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Table 6.6: Substitution matrix and pseudocounts for regularizer using substitution matrix plus scaled counts plus pseudocounts (trained on jsj = 0; 1; 2; 3). The feature alphabets have very few tuning parameters (one per alphabet), and so one would expect them not to do well relative to the pseudocount methods (20 parameters) or the substitution matrices (400 parameters). The excess entropy reported in Table 6.7 show the feature alphabets doing surprisingly well for having so few parameters. The 8-alphabet set does quite well for the the samples sizes it was tuned for (jsj = 1; 2), but degrades rather rapidly for larger sample sizes, doing worse than zero-o sets by jsj = 4. The 4- alphabet and 5-alphabet sets do better than pseudocounts for jsj = 1; 2; 3, but, like the substitution matrix method, the feature alphabets continue to get further from the optimum regularizer as jsj increases, while the pseudocount methods improve. The results for hand-created feature alphabet sets is presented in Table 6.8. On the whole, these hand-created feature sets did not do as well as the automatically generated ones. Although the tiny number of parameters for the feature alphabets makes them aesthetically appealing, their performance is not good enough to justify the e ort of implementing them. Perhaps
1995
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Table 2: The specification of target constructs for the questionnaire development
"... In PAGE 3: ...se (1998, p. 2). This definition was given to all the participants in this study to clarify what usability means. Based on the descriptive definition, aesthetic appeal (image or design) (Ketola, 2002; Kwahk, 1999) and emotional dimensions (Jordan, 2000; Logan, 1994) were added as important sub-dimensions, since the target products are consumer products not software products. The summary for the conceptualization of the target construct is provided in Table2 . This specification was referred to as the target construct throughout this study.... ..."
Table 3: Prescriptive Aesthetic Framework Based on Data and Aesthetic Literature
Table 9: Structure Appeal Questionnaire
2004
"... In PAGE 47: ... Eight dimensions of this questionnaire were translated and used. Table9 shows the structure of the questionnaire. A Liker scale (1-7) was used.... ..."
Table 2) for predicting choices of aesthetically pleasing
Table 1 shows the aesthetic values for all the diagrams.
Table 6. Computational complexity of the aesthetics for sequence diagrams.
Table. An overview of the results of assessment by aesthetic judgement.
TABLE 2. Global appealing of the user interface.
2000
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