CHAID can be used for prediction (in a similar fashion to
regression analysis, this version of CHAID being originally known as XAID) as well as classification, and for detection of interaction between variables. In practice, CHAID is often used in the context of
direct marketing to select groups of consumers to predict how their responses to some variables affect other variables, although other early applications were in the fields of medical and psychiatric research. Like other decision trees, CHAID's advantages are that its output is highly visual and easy to interpret. Because it uses multiway splits by default, it needs rather large sample sizes to work effectively, since with small sample sizes the respondent groups can quickly become too small for reliable analysis. One important advantage of CHAID over alternatives such as multiple regression is that it is non-parametric. ==See also==