数据挖掘中的机器学习算法

决策树的优缺点

2017-09-08  本文已影响0人  FrankML

Advantages:

Decision Trees are easy to explain. It results in a set of rules. (容易解释)

It follows the same approach as humans generally follow while making decisions.

Interpretation of a complex Decision Tree model can be simplified by its visualizations. Even a naive person can understand logic.(复杂的决策树也容易可视化)

The Number of hyper-parameters to be tuned is almost null.

Disadvantages:

There is a high probability of overfitting in Decision Tree. (很容易过拟合)

Generally, it gives low prediction accuracy for a dataset as compared to other machine learning algorithms.(通常情况下精确度不如其他算法好)

Information gain in a decision tree with categorical variables gives a biased response for attributes with greater no. of categories.

Calculations can become complex when there are many class labels. (分类较多的是否计算比较复杂)

上一篇下一篇

猜你喜欢

热点阅读