I am new to the field of AI and am reading about decision trees. I am referring to the AIMA book which is pretty much the standard Intro to AI book recommended. In the chapter on decision trees, they discuss in the book a case wherein after the first attribute splits and there are no attributes left but both positive and negative examples have still not been separated, it means that these examples have exactly the same description.... The solution to this case that they suggest is "to return the plurality classification of the remaining examples". I was wondering what that part in bold means? What does it mean to return the 'plurality classification' of a set of examples?

2 Answers 2


They would have said the majority class if there were only two classes. Plurality is just the generalization of majority to more than 2 classes. It just means take the most frequent class in that leaf and return that as your prediction. For example, if you are classifying the colors of balls, and there are 3 blue balls, 2 red balls, and 2 white balls in a leaf, return blue as your prediction.

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    Oh ok so if we have 10 positive example and 5 negative examples unseparated and there are 0 remaining attributes to split them, then the algorithm would just return positive (YES) as the value for these attributes? Commented Mar 26, 2013 at 17:07
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    @RobNeuhaus, What if we have 10 positive and 10 negative examples? In other words, an even split. Just randomly return one of the two classes? Thanks.
    – Kelvin
    Commented Apr 2, 2018 at 7:53

In decision trees when you have reached a leaf node but still do not have clear idea about the class to assign it to, then you have to return plurality classification, which means consider all the examples of the leafs parent and see the most common class occurred in the dataset.

  • How does this response improve upon the answer that was accepted?
    – chb
    Commented Mar 27, 2019 at 19:38

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