One major goal for data mining is to understand data. Rule based methods are better than other methods in making mining results comprehensible. However, the current rule based classifiers make use a small number of rules and a default prediction to build a concise predictive model. This reduces the explanatory ability of a rule based classifier. In this paper, we propose to use multiple and negative target rules to improve explanatory ability of rule based classifiers. We show experimentally that this understandability is not at the cost of accuracy of rule based classifiers. Key words: classification, association rule, negative and multiple rule.