scholarly journals Family Demands and Satisfaction with Family Life During the COVID-19 Pandemic

2021 ◽  
Author(s):  
Cort Rudolph ◽  
Hannes Zacher

Based upon theories that describe the process of family stress adaptation, we model changes in family demands and satisfaction with family life during the COVID-19 pandemic among a sample of n = 1,042 respondents from Germany. Moreover, based on ecological perspectives on the role of family context, we consider partnership status and parental status as predictors of changes in these variables over time. Using a longitudinal research design, we model co-occurring trajectories of changes in family demands and satisfaction with family life between early April 2020 and early September 2020 using unconditional and conditional multivariate latent growth curve modeling. Results suggest that, on average, both family demands and satisfaction with family life increased across this time period and that having minor children ≤ 17 years of age was associated with decreases in satisfaction with family life across time. Moreover, an exploratory analysis suggests that partnership status may help offset the positive relationship between parental status and family demands. These findings have implications for future research on family life during a crisis and suggest that single parents of young children should be the focus of interventions to reduce family-related stressors and increase levels of family wellbeing during times of crisis.

Author(s):  
James M. Diefendorff ◽  
Faith Lee ◽  
Daniel Hynes

Longitudinal research involves collecting data from the same entities on two or more occasions. Almost all organizational theories outline a longitudinal process in which one or more variables cause a subsequent change in other variables. However, the majority of empirical studies rely on research designs that do not allow for the proper assessment of change over time or the isolation of causal effects. Longitudinal research begins with longitudinal theorizing. With this in mind, a variety of time-based theoretical concepts are helpful for conceptualizing how a variable is expected to change. This includes when variables are expected to change, the form or shape of the change, and how big the change is expected to be. To aid in the development of causal hypotheses, researchers should consider the history of the independent and dependent variables (i.e., how they may have been changing before the causal effect is examined), the causal lag between the variables (i.e., how long it takes for the dependent variable to start changing as a result of the independent variable), as well as the permanence, magnitude, and rate of the hypothesized change in the dependent variable. After hypotheses have been formulated, researchers can choose among various research designs, including experimental, concurrent or lagged correlational, or time series. Experimental designs are best suited for inferring causality, while time series designs are best suited for capturing the specific timing and form of change. Lagged correlation designs are useful for examining the direction and magnitude of change in a variable between measurements. Concurrent correlational designs are the weakest for inferring change or causality. Theory should dictate the choice of design, and designs can be modified and/or combined as needed to address the research question(s) at hand. Next, researchers should pay attention to their sample selection, the operationalization of constructs, and the frequency and timing of measures. The selected sample must be expected to experience the theorized change, and measures should be gathered as often as is necessary to represent the theorized change process (i.e., when the change occurs, how long it takes to unfold, and how long it lasts). Experimental manipulations should be strong enough to produce theorized effects and measured variables should be sensitive enough to capture meaningful differences between individuals and also within individuals over time. Finally, the analytic approach should be chosen based on the research design and hypotheses. Analyses can range from t-test and analysis of variance for experimental designs, to correlation and regression for lagged and concurrent designs, to a variety of advanced analyses for time series designs, including latent growth curve modeling, coupled latent growth curve modeling, cross-lagged modeling, and latent change score modeling. A point worth noting is that researchers sometimes label research designs by the statistical analysis commonly paired with the design. However, data generated from a particular design can often be analyzed using a variety of statistical procedures, so it is important to clearly distinguish the research design from the analytic approach.


2019 ◽  
Author(s):  
Ted Schwaba ◽  
Richard Robins ◽  
Emily Grijalva ◽  
Wiebke Bleidorn

Objective: Although numerous studies have demonstrated that personality traits predict important love and work outcomes, there is mixed evidence for the relevance of openness to experience to love and work. We sought to better understand the long-term consequences of openness in these two domains.Method: We examined associations between openness and 51 love and work outcomes using data from a 24-year longitudinal study of UC Berkeley students (N=497) followed from the beginning of college into midlife. Using latent growth curve modeling, we examined whether openness levels and change in openness from college to midlife were associated with downstream love and work outcomes Additionally, we tested whether three facets of openness (intellectual interests, aesthetic interests, and unconventionality) had differential associations with outcomes.Results: Although stable levels of openness predicted few work or love outcomes, individual differences in openness change were associated with delayed romantic commitment and some career outcomes. In addition, there were significant differences among facets of openness: intellectual interests were highly associated with educational outcomes, whereas aesthetic interests and unconventionality predicted non-traditional career motivations.Conclusions: We situate these results in past research on real-world consequences of personality traits and discuss implications for theory and future research.


2021 ◽  
Vol 1 (2) ◽  
pp. 1-30
Author(s):  
Zhenqiu Lu ◽  
Zhiyong Zhang

Latent growth curve models (LGCMs) are becoming increasingly important among growth models because they can effectively capture individuals' latent growth trajectories and also explain the factors that influence such growth by analyzing the repeatedly measured manifest variables. However, with the increase in complexity of LGCMs, there is an increase in issues on model estimation. This research proposes a Bayesian approach to LGCMs to address the perennial problem of almost all longitudinal research, namely, missing data. First, different missingness models are formulated. We focus on non-ignorable missingness in this article. Specifically, these models include the latent intercept dependent missingness, the latent slope dependent missingness, and the potential outcome dependent missingness. To implement the model estimation, this study proposes a full Bayesian approach through data augmentation algorithm and Gibbs sampling procedure. Simulation studies are conducted and results show that the proposed method accurately recover model parameters and the mis-specified missingness may result in severely misleading conclusions. Finally, the implications of the approach and future research directions are discussed.


2006 ◽  
Author(s):  
Rosalie J. Hall ◽  
Robert G. Lord ◽  
Hsien-Yao Swee ◽  
Barbara A. Ritter ◽  
David A. DuBois

Author(s):  
Kalin Z. Salinas ◽  
Amanda Venta

The current study proposed to determine whether adolescent emotion regulation is predictive of the amount and type of crime committed by adolescent juvenile offenders. Despite evidence in the literature linking emotion regulation to behaviour problems and aggression across the lifespan, there is no prior longitudinal research examining the predictive role of emotion regulation on adolescent recidivism, nor data regarding how emotion regulation relates to the occurrence of specific types of crimes. Our primary hypothesis was that poor emotion regulation would positively and significantly predict re-offending among adolescents. We tested our hypothesis within a binary logistic framework utilizing the Pathways to Desistance longitudinal data. Exploratory bivariate analyses were conducted regarding emotion regulation and type of crime in the service of future hypothesis generation. Though the findings did not indicate a statistically significant relation between emotion regulation and reoffending, exploratory findings suggest that some types of crime may be more linked to emotion regulation than others. In sum, the present study aimed to examine a hypothesized relation between emotion regulation and juvenile delinquency by identifying how the individual factor of dysregulated emotion regulation may have played a role. This study’s findings did not provide evidence that emotion regulation was a significant predictor of recidivism over time but did suggest that emotion regulation is related to participation in certain types of crime one year later. Directions for future research that build upon the current study were described. Indeed, identifying emotion regulation as a predictor of adolescent crime has the potential to enhance current crime prevention efforts and clinical treatments for juvenile offenders; this is based on the large amount of treatment literature, which documents that emotion regulation is malleable through treatment and prevention programming.


Author(s):  
Tomás Caycho-Rodríguez ◽  
Félix Neto ◽  
Mario Reyes-Bossio ◽  
Lindsey W. Vilca ◽  
Cirilo H. García Cadena ◽  
...  

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