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THe category-based scores are independent of the other. WNFE obtained 0.599 from 2000
features; this value makes it better than the PNTFA approach but not as good as ICBA approach.
PNTFA obtained the lowest f-measure value (0.475) from 500 features and the highest f-measure
value (0.515) using 9052 features. However, when statistical analysis was performed, there was
no difference between the result of 500 features and 9052 features. Thus, the f-measure value 0.475
(obtained using 500 features) was used. Merging best feature approach obtained an f-measure value of 0.661
from 2557 features. It was not as precise a score as is achieved by the collective-based approach.
The overall result of the multi feature experiment is in table 2. The collective-based approach incorporates
the collection of all kinds of features. The highest f-measure value achieved using that method was 0.705, using 20000 features.
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