are unfamiliar. Sound-based errors
are also more likely to occur in longer and infrequently used
words.
Archibald
Spooner was famous for making classic speech blunders, such
as “You have hissed all my mystery lectures”. Spoonerism is
an example of how speech errors can be real words. Another
way can involve problems in selecting the correct word. For
instance, you might say, “Where is my tennis bat?” instead
of, “Where is my tennis racquet?”2
One possible explanation is that abstract
words that are difficult to form a mental image of are more
likely to be replaced by words with easier to form mental
images.
A dominant model of word production
Dell proposed a model that describes word selection
as a two-step process (see Fig. 1).3
Fig.
1. Basic hierarchical structure of Dell's model |
Imagine
the linguistic mind as a network of wires connecting light
bulbs to one another. These light bulbs are ‘nodes’ that represent
words, such as ‘cat’, or the sounds that form the word, such
as ‘c’. Activation spreads from one ‘node’ to another, so
when one light bulb switches on, light bulbs connected to
it will switch on, too. The level of activation, or the brightness
of each light bulb, indicates the extent of that node participating
in the word production. Several nodes can also be active at
the same time, and activation can cascade either in a top-down
(meaning-word-sound) or bottom-up (sound-word-meaning) direction.4
Dell’s
model can help explain mixed errors, those that share both
sound features and meaning with the intended word (see Fig.
2).

Fig. 2. A simplified diagram of Dell's model. Adapted
from Levelt, J.M. (1999). Models of word production,
Trends in Cognitive Sciences, 3, p.
226
|
When
the ‘cat’ light bulb switches on, so do the light bulbs for
the semantic meanings and the sounds that form the word ‘cat’.
So, the words ‘dog’ and ‘rat’ are activated since they share
a semantic domain with ‘cat’. However, as ‘rat’ shares sounds
with ‘cat’ whereas ‘dog’ does not, the ‘rat’ light bulb is
brighter than ‘dog’. Therefore, you are more likely to say
the word ‘rat’ than the word ‘dog’.5
Top-down
and bottom-up connections may be forming a type of filter
that screens out non-words.4
This filtering might explain why speech errors to be real
words. If sound patterns are stored in the lexicon, it is
possible that impossible sound sequences are being filtered
out as well.
Bottom-up
processing can help explain certain sound-based speech errors.
For example, you may have problems articulating the correct
sound when there is ‘competition’ between phonemes or syllables.
This is what makes tongue-twisters, such as “she sells sea-shells
on the seashore”, so difficult to say. Also, speech errors
tend to occur more frequently when people neglect to “think
before they speak”.3
How useful is this model?
Although
recording speech errors has been a useful method of determining
what types of errors occur whilst speaking, the data may not
be entirely accurate. For instance, the listener could misinterpret
what has been said. Problems can arise when the speaker and
listener use different dialects; vowels may be mistaken for
one another, and the same applies for consonants. There is
also a suggestion that in speech error collections, there
is a bias toward detecting errors located at the beginning
of the word.6
Furthermore,
Levelt and his colleagues have challenged the dependency on
speech error data, arguing that only reaction-time studies
can provide reliable evidence for word production models.7
They proposed the alternative computational model, WEAVER++
(Word-form Encoding by Activation
and VERification). The design is very similar
to Dell’s model, the difference being that it is able to predict
the speed of word production.
Nevertheless,
speech error analysis has been useful. Identifying the situations
where these errors are produced has made it possible to develop
models to explain the processes involved in word production.
Although studying slips-of-the-tongue alone is incomplete,
it has provided valuable insight into the way words are generated
in everyday speech.
See OnSET's
The
science of reading
Glossary
Coda syllable:
Phonetic sound at the end of the word
Lexicon:
A store of detailed information about words
Onset syllable:
Phonetic sound at the beginning of the word
Phoneme:
A basic speech sound conveying meaning
Spoonerism:
A type of speech error that occurs when the sounds at the
beginning of words are exchanged and the resulting errors
are real words
References
1.
Dell, G.S., Reed, K.D., Adams, D.R., & Meyer, A.S. (2000).
Speech Errors, Phonotactic Constraints, and Implicit Learning:
A Study of the Role of Experience in Language Production.
Journal of Experimental Psychology: Learning, Memory,
and Cognition, 26, 1355–1367.
2.
Harley, T.A., & MacAndrew, S.B.G. (2001). Constraints
Upon Word Substitution Speech Errors. Journal of Psycholinguistic
Research, 30, 394–417.
3.
Eysenck, M.W., & Keane, M.T. (2001). Cognitive Psychology,
4th Edition. Hove, UK: Psychology Press, Taylor & Francis.
4.
Schwartz, M.F., Saffran, E.M., Bloch, D.E. & Dell, G.S.
(1994). Disordered Speech Production in Aphasic and Normal
Speakers. Brain and Language, 47, 52–88.
5.
Levelt, W.J.M. (1999). Models of word production. Trends
in Cognitive Sciences, 3, 223–232.
6.
Cutler, A. (1981). The reliability of speech error data, Linguistics,
19, 560–582.
7.
Levelt, W.J.M., Roelofs, A., & Meyer, A.S. (1999). A theory
of lexical access in speech production. Behavioral and
Brain Sciences, 22, 1–75.
Further Reading
Harley,
T.A. (2001). The psychology of language: From data to theory,
2nd Edition. Hove, UK: Psychology Press, Taylor & Francis.
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