Consider the following Confusion Matrix: Actual (down) \ Predicted (across) Yes No Totals Yes 20 5 No 10 15 Totals Based on the given time to event data, what is the value of the cumulative distribution function at t=6 if there are 10 right-censored observations
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Consider the following Confusion Matrix:
Actual (down) \ Predicted (across) Yes No Totals Yes 20 5 No 10 15 Totals -
Based on the given time to event data, what is the value of the cumulative distribution function at t=6 if there are 10 right-censored observations?
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