The interpretation of cross-effects from vector autoregressive models to infer structure and causality among constructs is widespread and sometimes problematic. I describe problems in the interpretation of cross-effects when processes that are thought to fluctuate continuously in time are, as is typically done, modeled as changing only in discrete steps (as in e.g., structural equation modeling)-zeroes in a discrete-time temporal matrix do not necessarily correspond to zero effects in the underlying continuous processes, and vice versa. This has implications for the common case when the presence or absence of cross-effects is used for inference about underlying causal processes. I demonstrate these problems via simulation, and also show that when an underlying set of processes are continuous in time, even relatively few direct causal links can result in much denser temporal effect matrices in discrete-time. I demonstrate one solution to these issues, namely parameterizing the system as a stochastic differential equation and focusing inference on the continuous-time temporal effects. I follow this with some discussion of issues regarding the switch to continuous-time, specifically regularization, appropriate measurement time lag, and model order. An empirical example using intensive longitudinal data highlights some of the complexities of applying such approaches to real data, particularly with respect to model specification, examining misspecification, and parameter interpretation. (PsycInfo Database Record (c) 2025 APA, all rights reserved).
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Front Chem
November 2024
Institute of Bioorganic Chemistry, Polish Academy of Sciences, Poznań, Poland.
Int J Soc Psychiatry
November 2024
Department of Psychology, University of Bologna, Cesena (FC), Italy.
Background: There is theory and evidence supporting a relationship between neighborhood cohesion and mental health among adult people. However, most studies have used a cross-sectional design, and longitudinal studies have provided mixed support for this hypothesis. Moreover, while neighborhood cohesion is assumed to be a consistent predictor of mental health, the possibility of a reciprocal relation has been overlooked.
View Article and Find Full Text PDFPsychol Methods
February 2025
Institute of Education, University of Zurich.
The interpretation of cross-effects from vector autoregressive models to infer structure and causality among constructs is widespread and sometimes problematic. I describe problems in the interpretation of cross-effects when processes that are thought to fluctuate continuously in time are, as is typically done, modeled as changing only in discrete steps (as in e.g.
View Article and Find Full Text PDFAging Cell
March 2024
Biomedical Research Institute of Lleida (IRBLLEIDA) - +Pec Proteomics Research Group (+PPRG) - Neuroscience Area, University Hospital Arnau de Vilanova (HUAV), Lleida, Spain.
Aging is the primary risk factor for the development of numerous human chronic diseases. On a molecular level, it significantly impacts the regulation of protein modifications, leading to the accumulation of degenerative protein modifications (DPMs) such as aberrant serine phosphorylation (p-Ser) and trioxidized cysteine (t-Cys) within the proteome. The altered p-Ser is linked to abnormal cell signaling, while the accumulation of t-Cys is associated with chronic diseases induced by oxidative stress.
View Article and Find Full Text PDFAten Primaria
February 2015
Departamento de Psiquiatría y Psicología Social, Universidad de Murcia, Murcia, España.
Objectives: This study examines the relationship, and relevance of the effect between the duration of the cases of temporary sick leave, as an indicator of absenteeism, and several characteristics (sociodemographic, labor, organizational and the environment) of workers covered by the Social Security System in Spain.
Method: A retrospective analysis was conducted on 598,988 processes, between 15 and 365days. The relationships between length of absence, and several characteristics such as demographic, sociodemographic, occupational, organizational and environment characteristics were determined (using P values).
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