How learn and process information the students in technical universities.
Mazilescu, Crisanta Alina ; Draghici, Anca ; Draghici, George 等
1. INTRODUCTION
Developing an information society requires first and foremost a
technical and scientific culture throughout the society. Although for
this purpose time and money have been invested, researches on technical
skills and scientific knowledge have revealed the shipwreck of
scientifique education. In stimulating interest for science and
technology, the school is considered to be the most influential factor,
followed closely by family and media (Mazilescu et al., 2009).
With the same goal of increasing the interest in scientific and
technological knowledge we have focused in this work to study the
learning style and cognitive complexity of "polytechnic"
students.
1.1 Cognitive complexity
Cognitive complexity is a variable which describes processing
information. Constructivist perspective of cognitive complexity is
involved in building environmental representations, together with three
other characteristics of the personal constructs: integration,
organization and discrimination. Personal constructs theory proposed by
Kelly (1955) postulates that individuals use a number of personal
constructs to perceive and to structure events experienced. From the
perspective of complexity, cognitive structure has three types of
organization: complex structure is when constructs are well defined,
organized hierarchically, but with little relationship between them; mid
structure reflect the capacity to perceive quite well both the
differences and similarities between phenomena and events received, is a
structure in which concepts are well defined; simple structure is when
constructs interact among themselves due to their insufficient
definition and to overlapping of their axes of reference; Individuals
who have developed personal constructs have a better ability to process
information.
While cognitive complexity is the ability to use information stored
in memory, the quality of this information is not considered and
cognitive complexity is necessary but not sufficient for intelligence
(Haase et al., 1979).
1.2 Cognitive style, parent learning style
According to Keefe (1979), Gordon Allport was the first author to
propose the term "cognitive style". In 1976, Messick published
a study on cognitive styles referring to "constant individual
differences in how to organize and process information and
experiences" and to "stable attitudes, preferences and stable
strategies determining typical modes of a person to perceive, memorize,
think and solve problems" (Messick, 1976). Interest to researchers
since 70-80 years, passed from general cognitive functioning during the
learning to individual learning needs of students. On this occasion,
appeared and was based the difference between cognitive style and
learning style.
1.3 Learning style
Learning style was a topic of interest to many researchers, which
is why they appeared and there are plenty of theories:
--The learning styles depending on the learning environment
--The learning styles depending on modality of encoding and
representation
--The learning styles based on how information processing
- The learning styles based on a model of experiential learning
- The learning styles based on a theory of personality--The mixed
models of learning styles
The VAK concept, theories and methods were first developed by
psychologists and teaching specialists in the 1920's. The VAK
multi-sensory approach depending on modality of encoding and
representation. This dimension style is also present in the mixed models
of Hill (1972) and Dunn and Dunn (1978).
Theory VAK preferred learning styles defines the existence of three
learning styles: visual, auditory and kinesthetic, but only one of which
occurs predominantly in a situation of learning. The practic interest
for this teory is to determine the best sensorial modality prefered to
learning by students for using this in teaching.
This is the argument to realize this study, which has aims to
identify learning styles and ways of processing social information to
students in technical sciences.
2. METHOD
2.1 Subjects
The sample of subjects who participated in this research was
composed of 115 students of techical university: 35 girls and 80 boys
(18 to 24 years). The subjects are students in automation and computers,
1st and 3rd year of license. The average age is 20.5 years.
2.2 Instruments
The instruments used are "Questionnaire for cognitive
complexity" (Virga, 2005) and "The questionnaire styles
learning by vision, hearing and touch "(Vanderspelden, 2002). In
what regards the cognitive complexity, the author established 5 factors
(meta-cognitive ability, desire of knowledge, social influence, openess
to new and tolerance for ambiguity). Upon these factors which are in
interdependence, there is cognitive complexity, whose global score is
calculated by summing up the partial scores of its facets.
To identify preferred learning styles of students from the Faculty
of Automation and Computers we used the questionnaire developed by the
Human Resources Department Staff and Skills Development (the Government
of Canada) team led by Jean Vanderspelden (2002).
3. RESULTS
In part teachers tend to favor their own learning styles. The
mismatches between the prevailing teaching style in most science courses
and the learning styles of most of the students have several serious
consequences. Because it the society loses potentially excellent
scientists. To achieve an accord between teaching and learning styles we
want to identify the learning styles of students of technical
universities.
Regarding the sensory system preferred by "polytechnic"
students we found that they used in relatively equal proportions all
three learning styles: visual, auditory and kinesthetic. In a detailed
analysis we observed that the most of students train all three sensory
systems when studying.
The differences between averages obtained were statistically
insignificant. In table 1 we present the descritive statistics of the
results obtained for each studied learning style: visual, auditory and
kinesthetic.
Taking into the analysis all three learning styles, visual,
auditory and kinesthetic, we presented here the percents for each
learning style. Note that all learning styles are present in almost
equal proportions:
--34,85% auditory style
--34,43% visual style
--30,72% kinesthetic style.
Analysis of cognitive complexity gives us an insight into how the
students use the information available in memory to perceive and
evaluate people and events in their environment. Regarding the cognitive
complexity (CCG) are presented the descriptive statistic for all their 5
factors: meta-cognitive ability (Mcgn), desire of knowledge (DesKnow),
social influence (SocInfl), openess to new (Openess) and tolerance for
ambiguity (TolAmbig) (table 1).
In Table 2 are presented the results of Significance Test of the
difference between the average lot of girls and boys respectively. These
results show that the girls, students in Automation and Computers have a
"tolerance for ambiguity" less than boys, their peers.
Regarding the differences between 1st and 3rd year of study we
observe that just openess to new tend to recede with the completion of
the licence studies (tab 2).
4. CONCLUSION
In terms of meta-cognitive skills of students in technical
sciences, we can say that they tend to develop reflective activities, to
observe different aspects of reality and developed an interest in
understanding and explaining the reasons for human behavior and events
production.
Your intellectual curiosity and their need for knowledge could be
increased during university studies. In fact, we observe a decrease in
"opening the new" to the end of your studies, that can be
explained by the abundance of new things learned in faculty.
Reference to the learning style of students, teachers must adapt
their speech and teaching methods to the student's predominantly
sensory system. This is because it was concluded that students have
better results when teaching methods are adapted to their learning
styles.
But, from the results presented in this study, students in
technical science used in relatively equal proportions all three
learning styles: visual, auditory and kinesthetic. Therefore, trainers
would present information in a manner useful to all three learning
styles. This would create for all students, regardless of their
preferred style, the opportunity to be involved.
Learning is a complex process and is difficult to include in
analysis all its dimensions. Because it we mention that our study
considered learning analysis only in terms of information processing and
sensory system preferred.
5. REFERENCES
Dunn, R. & Dunn, K. (1978). Teaching students through
individual learning styles. Reston Pub, Virginia
Haase, R.F.; Lee, D.Y. & Banks D.L. (1979). Cognitive
correlates of polychronicity, Perceptual and Motor Skills, Vol. 49 pp
271-282
Hill, J. (1972). The Educational Sciences. Oakland Community
College, Detroit
Keefe,J.W. (1979). Student learning styles : diagnosing and
prescribing programs, Reston, VA: National Association of Secondary
School Principals (NASSP), pp 1-17
Kelly, G.A. (1955) .The Psychology of Personal Constructs, vol 1
and 2. Norton, New York.
Mazilescu, C.A.; Draghici, A.; Draghici, G.; Mihartescu, A.A. &
Constantin, D. (2009). Aspects of scientifique and technological culture
at students in technical sciences, Proceedings of Balkan Region
Conference on Engineering and Business Education & International
Conference on Engineering and Business Education, Oprean,C., Grunwald,N
& Kifor,C.V. (Ed.) pp 527-530, ISBN 978973-739-848-2, Lucian Blaga
University of Sibiu, october 2009, Sibiu
Messick (1976). Individuality in learning, San Francisco:
Jossey-Bass, pp 4-22.
Virga,D. (2005). Cognitive complexity--the construction and
validation of a questionnaire, Review of Applied Psychology. 3-4., pp
14-19 West University Publishing House, Timisoara
Tab. 1. Descriptive statistic for visual, auditory and kinesthetic
learning style and for cognitive complexity and their subfactors
Questionnaire Dimensions Mean Std. Dev
V.A.K visual 9,45 2,58
(Vanderspelden,
2002) auditory 9,56 2,54
kinesthetic 8,43 2,79
Q.C.C Mcgn 22,95 4,556
(D.Virga, 2005)
DesKnow 16,41 3,825
SocInfl 16,13 3,923
Openess 18,71 3,648
TolAmbig 15,85 3,226
CCG 90,06 13,101
Tab. 2. Differences between boys and girls; differences
between 1st and 3rd year of study
Tolerance for N = 80 m = 16,26 [delta] = 3,04 t = 2,47
ambiguity
(Diff boys-girls) N = 35 m = 14,81 [delta] = 3,47 p <0.01
Openess to new N = 61 m = 19,26 [delta] = 3,81 t = 1,92
(Differences 1st--
3rd year of study) N = 54 m = 18,08 [delta] = 3,38 p <0.1