Analyzing Criminal Trajectory Profiles: Bridging Multilevel and Group-based Approaches Using Growth Mixture Modeling

Frauke Kreuter1, Bengt Muthén2
1Univ. of Maryland,#TAB#
2University of California, Los Angeles, USA

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