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Predicting Testing Effort Using Artificial Neural Network

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Figure

TABLE 1  METRICS STUDIED
TABLE 2 V. RESULTS
TABLE 4 have shown their ability to provide an adequate
Fig 2: Squared Error with respect to each Data

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