ABSTRACT

The main purpose of the work is to showcase the interdisciplinary engineering approaches in modeling and understanding human behaviors during interpersonal interactions those that could be typical, distressed, or atypical. The ability to measure human behaviors quantitatively has been a core component and a major research direction in both fields of engineering and psychology – though often with distinct approaches designed for different targeted applications. Engineering methods often strive to achieve high predictive accuracies using behavioral informatics techniques; these techniques employ a combination of behavior measures derived using automated signal based descriptors, and of statistical frameworks modeled using machine learning techniques. These approaches are often distinct from the observational approaches the gold standard for the past three decades in the study of psychology, even in clinical settings. The observational approaches are largely based on human subjective judgments.

part I|16 pages

Modeling Human Behaviors: An Engineering Approach

part II|30 pages

Affective Computing from Speech

chapter 3|17 pages

Individual Utterance Emotion Recognition

chapter 4|10 pages

Dialog-based Emotion Recognition

part III|46 pages

Quantifying Human Behavior in Psychology

part IV|12 pages

Data-driven Perceptual Experiment

part V|4 pages

Outlook of BSP