- 1Kiang Wu Nursing College of Macau, Macao, Macao SAR, China
- 2Medicine School of Hunan Normal University, Changsha, China
Background: In an era marked by increasing loneliness, understanding the impact of parenting practices on adolescent well-being and resilience is crucial. This study investigates the relationship between parental democratic communication and key indicators of adolescent adjustment and well-being in China, with a focus on the mediating role of societal trust.
Objective: The study aimed to examine the direct effects of parental democratic communication on Chinese adolescents’ subjective well-being and to explore the mediating roles of societal trust in this relationship.
Methods: Data were collected from 691 high school students as part of the 2020 Chinese Family Panel Studies (CFPS). The sample was divided into two age groups: 16-17 years old (n=493) and 18 years old (n=198). Multi-group Structural Equation Modeling (SEM) was used to analyze the data.
Results: SEM analysis revealed age-specific effects of parental democratic communication (PDC) on subjective well-being (SWB). For ages 16-17, PDC directly influenced SWB (β=0.269, p<0.001) with significant serial mediations through societal trust, negative emotion, and pleasant life experiences. For 18-year-olds, only societal trust mediated the PDC-SWB relationship (β=0.16, p<0.01). Meanwhile, the effect of societal trust is superior to that of other mediating variables in both groups. Multi-group analysis showed measurement invariance but differences in structural relationships across age groups.
Conclusions: Parental democratic communication has a direct as well as serial mediated impact on mid-adolescents’ subjective well-being and an indirect impact through societal trust in late adolescence, among Chinese adolescents. These results point to a pattern we term “Societal Trust-Mediated Well-Being,” which appears to wield greater influence than negative emotions or pleasant life experiences, particularly among older adolescents. These results underscore the need for developmentally tailored approaches and integrative interventions that adapt to the changing dynamics of adolescent well-being in a rapidly evolving society.
1 Introduction
Adolescents in the 21st century confront an array of unique challenges as they navigate a world profoundly transformed by technological advancements, globalization, and evolving social norms (1). These societal shifts have prompted researchers to reassess the factors that contribute to adolescent well-being and resilience (2). Recent studies have revealed troubling trends in adolescent mental health. Twenge et al. (3) documented a persistent decline in life satisfaction and a corresponding increase in mental distress among adolescents between 2005 and 2017. In a similar vein, Cosma et al. (4) observed a downward trajectory in adolescent mental well-being across 24 European countries from 2014 to 2018.
From the perspective of positive psychology, subjective well-being serves multiple functional roles in adolescent development. A longitudinal investigation by Rose et al. (5) demonstrated that higher life satisfaction in adolescents predicted enhanced academic performance, fewer behavioral issues, and improved social relationships over time. Furthermore, subjective well-being functions as a psychological resource, enhancing resilience and aiding adolescents in coping with life stressors and challenges (6, 7). In light of ongoing global challenges, including the COVID-19 pandemic, Marques de Miranda et al. (8) underscored the critical importance of understanding and promoting factors that contribute to adolescent well-being.
Contemporary social trust faces numerous challenges, including burnout (9, 10), misinformation (11), income inequality (12), and environments that foster loneliness, characterized by social isolation and over-reliance on social media (13). The COVID-19 pandemic has exacerbated these issues, leading to increased social isolation and disrupting normal social development processes (14). Among these factors, parenting practices play a crucial role in shaping adolescent outcomes, as the family context remains a primary influence during this formative period (15). Positive familial relationships and social connections have been consistently linked to better mental health outcomes (16).
Parental democratic communication, characterized by open dialogue, emotional support, and respect for autonomy, has been linked to positive youth development, particularly in Western studies (1). This approach encourages adolescents’ participation in family decision-making and promotes mutual respect between parents and children (17). Key elements include open two-way communication, shared decision-making, parental understanding in interpreting rules, and respect for adolescent autonomy (18, 19). Research suggests that democratic communication reduces anxiety, depression and internalization behaviors (20) while increasing self-esteem and social adjustment in adolescents (21). Effective parent-child communication fosters family cohesion and supports pleasant life experiences, which serve as a psychological buffer against negative emotions and enhance adolescents’ resilience and well-being (22–28). However, studies in non-Western settings, particularly in China, are limited and show conflicting results (29–32). This gap is concerning given China’s unique cultural context and rapid societal changes.
Societal trust, a key component of social capital, plays a crucial role in adolescent psychosocial development (33). For adolescents, it encompasses interpersonal trust, trust in institutions, and a sense of social connectedness (34, 35). Parental democratic communication is thought to foster societal trust by shaping beliefs about social justice and others’ dependability (36–38). While higher levels of societal trust have been linked to increased subjective well-being in adolescents (39–42), the potential mediating role of social trust between parental democratic communication and adolescent well-being remains underexplored.
Adolescence encompasses distinct developmental stages, with significant changes occurring between early/middle (16-17 years) and late adolescence/emerging adulthood (18 years) (43–45). The age of 18 marks a critical transition, legally defined as adulthood and characterized by new responsibilities and autonomy. Developmentally, 18-year-olds face unique challenges in identity formation and relationship establishment (46), supported by ongoing prefrontal cortex maturation that influences emotional regulation and decision-making (47). This age often coincides with major life changes like high school graduation or workforce entry, described as an “experience of loss” affecting mental health (48). Importantly, research demonstrates age-specific effects of parenting on adolescent outcomes: parental control’s impact on depressive symptoms decreases by late adolescence (49), while the influence of parental communication and warmth varies between 16-17 and 18-year-olds (50, 51). These developmental, neurological, social, and familial differences justify separate examination of 16-17 and 18-year-old cohorts to capture their distinct experiences and needs.
While bivariate correlations have been well established among parental democratic communication, societal trust, negative emotions, pleasant life experiences, and adolescent well-being (Figure 1), gaps remain in understanding the directions and magnitudes of these relationships. Particularly in non-Western contexts, the specific mediating role of social trust between democratic parental communication and adolescent well-being remains underexplored, as does the variation of this relationship across different stages of adolescence.
Figure 1. Conceptual framework (52).
Using multi-group Structural Equation Modeling (SEM) to test a complex theoretical model comprehensively, this study aims to examine the effects of parental democratic communication on adolescents’ subjective well-being, focusing on the mediating role of societal trust. SEM allows for the accounting of measurement error and enables rigorous comparison across age groups. Specifically, this investigation seeks to address the following research questions:
1) How does parental democratic communication influence subjective well-being among Chinese adolescents?
2) To what extent does societal trust mediate the relationship between parental democratic communication and adolescents’ subjective well-being?
3) How do the effects of parental democratic communication on adolescent well-being differ between mid-adolescents (16-17 years old) and late adolescents (18 years old)?
By addressing these questions, this study aims to contribute to a broader understanding of parental communication and societal trust in adolescent development, providing insights specific to the Chinese cultural context. This research will enhance our theoretical understanding of the mechanisms through which parental communication influences adolescent well-being and offer practical implications for supporting age-sensitive adolescent development in rapidly changing societies.
2 Materials and methods
2.1 Participants and procedure
This investigation drew upon data from the 2020 China Family Panel Studies (CFPS), a nationally representative survey funded by the National Natural Science Foundation of China and administered by Peking University’s Institute of Social Science Survey (53). Our sample selection process was as follows:
Inclusion criteria:
1. Age between 16-18 years old
Exclusion criteria:
1. Missing data for important variables or total missing data for a respondent reaching 20% or more
From the initial 28530 samples, we selected respondents aged 16-18 years (n=910). We excluded cases with missing data for key variables or where total missing data exceeded 20% per respondent. The final sample consisted of 691respondents (493 aged 16-17 and 198 aged 18), with balanced distribution of gender and urban/rural residency.
2.2 Measures
Parental Democratic Communication. We assessed this construct based on Baumrind’s (54) theory of democratic parenting using six items that measured the frequency of parents’ democratic communication styles over the preceding 12 months. Including “Parents ask for reasons”, “Parents encourage you to try to do things”, “Parents talk to you kindly”, “Parents encourage you to think independently”, “Parents tell you why” and “Parents like to talk to you.” Participants responded on a 5-point Likert scale ranging from 1 (never) to 5 (always), with higher scores reflecting stronger democratic parental communication. The scale demonstrated good internal consistency (Cronbach’s α = .836 for 16-17-year-olds;. 809 for 18-year-olds).
Societal Trust. With reference to the key dimensions of social trust identified in previous research (55), and based on the results of principal component factor analysis, we selected three items - trust in neighbors, local government officials, and doctors - as measures of societal trust. These items best reflect social trust in everyday life.1 This construct was measured using three items assessing trust in neighbors, local government officials, and doctors. Responses were recorded on a 10-point scale from 0 (very distrustful) to 10 (very trusting), with higher scores indicating greater community trust. The internal consistency of the three-item societal trust measure was assessed using Cronbach’s alpha. For 16-17-year-olds, α = .661, and for 18-year-olds, α = .620 (57). This is consistent with findings on the multidimensional nature of social trust in China (58).
Negative Emotion and Pleasant Life. The CFPS2020 used a modified version of the Center for Epidemiologic Studies Depression Scale (CESD-8) (59). Based on its core characteristics (60) and supported by factor analysis, we conceptualized the scale as having two dimensions: pleasant life and negative emotions (61, 62). The Pleasant Life construct was measured using two items from the CESD-8: “I feel happy” and “I live a happy life.” Responses were recorded on the same 4-point scale as the Negative Emotions subscale, ranging from 1 (less than a day) to 4 (5-7 days). Higher scores on this subscale indicate a greater sense of life satisfaction. The two items showed moderate correlation (r = .572, p <.01 for 16-17-year-olds; r = .659, p <.01 for 18-year-olds), supporting their use as a composite measure.
To refine the negative emotions subscale, we conducted a series of analyses:
1. Factor Analysis: Our initial factor analysis supported a two-factor structure, aligning with previous research on emotion dynamics in major depressive disorder (60).
2. Item Reduction: Within the negative emotions factor, we examined the communalities of the six original items. Two items, “sleep difficulties” and “feeling life is unmanageable,” were removed due to common factor variance extraction rate below 0.5 (63), indicating they shared less variance with other items (Supplementary Material 4).
3. Model Refinement: Using AMOS software, we examined modification indices for the remaining items. The covariance between error terms for “I felt everything I did was an effort” and “I felt depressed” was notably high (MI = 7.83) in the 18-year-old group, suggesting potential redundancy or inconsistency with the model.
4. Final Item Selection: Considering these statistical results and aiming to improve model fit, parsimony, and explanatory power while maintaining theoretical integrity, we further removed the item “I felt everything I did was an effort.”
The final negative emotions subscale comprised three items: “I felt depressed,” “I felt lonely,” and “I felt sad.” Participants were asked to report the frequency of these negative emotions over the past week. Responses were recorded on a 4-point scale ranging from 1 (less than a day) to 4 (5-7 days), with higher scores indicating more frequent negative emotions. This refined subscale balances statistical considerations with the core theoretical construct of negative emotions in depression. The scale demonstrated good internal consistency, with Cronbach’s alpha of.744 for 16-17-year-olds and.708 for 18-year-olds, surpassing the conventional.70 threshold for acceptable reliability.
Subjective Well-being. We assessed this construct using three items that measured happiness, life satisfaction, and future confidence. Due to the mixed scale format, items were standardized prior to reliability analysis. The scale showed acceptable internal consistency (Cronbach’s α = .689 for 16-17-year-olds;.666 for 18-year-olds).
All measures were derived from the CFPS questionnaire, which has been validated for use in the Chinese context (53). We included gender and urban-rural residence as control variables.
2.3 Data analysis
To address the non-consistency in score statistics between questions, we standardized individual question scores before aggregating them to construct final scores for latent variables. We computed descriptive statistics using SPSS 26.0 and examined the factor structure of key variables through exploratory factor analysis (EFA).
We tested hypothesized mediation models and conducted multicohort analyses across age groups using structural equation modeling (SEM) in AMOS 26.0 (64). Following Anderson and Gerbing’s (65) two-step approach, we first estimated measurement models using confirmatory factor analysis (CFA) to assess construct validity and reliability. We then estimated the structural model to test hypothesized relationships and mediating roles of societal trust, negative emotions, and pleasant life.
We use Maximum Likelihood (ML), set the convergence criteria from 1E-05 to 0.001, and limit the number of iterations to 50, comparative fit index (CFI), Tucker-Lewis index (TLI), root mean square error of approximation (RMSEA), and standardized root mean square residual (SRMR) to evaluate model fit. We tested mediating effects using a bootstrap method (2,000 resamples) to estimate bias-corrected 95% confidence intervals (CIs), with significance determined if the 95% CI did not include zero (66). Using age as the grouping variable, we examined unconstrained, measurement-weighted, structural-weighted, structural covariance, structural residual, and measurement-residual models for the two age groups (29–31) to assess model structure homogeneity, factor loadings, intercepts, and error variances. We determined model stability and invariance by comparing the absolute value of the critical ratio (α = .05 corresponds to a critical value of 1.96) of fit metrics and parameter differences across models (67). Pathways with critical ratios > 1.96 indicated significant differences, determining pathway influence across groups (68).
To rigorously test our model’s robustness, we conducted a comprehensive sensitivity analysis (Supplementary Material 2). This analysis (69) involved varying several key aspects of our modeling approach: Employing different parameter estimation methods; Adjusting convergence criteria; Increasing the number of iterations; Expanding the number of bootstrap replications;and testing theoretically feasible alternative models. The results of this sensitivity analysis demonstrated remarkable consistency and stability in our model’s performance. Across these variations, the key fit indices (CFI, TLI, RMSEA, and SRMR) remained largely unchanged, exhibiting only minor fluctuations. This stability across different analytical conditions provides strong evidence for the robustness of our model, enhancing confidence in the reliability and generalizability of our findings.
In this study, semPower package 2.1.1 of R version 4.3.1 (2023-06-16 ucrt) was used for power analysis to check the reasonableness of the sample size (Supplementary Material 3). Calculations using the RMSEA values and degrees of freedom of both models yielded an actual efficacy of 80.03% in the 16-17-year-old group and 80.13% in the 18-year-old group, which are both greater than 80%. This result proves that the sample sizes of the two models are at a reasonable level, which can provide reliable support for the conclusions of the study and ensure that the results of the study are statistically valid and credible.
3 Results
3.1 Test of common method bias
We assessed common method bias using Harman’s single-factor method (70). For both age groups, five factors emerged with eigenvalues greater than 1. The first factor accounted for 19.958% and 18.096% of the variance for the 16-17 and 18-year-old groups, respectively. These values fall below the 40% threshold, suggesting no significant common method bias in either group.
3.2 Descriptive statistics and correlations
For the 16-17 age group, skewness values ranged from -0.62 to 1.23, and kurtosis values ranged from -0.25 to 2.48. The 18-year-old group exhibited skewness values between -0.63 and 0.54, and kurtosis values between -0.37 and 1.38 (Table 1). These values fall within acceptable ranges, indicating normal distribution of the data (71).
Correlation analyses (Table 2) revealed significant relationships between key variables. In both age groups, subjective well-being showed significant positive correlations with parental democratic communication (r = 0.30, p <.01 for 16-17; r = 0.25, p <.01 for 18), societal trust (r = 0.34, p <.01 for 16-17; r = 0.27, p <.01 for 18), and pleasant life (r = 0.25, p <.01 for 16-17; r = 0.14, p <.05 for 18). Conversely, subjective well-being demonstrated significant negative correlations with negative emotions (r = -0.34, p <.01 for 16-17; r = -0.23, p <.01 for 18). In the 16-17 age group, pleasant living was positively correlated with parental democratic communication (r = 0.23, p <.01) and social trust (r = 0.15, p <.01) and negatively correlated with negative emotions (r = -0.28, p <.01). In the 18-year-old group, pleasant life was positively correlated with parental democratic communication (r = 0.21, p <.01) and negatively correlated with negative emotions (r = -0.16, p <.05). Negative emotions were negatively correlated with parental democratic communication (r = -0.19, p <.01 for 16-17) and social trust (r = -0.19, p <.01 for 16-17; r = -0.14, p <.05 for 18). In both groups, social trust was positively correlated with parental democratic communication (r = 0.15, p <.01 for 16-17; r = 0.26, p <.01 for 18).
3.3 Measurement model
We evaluated the measurement model using exploratory factor analysis (EFA), followed by confirmatory factor analysis (CFA). We conducted these analyses separately for both age groups.
3.3.1 Exploratory factor analysis (EFA)
The Kaiser-Meyer-Olkin (KMO) values were 0.832 for the 16-17 age group and 0.741 for the 18-year-old group, both exceeding the recommended threshold of 0.6. Bartlett’s test of sphericity was significant for both groups (χ² (136) = 2386.343, p <.001 for 16-17; χ² (136) = 878.814, p <.001 for 18), indicating the data were suitable for factor analysis. Principal component analysis revealed that the cumulative variance explained was 62.892% for the 16-17 group and 61.649% for the 18-year-old group, suggesting good factor representation (Supplementary Material 5).
3.3.2 Confirmatory factor analysis (CFA)
The measurement model demonstrated good fit for both age groups. For the 16-17 group: χ²/df = 1.856, SRMR = 0.0436, RMSEA = 0.042, GFI = 0.953, AGFI = 0.935, TLI = 0.949, CFI = 0.959. For the 18-year-old group: χ²/df = 1.38, SRMR = 0.0599, RMSEA = 0.044, GFI = 0.921, AGFI = 0.890, TLI = 0.933, CFI = 0.946.
Construct validity and reliability were assessed for both age groups. For the 16-17 age group, all factor loadings exceeded 0.5, composite reliabilities (C.R.) were above 0.7 (72), and the average variance extracted (AVE) ranged from 0.406 to 0.569. For the 18-year-old group, factor loadings were above 0.4, composite reliabilities exceeded 0.6, and AVE ranged from 0.376 to 0.718 (Supplementary Table 1). Discriminant validity was established for both age groups (Table 3), as the square root of the AVE for each construct was greater than its correlations with other constructs.
Table 3. Discriminant validity analysis: square root of AVE and correlations among latent variables for 16-17 and 18-year-old groups.
3.4 Structural equation modeling
3.4.1 Direct effect
As shown in Figure 2, for the 16-17 age group, parental democratic communication significantly influenced students’ subjective well-being (β=0.269, SE=0.065, p<0.001, 95%CI [0.133, 0.39]). However, for the 18-year-old group (Figure 3), this effect was not significant (β=0.128, SE=0.143, p>0.05, 95% CI [-0.19, 0.375]).
Figure 2. Serial mediation model of parental democratic communication’s effect on subjective well-being among 16-17-year-olds. ***p<0.001, **p<0.01, *p<0.05.
Figure 3. Serial mediation model of parental democratic communication’s effect on subjective well-being among 18-year-olds. ***p<0.001, **p<0.01, *p<0.05.
3.4.2 Mediation effects
In the 16-17 age group (Figure 2), significant mediation effects were observed for:
• Societal trust (β=0.073, SE=0.026, p<0.01, 95%CI [0.031, 0.14])
• Negative emotion (β=0.046, SE=0.027, p<0.05, 95%CI [0.005, 0.113])
• Pleasant life (β=0.045, SE=0.023, p<0.05, 95%CI [0.006, 0.097])
For the 18-year-old group (Figure 3), only societal trust demonstrated a significant mediation effect (β=0.16, SE=0.076, p<0.01, 95%CI [0.044, 0.368]). Negative emotion (β=0.01, SE=0.027, p>0.05, 95%CI [-0.029, 0.094]) and pleasant life (β=-0.038, SE=0.037, p>0.05, 95%CI [-0.149, 0.01]) did not show significant mediation effects.
3.4.3 Serial mediation
For the 16-17 age group (Figure 2), the total indirect effect was significant (β=0.206, SE=0.041, p<0.01, 95%CI [0.133, 0.292]). Two significant serial mediation pathways were identified:
• Parental democratic communication →societal trust → negative emotion → well-being (β=0.011, SE=0.006, p<0.01, 95%CI [0.003, 0.027])
• Parental democratic communication → pleasant life → negative emotion → well-being (β=0.03, SE=0.011, p< 0.001, 95%CI [0.014, 0.064])
For the 18-year-old group (Figure 3), neither the total indirect effect (β=0.146, SE=0.086, p>0.05, 95%CI [-0.012, 0.323]) nor the two serial mediation pathways (β=0.005, SE=0.012, p>0.05, 95%CI [-0.007, 0.063]; β=0.009, SE=0.014, p>0.05, 95%CI [-0.002, 0.059]) were significant.
3.5 Effect size of the mediation pathways
For the 16-17 age group (Table 4), the total indirect effect accounted for 43.46% of the total effect, while the direct effect accounted for 56.75%. The specific effect sizes for each mediating pathway were:
1) PDC→ST→SWB: 15.40% of total effect
2) PDC→NE→SWB: 9.70% of total effect
3) PDC→PL→SWB: 9.49% of total effect
4) PDC→ST→NE→SWB: 2.32% of total effect
5) PDC→PL→NE→SWB: 6.33% of total effect
For the 18-year-old group: only one mediating pathway showed a significant effect size: PDC→ST→SWB: 58.39% of total effect.
3.6 Multi-group analysis
The multi-group analysis demonstrated good overall model fit across different invariance levels. The measurement-weighted model showed stability, while other models exhibited non-significant differences. This suggests that the measurement structure is consistent across age groups, but there may be some differences in structural relationships (Tables 5, 6).
Path Coefficients Comparison (Table 7):
Table 7. Multi-group structural equation modeling results: path estimates for 16-17 and 18-year-old groups.
1) Parental Democratic Communication (PDC) to Societal Trust (ST), both significant, slightly stronger for 18-year-olds.
2) PDC to Pleasant Life (PL), significant and similar for both groups.
3) PDC to Negative Emotion (NE), significant only for 16-17 years.
4) ST to NE, significant only for 16-17 years.
5) PL to NE, significant only for 16-17 years.
6) ST to Subjective Well-being (SWB), significant for both, stronger for 18-year-olds.
7) PL to SWB, significant only for 16-17 years, notable difference in direction. The critical ratio is 2.769 and greater than 1.96.
8) NE to SWB, significant for both, slightly stronger for 16-17 years.
9) PDC to SWB (Direct effect), significant only for 16-17 years.
4 Discussion
4.1 Summary of main findings
As highlighted in Table 8, our study findings suggest that the influence of parental democratic communication on subjective well-being, as well as the mediating mechanisms, differ between the two age groups. Our findings highlight the complex interplay between PDC, societal trust, negative emotions, and pleasant life experiences in shaping adolescent well-being.
4.2 Age-related differences in the impact of parental democratic communication
Our findings reveal significant age-related differences in the impact of Parental Democratic Communication (PDC) on Subjective Well-Being (SWB) among Chinese adolescents. The direct effect of PDC on SWB was significant for mid-adolescents (16-17 years) but not for late adolescents (18 years). This shift likely reflects the changing dynamics of parent-child relationships as adolescents gain autonomy (73), prioritize independent self-construal (74), and focus more on peer relationships and identity development (75–77). These results suggest that supportive and open parent-child communication may be particularly crucial for younger adolescents (78, 79). Our findings are consistent with recent research in China that emphasizes that adolescents’ autonomy increases with age. Li (80) notes that high school students in China experience enhanced psychological resilience and autonomy as they mature, which may explain the changing dynamics in our study. Similarly, Wang and Zhang (81) emphasize the growing importance of peer relationships for Chinese adolescents, supporting our observation of diminishing direct parental influence on well-being for 18-year-olds.
However, our findings extend beyond these observations by revealing that parental influence persists, albeit through different mechanisms. The mediating role of social trust remained significant across both age groups, indicating that even as Chinese adolescents transition to young adulthood, parental communication continues to shape their perceptions of the social world. This observation challenges the notion that parental influence necessarily diminishes with increasing adolescent autonomy, a concept often emphasized in Western literature (82). Our results align with and extend previous research linking societal trust to psychological adjustment and well-being among Chinese adolescents (83, 84).
4.3 Mediating pathways
For mid-adolescents (16-17 years), our study revealed a complex serial mediation involving negative emotions, pleasant life experiences and societal trust. This finding aligns with existing research showing that supportive parental communication is associated with lower levels of anxiety and depression (85, 86), as well as higher levels of life satisfaction and positive affect (87, 88). Such communication appears to provide a secure foundation for building societal trust and navigating social relationships (89), while also minimizing negative emotions (46). However, our study extends these findings by demonstrating a serial mediation relationship, offering a more nuanced understanding of how parental democratic communication (PDC) influences well-being through multiple pathways simultaneously. In the Chinese context, deep family values and an emphasis on filial piety often lead parents to provide more instruction and discipline (90). Consequently, adolescents place significant weight on parental communication and advice (91–93). In addition, with the trend of delayed adulthood becoming increasingly prevalent (94), adolescents may rely more heavily on parental guidance for developing social trust, experiencing pleasant life events, and regulating emotions, all of which influence their subjective well-being.
In late adolescence, we observe a significant developmental shift where societal trust becomes the primary mediator between parental democratic communication and well-being for 18-year-olds. This transition aligns with previous research indicating that during this period, 18-year-olds diversify their social relationships, placing greater value on interactions with peers, teachers, and community members, which significantly impact their psychology and behavior (95). This shift underscores the increasing importance of social connections during the transition to adulthood, extending theories of emerging adulthood (75).
Our findings demonstrate how parental influence adapts and persists into this developmental period, particularly in the Chinese context, by identifying societal trust as a key mediator. This perspective builds upon previous studies on parenting and adolescent well-being in China, which have emphasized the enduring influence of family due to deep-rooted cultural values. These studies have highlighted that parental education and care tend to be present throughout their children’s development (96), with factors such as parental expectations and family atmosphere significantly impacting adolescents’ academic achievement and psychological well-being (97).
4.4 Trust-mediated well-being: a new concept
Our study reveals the paramount importance of social trust in adolescent well-being, surpassing traditionally emphasized factors such as negative emotions and pleasant life experiences. This finding led us to propose the concept of “trust-mediated well-being.” For 16-17-year-olds, societal trust significantly influences subjective well-being through both direct (β=0.359) and indirect pathways. Indirectly, societal trust reduces negative emotions (β=-0.169), which in turn affects subjective well-being (β=-0.32). The effect of pleasant life experiences (β=0.14) is considerably smaller than that of societal trust. Among 18-year-olds, the importance of societal trust increases dramatically. Its direct effect on subjective well-being (β=0.481) accounts for 58.39% of the total effect, while the impact of negative emotions decreases (β=-0.246), and pleasant life experiences cease to have a significant effect. This concept is particularly relevant in addressing the global trend of increasing loneliness and social isolation, exacerbated by “lonelygenic environments” (13), although the specific mechanisms may differ by age.
These findings challenge the traditional emphasis on emotional regulation and hedonic experiences in well-being research, suggesting a more complex and age-specific relationship between societal trust and well-being. Our results indicate that the ability to trust and feel connected to society plays a crucial role in well-being throughout adolescence, but its mechanisms appear to evolve with age. For mid-adolescents (16-17 years), our findings partially align with recent research highlighting social trust’s protective role against negative emotions, including loneliness (98–100). In this age group, societal trust not only directly enhances well-being but also shows a small but significant negative relationship with negative emotions. However, for late adolescents (18 years), while societal trust remains a significant direct contributor to well-being, its relationship with negative emotions becomes non-significant. This suggests a shift in how societal trust operates during the transition to adulthood, maintaining its importance for overall well-being but potentially becoming decoupled from immediate emotional experiences.
In the Chinese context, where rapid social changes, including the increasing prevalence of online interactions and intense academic pressure (101, 102), as well as the COVID-19 pandemic have strained traditional social bonds (103, 104), understanding the role of societal trust in well-being becomes even more critical. Our findings suggest that while societal trust consistently contributes to well-being, its relationship with negative emotions and potential loneliness may be more complex and age-dependent than previously thought.
Trust-mediated well-being aligns with emerging concepts in the third wave of positive psychology, that emphasizes the interconnectedness of individual and collective well-being (105, 106). It extends this idea by demonstrating how individual well-being is fostered through one’s connection and trust in the larger social fabric, especially evident in our findings for 18-year-olds. In the Chinese context, where collective harmony is culturally valued, our findings offer a bridge between traditional collectivist values and contemporary approaches to individual well-being. This trust-mediated well-being model provides a framework for understanding how positive family dynamics contribute to both individual and societal well-being through the cultivation of social trust.
4.5 Contribution to existing knowledge
Our study makes significant contributions to adolescent development and well-being research, aligning with the third wave of positive psychology:
1. “Societal Trust-Mediated Well-Being” Pattern:
We reveal a pattern where societal trust mediates the relationship between parental democratic communication and adolescent well-being, with this mediation strengthening with age. This framework bridges individual, familial, and societal levels of analysis, resonating with the holistic approach of third-wave positive psychology.
2. Extension of Emerging Adulthood Theory:
Traditionally, theories of adolescent development, including some interpretations of Arnett’s emerging adulthood theory (75), have posited that individuals become less influenced by their parents and more independent as they approach and enter adulthood around age 18. However, our study reveals a more nuanced picture. We find that the influence of parental democratic communication does not simply diminish at age 18; instead, its pathway of influence evolves. For 18-year-olds, parental influence manifests more prominently through the mechanism of societal trust, which in turn affects well-being.
3. Cultural Sensitivity:
Our research provides a nuanced understanding of how family relationships evolve and maintain their importance during this critical developmental period. This insight is particularly valuable in the Chinese context, where family ties traditionally remain strong even as young people enter adulthood, offering a culturally sensitive extension to existing theories of adolescent development and emerging adulthood.
4. Addressing Global Youth Negative Emotions including Loneliness:
In response to growing global concerns about youth loneliness and negative emotions (3, 13), our study offers a novel theoretical framework. This framework elucidates how positive family interactions can serve as a buffer against these issues through the cultivation of trust-mediated well-being. While previous research has predominantly focused on individual-level interventions to mitigate loneliness and negative emotions, our study breaks new ground by integrating family dynamics and societal trust into the equation. By examining the interplay between parental democratic communication, societal trust, and adolescent well-being, we address a significant theoretical gap in tackling these pressing social issues. Our approach provides a more comprehensive understanding of the protective factors against youth loneliness and negative emotions, emphasizing the crucial role of family relationships and broader social connections in fostering resilience and emotional well-being among adolescents and young adults.
4.6 Practical implications
Our findings suggest the need for integrated, age-tailored approaches in promoting adolescent well-being. For younger adolescents, interventions might focus on enhancing PDC to directly impact SWB, in addition to societal trust, emotion regulation and pleasant life experiences. For older adolescents, the focus might shift to fostering trust-mediated well-being alongside parental communication. Our results suggest the need for culturally and age-appropriate in-person interactive activities in schools and communities. Youth well-being professionals should consider incorporating societal trust-mediated well-being as part of their objectives in assessments and interventions, particularly for older adolescents.
4.7 Limitations and future directions
While our study utilized data from a large-scale survey, enhancing reliability and generalizability (107), several limitations should be noted:
1. Measurement Issues:
The use of secondary data limited available measures and constructs and some measures showed suboptimal internal consistency reliability. However, this can be considered acceptable due to:
a) Short scale length, which often results in lower Cronbach’s alpha values (108).
b) Construct breadth: Social trust is a broad construct involving trust in different social entities, which may lead to lower internal consistency but improve construct validity (109).
c) Age-specific considerations, with slightly lower alpha for 18-year-olds potentially reflecting developmental changes.
d) Mean inter-item correlations (ranging from.23 to.51) may be more appropriate for short scales of societal trust (109).
2. Methodological Limitations:
Reliance on self-reported measures introduces potential response bias. The cross-sectional design precludes causal inferences. Potential confounding variables (e.g., socioeconomic status, family structure) were not adequately controlled for. In addition, the data collection during the COVID-19 period may have introduced confounding effects. The interpretation of age differences should consider cohort effects and other potential confounds. Despite using data from the nationally representative CFPS, our sample selection process may have introduced some selection bias. The exclusion of respondents with missing data, particularly those who indicated parental communication was not applicable (n=142), may have systematically removed adolescents with non-traditional family structures or unique living situations. This could potentially skew our understanding of parental influence.
3. Conceptual Limitations:
Our focus on the hedonic approach to well-being may not capture all aspects of adolescent development (110).
Future research should address these limitations by:
a) Validating the paths and mechanisms in diverse ethnic groups with more comprehensive measurement scales. Employing multiple methods such as behavioral observations, physiological measures, reports from others to reduce response bias and improve data objectivity.
b) Investigating the characteristics and outcomes of adolescents for whom traditional measures of parental communication may not apply. Exploring potential boundary conditions (e.g., social-emotional competence, social media use, family structure, socioeconomic status). Utilizing parceling techniques and advanced predictive models for feature selection.
c) Conducting longitudinal studies to examine relationships between variables over time and employing experimental designs to identify causal effects.
d) Utilizing mixed-methods approaches to gain deeper insights into adolescents’ lived experiences and the nuanced influences of societal trust on well-being.
5 Conclusion
Our study reveals distinct age-related differences in the impact of parental communication on adolescent well-being, underscoring the critical need for age-specific interventions that foster both positive family communication and trust-mediated well-being. These findings are particularly relevant in addressing growing global concerns about youth loneliness and social disconnection, especially in rapidly evolving societies like China.
Data availability statement
Publicly available datasets were analyzed in this study. This data can be found here: https://www.isss.pku.edu.cn/cfps/.
Author contributions
SL: Data curation, Investigation, Methodology, Software, Validation, Visualization, Writing – original draft, Writing – review & editing. SH: Conceptualization, Formal analysis, Project administration, Resources, Supervision, Writing – review & editing. LS: Formal analysis, Supervision, Validation, Visualization, Writing – review & editing, Methodology.
Funding
The author(s) declare that no financial support was received for the research, authorship, and/or publication of this article.
Acknowledgments
We gratefully acknowledge [Institute of Social Science Survey (ISSS) of Peking University] for providing the [CFPS 2020 Chinese] used in this study. This dataset, originally funded by [Peking University and the National Natural Science Foundation of China] is publicly available. The interpretation and reporting of these data in this paper are the sole responsibility of the authors. Finally, we thank all individuals and organizations involved in the original data collection and curation. We used AI tools such as Grammarly EDU and QuillBot Premium for polishing.
Conflict of interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Publisher’s note
All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.
Supplementary material
The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fpsyt.2024.1500937/full#supplementary-material
Footnotes
- ^ We conducted a principal component factor analysis, which showed that 'trust in Americans' had low correlations with other societal trust indicators and may reflect cross-cultural attitudes rather than everyday social trust (Supplementary Material 4), the AMOS results show that factor loading coefficient for 'trust in parents' and 'trust in strangers' were less than 0.5 (56). Consequently, these items were excluded from the final measurement.
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Keywords: trust-mediated well-being, parental democratic communication, loneliness, Chinese adolescents, multi-group SEM
Citation: Liu S, Hu SX and Su L (2024) Parental democratic communication and adolescent well-being in an era of loneliness: the mediating role of societal trust. Front. Psychiatry 15:1500937. doi: 10.3389/fpsyt.2024.1500937
Received: 24 September 2024; Accepted: 25 October 2024;
Published: 28 November 2024.
Edited by:
Yibo Wu, Peking University, ChinaReviewed by:
Elissa Ye, University of California, Los Angeles, United StatesCarlos Miguel Rios-González, Ministerio de Salud Pública y Bienestar Social, Paraguay
Siddharth Sarkar, All India Institute of Medical Sciences, India
Atiqul Haq Mazumder, University of Oulu, Finland
Copyright © 2024 Liu, Hu and Su. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Sydney X. Hu, c3lkbmV5QGt3bmMuZWR1Lm1v