Question
In the questions given below, there are three
statements followed by three conclusions I, II and III. You have to take the three given statements to be true even if they seem to be at variance from commonly known facts. Read all the conclusions and then decide which of the given conclusions logically follows from the given statements disregarding commonly known facts. Statements: Only a few Colour are Paint All Paint is Polish Some Polish is Contrast Conclusion: I. Some Colour is not Contrast II. Some Paint is Contrast III. All Polish is PaintSolution
Only a few Colour are Paint (I) + All Paint is Polish (A) β Some Colour are Polish (I) + Some Polish is Contrast (I) β No conclusion. Hence conclusion I does not follow. All Paint is Polish (A) + Some Polish is Contrast (I) β No conclusion. Hence conclusion II does not follow
All Paint is Polish (A) β Conversion β Some Polish is Paint (I). Hence conclusion III does not follow.
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