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iSQI Exam CT-AI Topic 3 Question 1 Discussion

Actual exam question for iSQI's CT-AI exam
Question #: 1
Topic #: 3
[All CT-AI Questions]

Upon testing a model used to detect rotten tomatoes, the following data was observed by the test engineer, based on certain number of tomato images.

For this confusion matrix which combinations of values of accuracy, recall, and specificity respectively is CORRECT?

SELECT ONE OPTION

Show Suggested Answer Hide Answer
Suggested Answer: A

To calculate the accuracy, recall, and specificity from the confusion matrix provided, we use the following formulas:

Confusion Matrix:

Actually Rotten: 45 (True Positive), 8 (False Positive)

Actually Fresh: 5 (False Negative), 42 (True Negative)

Accuracy:

Accuracy is the proportion of true results (both true positives and true negatives) in the total population.

Formula: Accuracy=TP+TNTP+TN+FP+FNtext{Accuracy} = frac{TP + TN}{TP + TN + FP + FN}Accuracy=TP+TN+FP+FNTP+TN

Calculation: Accuracy=45+4245+42+8+5=87100=0.87text{Accuracy} = frac{45 + 42}{45 + 42 + 8 + 5} = frac{87}{100} = 0.87Accuracy=45+42+8+545+42=10087=0.87

Recall (Sensitivity):

Recall is the proportion of true positive results in the total actual positives.

Formula: Recall=TPTP+FNtext{Recall} = frac{TP}{TP + FN}Recall=TP+FNTP

Calculation: Recall=4545+5=4550=0.9text{Recall} = frac{45}{45 + 5} = frac{45}{50} = 0.9Recall=45+545=5045=0.9

Specificity:

Specificity is the proportion of true negative results in the total actual negatives.

Formula: Specificity=TNTN+FPtext{Specificity} = frac{TN}{TN + FP}Specificity=TN+FPTN

Calculation: Specificity=4242+8=4250=0.84text{Specificity} = frac{42}{42 + 8} = frac{42}{50} = 0.84Specificity=42+842=5042=0.84

Therefore, the correct combinations of accuracy, recall, and specificity are 0.87, 0.9, and 0.84 respectively.


ISTQB CT-AI Syllabus, Section 5.1, Confusion Matrix, provides detailed formulas and explanations for calculating various metrics including accuracy, recall, and specificity.

'ML Functional Performance Metrics' (ISTQB CT-AI Syllabus, Section 5).

Contribute your Thoughts:

Yoko
5 months ago
I'm going with D) 0.84, 1, 0.9 because it has the highest specificity value.
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Margery
5 months ago
Time to put my AI skills to the test! Let me see... Ah, got it!
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Felicidad
4 months ago
No, I believe it's C) 1, 0.9, 0.8
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Felicidad
4 months ago
I think the correct combination is A) 0.87, 0.9, 0.84
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Enola
5 months ago
But A has the highest accuracy and recall values, so it seems more likely to be correct.
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Laticia
5 months ago
I disagree, I believe it is C) 1, 0.9, 0.8.
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Luisa
5 months ago
If I were a tomato, I'd be offended by this test. Just kidding, let me work this out.
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Thomasena
4 months ago
I'm not sure about that, I think it's A) 0.87.0.9. 0.84
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Ciara
4 months ago
B) 1,0.87,0.84
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Evangelina
5 months ago
I think the correct combination is A) 0.87.0.9. 0.84
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Rashida
5 months ago
A) 0.87.0.9. 0.84
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Yong
5 months ago
I'm pretty sure the answer is A, but I'll double-check the formulas just to be sure.
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Chauncey
4 months ago
Yeah, let's make sure we're on the right track.
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Ellsworth
4 months ago
I think it's A too, let's confirm the calculations.
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Enola
5 months ago
I think the correct combination is A) 0.87, 0.9, 0.84.
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Deangelo
6 months ago
Hmm, this looks like a tricky one. I'll have to think about this carefully.
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Holley
5 months ago
I remember seeing similar confusion matrices before, and I think the answer is D) 0.84, 1, 0.9
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Yasuko
5 months ago
I'm not sure, but I believe it might be C) 1, 0.9, 0.8
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Dannie
6 months ago
I think the correct combination is A) 0.87, 0.9, 0.84
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