Do traits predict behavior? A meta-analysis of 13 experience sampling studies

2007 ◽  
Author(s):  
Patrick Gallagher ◽  
William Fleeson
2021 ◽  
Author(s):  
Patti M. Valkenburg ◽  
Irene Ingeborg van Driel ◽  
Ine Beyens

A recurring claim in the literature is that “active” social media use (ASMU) leads to increases in well-being, whereas “passive” social media use (PSMU) leads to decreases in well-being. The aim of this scoping review was to investigate the validity of this claim by comparing the results of studies that appeared after the meta-analysis of Liu et al. (2019). We found 27 studies focusing on 85 different associations of ASMU or PSMU with well-being. Results showed that studies used a hodgepodge of operationalizations of ASMU and PSMU. Some mixed up private (e.g., direct messaging) and public (e.g., posting, browsing) ASMU and/or PSMU, which is problematic, because private SMU is more synchronous and intimate than public SMU, which may lead to different effects. The majority of the cross-sectional, virtually all the longitudinal, and most of the experience sampling studies disconfirmed the hypothesized associations of ASMU and PSMU with well-being. Moreover, the experiments revealed that the effects of PSMU depend on the content and sender of the posts. Our results indicate that it is time to abandon the active-passive dichotomy and replace it with a more valid measurement of SMU that takes characteristics of SM content, senders, and receivers into account.


2017 ◽  
Vol 183 ◽  
pp. 49-55 ◽  
Author(s):  
Hyein Cho ◽  
Rachel Gonzalez ◽  
Lindsey M. Lavaysse ◽  
Sunny Pence ◽  
Daniel Fulford ◽  
...  

2006 ◽  
Vol 59 (9) ◽  
pp. 1261-1285 ◽  
Author(s):  
Kevin Daniels ◽  
Ruth Hartley ◽  
Cheryl J. Travers

Author(s):  
Eric D. Heggestad ◽  
Liana Kreamer ◽  
Mary M. Hausfeld ◽  
Charmi Patel ◽  
Steven G. Rogelberg

2019 ◽  
Vol 44 (3) ◽  
pp. 427-435 ◽  
Author(s):  
Yan Ruan ◽  
Harry T. Reis ◽  
Wojciech Zareba ◽  
Richard D. Lane

2019 ◽  
Vol 30 (6) ◽  
pp. 863-879 ◽  
Author(s):  
Elise K. Kalokerinos ◽  
Yasemin Erbas ◽  
Eva Ceulemans ◽  
Peter Kuppens

Emotion differentiation, which involves experiencing and labeling emotions in a granular way, has been linked with well-being. It has been theorized that differentiating between emotions facilitates effective emotion regulation, but this link has yet to be comprehensively tested. In two experience-sampling studies, we examined how negative emotion differentiation was related to (a) the selection of emotion-regulation strategies and (b) the effectiveness of these strategies in downregulating negative emotion ( Ns = 200 and 101 participants and 34,660 and 6,282 measurements, respectively). Unexpectedly, we found few relationships between differentiation and the selection of putatively adaptive or maladaptive strategies. Instead, we found interactions between differentiation and strategies in predicting negative emotion. Among low differentiators, all strategies (Study 1) and four of six strategies (Study 2) were more strongly associated with increased negative emotion than they were among high differentiators. This suggests that low differentiation may hinder successful emotion regulation, which in turn supports the idea that effective regulation may underlie differentiation benefits.


2011 ◽  
Vol 53 (4) ◽  
pp. 479-506 ◽  
Author(s):  
Lynda Andrews ◽  
Rebekah Russell Bennett ◽  
Judy Drennan

This paper reports the feasibility and methodological considerations of using the Short Message System Experience Sampling (SMS-ES) method, which is an experience sampling research method developed to assist researchers to collect repeat measures of consumers' affective experiences. The method combines SMS with web-based technology in a simple yet effective way. It is described using a practical implementation study that collected consumers' emotions in response to using mobile phones in everyday situations. The method is further evaluated in terms of the quality of data collected in the study, as well as against the methodological considerations for experience sampling studies. These two evaluations suggest that the SMS-ES method is both a valid and reliable approach for collecting consumers' affective experiences. Moreover, the method can be applied across a range of for-profit and not-for-profit contexts where researchers want to capture repeated measures of consumers' affective experiences occurring over a period of time. The benefits of the method are discussed, to assist researchers who wish to apply the SMS-ES method in their own research designs.


Author(s):  
Felix D. Schönbrodt ◽  
Caroline Zygar-Hoffmann ◽  
Steffen Nestler ◽  
Sebastian Pusch ◽  
Birk Hagemeyer

AbstractThe investigation of within-person process models, often done in experience sampling designs, requires a reliable assessment of within-person change. In this paper, we focus on dyadic intensive longitudinal designs where both partners of a couple are assessed multiple times each day across several days. We introduce a statistical model for variance decomposition based on generalizability theory (extending P. E. Shrout & S. P. Lane, 2012), which can estimate the relative proportion of variability on four hierarchical levels: moments within a day, days, persons, and couples. Based on these variance estimates, four reliability coefficients are derived: between-couples, between-persons, within-persons/between-days, and within-persons/between-moments. We apply the model to two dyadic intensive experience sampling studies (n1 = 130 persons, 5 surveys each day for 14 days, ≥ 7508 unique surveys; n2 = 508 persons, 5 surveys each day for 28 days, ≥ 47764 unique surveys). Five different scales in the domain of motivational processes and relationship quality were assessed with 2 to 5 items: State relationship satisfaction, communal motivation, and agentic motivation; the latter consists of two subscales, namely power and independence motivation. Largest variance components were on the level of persons, moments, couples, and days, where within-day variance was generally larger than between-day variance. Reliabilities ranged from .32 to .76 (couple level), .93 to .98 (person level), .61 to .88 (day level), and .28 to .72 (moment level). Scale intercorrelations reveal differential structures between and within persons, which has consequences for theory building and statistical modeling.


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