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Computer-Based Concept Mapping as a Prewriting Strategy for Middle School Students

Shu-Yuan Lin, Jane Strickland, Beverly Ray, and Peter Denner

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Results

Students’ Concept Maps

The difference in concept maps between computer-based and paper-and-pencil concept mapping was examined based on two concept map measures, the number of ideas contained in the maps and the total quality of the maps, using the nested factorial design described previously. Table 1 presents the means and standard deviations for these measures by method, teacher, and class.

Table 1.
Means and Standard Deviations for Concept Mapping Measures, and Persuasive Writing Postassessment Scores by Method by Teacher by Class


Measure
Class
n
Number
of Ideas
Total
Quality
Writing

M
SD
M
SD
M
SD

Paper-and-Pencil
   
     Teacher 1
1
12
12.92
2.71
24.00
8.68
3.50
.52
2
15
12.60
1.84
25.33
6.30
3.07
.80
     Total
3
27
12.74
2.23
24.74
7.33
3.26
.71
     Teacher 2
1
16
10.44
4.83
17.50
15.28
3.13
.81
2
15
9.20
4.16
16.53
12.97
3.13
.92
3
15
8.60
3.07
16.67
10.91
3.33
.62
4
18
8.67
3.46
17.17
11.40
3.89
.90
5
13
10.23
3.77
19.38
10.84
3.46
.52
     Total
5
77
9.39
3.88
17.39
12.15
3.40
.82
Total
7
104
10.26
3.81
19.30
11.53
3.37
.79

Computer-based
     Teacher 1
1
16
9.13
3.65
15.00
9.63
3.19
.91
2
15
10.00
2.42
20.20
7.77
2.87
.64
     Total
3
31
9.55
3.10
17.52
9.03
3.03
.80
     Teacher 2
1
19
10.68
5.41
24.21
20.83
2.68
.82
2
17
11.59
5.54
17.59
11.52
3.29
.59
3
20
15.85
5.90
34.60
17.37
2.95
.83
4
18
12.94
5.76
30.06
15.36
2.89
.90
5
17
14.76
3.70
32.71
14.39
2.88
.70
     Total
5
91
13.20
5.40
28.00
17.14
2.93
.79
Total
7
122
12.27
5.16
25.34
16.11
2.96
.79


The Method III sums of squares ANOVA for the numbers of ideas contained in the students’ concept maps revealed a statistically significant effect for concept mapping method, F (2, 1.94) = 42.02, MSE = 286.21, p = .03, = .15. A statistically significant effect was also found for teacher within method, F (2, 10.79) = 6.78, MSE = 38.26, p = .01, = .06. The effect for classes within teacher within method was also statistically significant, F (10, 212) = 2.24, MSE = 17.87, p = .02, = .11. The students who developed computer-based concept maps (M = 12.27) generated more ideas (p < .05) than the students who developed paper-and-pencil concept maps (M = 10.26). This means the computer-based concept mapping facilitated the brainstorming phase of prewriting and idea generation for a persuasive writing task. In addition, the results indicate that teachers influenced the number of ideas generated by their students regardless of the method of concept mapping ( = 3.92). The number of ideas generated also varied by class ( = 1.38).

The Method III sums of squares ANOVA results for the total quality of the students’ concept maps displayed a statistically significant effect for concept mapping method, F (2, 1.92) = 24.53, MSE = 1888.18, p = .04, = .10, a statistically significant effect for teacher within method, F (2, 10.85) = 4.82, MSE = 357.59, p = .03, = .04, and a statistically significant effect for class within teacher within method, F (10, 212) = 2.10, MSE = 178.11, p = .03, = .10. The students in the computer-based concept mapping condition (M = 25.34) produced higher total quality concept maps (p < .05) than the students in the paper-and-pencil concept mapping condition (M = 19.30). Similar to the results for the number of ideas contained in the students’ concept maps, the total quality findings indicate that teachers influenced the quality of students’ concept maps no matter the method of mapping used by the students ( = 24.20) and that the quality of the students’ concept maps varied by class ( = 12.20).

Post hoc mean comparisons using the Tukey-Kramer procedure indicated that the mean performance (M = 28.00) level of the students’ with the second teacher in the computer-based mapping condition differed (p < .05) from the mean performance
(M = 17.39) level of the students with the second teacher in the paper-and-pencil concept mapping condition. None of the other differences among the teachers were statistically significant. Inspection of the students’ concept maps revealed that the students with the second teacher in the computer-based concept mapping condition closely adhered to the persuasive concept map template while the students with the second teacher in the paper-and-pencil concept mapping condition did not adhere as closely to the persuasive concept map template. Hence, the total quality scores were partly affected by adherence to the persuasive concept map template and the teachers made a difference as to whether the students followed the template.

Effect of Concept Mapping Method on Persuasive Writing Performance

The effect of concept mapping prewriting method (computer-based versus paper-and-pencil) on eighth-grade language arts students’ persuasive writing was assessed using ANCOVA. The students’ scores on the persuasive writing preassessment served as the covariate. Table 1 presents the means and standard deviations for the two concept mapping methods on the students’ persuasive writing postassessment scores by method, by teacher, and by class.

Results of the Method III sums of squares ANCOVA showed a statistically significant effect for the prewriting covariate, F (1, 211) = 108.19, MSE = .395, p < .01. The effect of mapping method was statistically significant, F (2, 5.14) = 47.08, MSE = .363, p < .01, = .17. The effect of teacher within method was not statistically significant, F(2, 10.90) = .52, MSE = .72, p = .61, = .00. The effect of class within teacher and method was statistically significant, F(10, 211) = 1.88, MSE = .40, p = .05, = .02. This means the students’ persuasive writing scores varied by class ( = .02). Contrary to our expectations, the students who developed their concepts maps using paper-and-pencil (M = 3.37) performed better than the students who developed their concepts maps using the computer software (M = 2.96).

Relation of Concept Map Quality to Persuasive Writing

Stepwise multiple regression analysis was used to evaluate the relation of the concept mapping measures to persuasive writing. Table 2 displays the correlations among these measures. The stepwise regression was statistically significant, F = 7.14, MSE = .64, p < .01, R2 = .03. Partially due to a high correlation between the total quality of the students concept maps and the number of ideas contained in their maps (r = .83), the total quality of the students’ concept maps was selected as the only predictor of the students’ persuasive writing scores. However, the quality of the students’ concept maps accounted for only three percent of the differences in the quality of the students’ persuasive writing.

Table 2.
Correlation of Concept Mapping Scores with Persuasive Writing Postassessment Scores (n = 226)


Variable
Total Quality
Postassessment
Writing

Number of Ideas
.83**
.12*
Total Quality
.18**

*p < .05. **p < .01    

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Meridian: A Middle School Computer Technologies Journal
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Volume 8, Issue 1, Winter 2005
ISSN 1097 9778
URL: http://www.ncsu.edu/meridian/sum2004/cbconceptmapping/3.html
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