The temporal structure of behavior contains a rich source of information about its dynamic organization, origins, and development. Today, advances in sensing and data storage allow researchers to collect multiple dimensions of behavioral data at a fine temporal scale both in and out of the laboratory, leading to the curation of massive multimodal corpora of behavior. However, along with these new opportunities come new challenges. Theories are often underspecified as to the exact nature of these unfolding interactions, and psychologists have limited ready-to-use methods and training for quantifying structures and patterns in behavioral time series. In this paper, we will introduce four techniques to interpret and analyze high-density multi-...
The traditional approach to research in Psychology has been to use cross-sectional designs. While te...
Extraction of complex temporal patterns, such as human behaviors, from time series data is a challen...
Clusterwise Non-negative Matrix Factorization (NMF) for capturing variability in time profiles In ma...
The temporal structure of behavior contains a rich source of information about its dynamic organizat...
As behavioral science becomes progressively more data driven, the need is increasing for appropriate...
Cross-recurrence quantification analysis (CRQA) is a powerful nonlinear time-series method to study ...
The temporal variability in children's behaviour constitutes a rich source of information about the ...
Discovering hidden recurring patterns in observable behavioral processes is an important issue frequ...
Analysis of Time-Evolving Systems is an important and challenging problem. Although it is a necessar...
A basic tenet in the realm of modern behavioral sciences is that behavior consists of patterns in ti...
Identifying causality in multivariate time-series data is a topic or significant interest due to its...
This paper describes the R package crqa to perform cross-recurrence quantification analysis of two t...
We propose a novel approach to discovering latent structures from multimodal time series. We view a ...
In this thesis, a highly comparative framework for time-series analysis is developed. The approach d...
Behavioral ecologists frequently use observational methods, such as instantaneous scan sampling, to ...
The traditional approach to research in Psychology has been to use cross-sectional designs. While te...
Extraction of complex temporal patterns, such as human behaviors, from time series data is a challen...
Clusterwise Non-negative Matrix Factorization (NMF) for capturing variability in time profiles In ma...
The temporal structure of behavior contains a rich source of information about its dynamic organizat...
As behavioral science becomes progressively more data driven, the need is increasing for appropriate...
Cross-recurrence quantification analysis (CRQA) is a powerful nonlinear time-series method to study ...
The temporal variability in children's behaviour constitutes a rich source of information about the ...
Discovering hidden recurring patterns in observable behavioral processes is an important issue frequ...
Analysis of Time-Evolving Systems is an important and challenging problem. Although it is a necessar...
A basic tenet in the realm of modern behavioral sciences is that behavior consists of patterns in ti...
Identifying causality in multivariate time-series data is a topic or significant interest due to its...
This paper describes the R package crqa to perform cross-recurrence quantification analysis of two t...
We propose a novel approach to discovering latent structures from multimodal time series. We view a ...
In this thesis, a highly comparative framework for time-series analysis is developed. The approach d...
Behavioral ecologists frequently use observational methods, such as instantaneous scan sampling, to ...
The traditional approach to research in Psychology has been to use cross-sectional designs. While te...
Extraction of complex temporal patterns, such as human behaviors, from time series data is a challen...
Clusterwise Non-negative Matrix Factorization (NMF) for capturing variability in time profiles In ma...