Bridging Advanced Quantitative Methods and Applied Research in the Behavioral, Social and Health Sciences



We currently offer workshops on Multilevel Modeling, Structural Equation Modeling, Structural Equation Models for Longitudinal Data, Mixture Models and Cluster Analysis, and Network Analysis. We also provide individually tailored instruction to groups with specific data analytic needs.


We provide consulting services on each phase of the research process, from study design to the application and interpretation of quantitative methods. We offer several modes of consulting to suit a variety of needs.


We seek to provide you with the information you need to be a knowledgeable user of quantitative methods, including updates on ongoing developments in the field, discussion of common data analytic concerns, and tutorials on commonly used techniques.


Best Methods for Handling Missing Data in Intensive Longitudinal Designs

April 13, 2018

In nearly every discipline within the behavioral, health, and educational sciences, longitudinal data have become requisite for establishing temporal precedence and distinguishing inter-individual differences in intra-individual change. Whereas traditional longitudinal designs often obtained repeated assessments at monthly or even yearly intervals, recent advances in mobile technology have allowed for the collection of multiple assessments throughout a single day. These so-called intensive longitudinal designs (ILDs) are becoming increasing prevalent in many empirical studies of human development and behavior. However, as with any advancement in design and assessment, a multitude of complexities arise when fitting statistical models to large numbers of repeated assessments often taken on smaller numbers of individuals. For example, it is not uncommon to use an ILD to obtain six daily assessments over a 14 day period on 75 individuals. Key among a variety of complexities that must be addressed is that of missing data. Standard existing methods for handling missing data are not always well suited when applied to large numbers of repeated assessments and guidance for practitioners is sparse. A recent paper in the journal Structural Equation Modeling by Linying Ji and colleagues addresses this very issue. The paper is motivated by an actual ILD in which a large number of assessments are obtained from parents in the assessment of emotional states and behaviors arising from conflicts between parents and children. In the original application, missing data are pervasive yet no well developed methods were available to address this issue. The authors then describe several modern methods for the analysis of missing data in ILDs, they conduct a computer simulation to evaluate the methods under known conditions, and they re-analyze the empirical data to demonstrate the new techniques. They conclude with recommendations for handling missing data in ILDs and provide R code to help in this endeavor.