As an alternative to utility-maximizing nested-logit models, Albatross uses decision trees to predict the activity-scheduling decisions of individuals and households. The decision trees are derived from activity-diary data and are able to account for discontinuous and non-linear effects of independent variables on choice variables. A potential disadvantage of rule-based models is that the sensitivity of predictions of travel demand may be reduced. To overcome this problem and combine the specific strengths of the rule-based and parametric modeling approaches, the authors have developed a hybrid approach referred to as parametric decision trees. The paper describes the approach and results of incorporating the extended decision trees in Alba...