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ORIGINAL RESEARCH article

Front. Public Health, 13 July 2023
Sec. Substance Use Disorders and Behavioral Addictions
This article is part of the Research Topic Substance Use Disorder: Above and Beyond Addiction View all 32 articles

The reciprocal relationships between meaning in life and smartphone addiction among Chinese college students: evidence from a three-wave cross-lagged panel model

Hao Zhao,Hao Zhao1,2Tianjiao Song,
Tianjiao Song1,2*Shameem Rafik-GaleaShameem Rafik-Galea2Jihe DongJihe Dong1Mimi FitrianaMimi Fitriana3Yanhong JiYanhong Ji1Jianling ZhangJianling Zhang1
  • 1School of Education, Shandong Women's University, Jinan, China
  • 2Faculty of Education, Languages, Psychology and Music, SEGI University, Kuala Lumpur, Malaysia
  • 3Faculty of Arts and Science, International University of Malaya-Wales, Kuala Lumpur, Malaysia

Background: Previous cross-sectional studies have shown that meaning in life (MIL) is closely associated with college students’ smartphone addiction (SA), but the causal relationship between MIL and college students’ SA is uncertain. Therefore, conducting a longitudinal study to explore their relationship is very necessary. Furthermore, some studies have implied possible gender differences in the relationship between MIL and SA and the relationship between SA and MIL. Therefore, it is necessary to further examine whether there are gender differences in the above relationships.

Methods: The present study constructed a three-wave cross-lag panel model to explore the relationships between MIL and college students’ SA. Three waves of data were collected from 705 college students (male: 338; female: 367) in China for three consecutive years, and the interval of data collection was 1 year. These college students completed the same online questionnaire regarding MIL and SA.

Results: (1) The MIL of male college students was significantly stronger than that of female college students at time 1, time 2, and time 3, (2) Female college students’ SA at time 1, time 2, and time 3 was more serious than that of male college students, (3) There were reciprocal relationships between MIL and college students’ SA, (4) The influence of MIL on female college students’ SA was significantly stronger than that of male college students, and (5) The influence of SA on female college students’ MIL was significantly stronger than that of male college students.

Conclusion: This study showed reciprocal relationships between MIL and SA among male college students and female college students. The findings further deepen our understanding of the relationship between MIL and SA and provide a gender perspective for preventing or intervening with college students’ SA.

1. Introduction

According to the 50th Statistical Report on Internet Development in China, as of June 2022, there were 1.047 billion smartphone users in China, making up of 99.6% of all Internet users (1). Because of its portability, interaction, and immediacy, smartphones have become a daily necessity for people in modern society. However, frequent smartphone use can quickly result in smartphone addiction (2). Smartphone addiction is similar to Internet addiction and game addiction, and it is defined by Sunday et al. (3) as “a condition where the use of smartphone has fulfilled a deep need (dependency, habitual, and addictive behavior) to the extent that the individual has difficulty conducting basic activities of daily life without the concurrent use of a smartphone, and as such caused neglect of other aspects of one’s life.” Smartphone addiction may lead to a series of physiological symptoms (e.g., vision loss, headaches, and decreased sleep quality) and psychological symptoms (e.g., memory loss, emotional depression, and anxiety) (4). A study on smartphone usage among Chinese college students found that more than 20% of college students use their smartphones for more than 7 h a day (5). Numerous studies in different countries and cultures have revealed that college students are a high-risk group of SA (613). SA does great harm to college students. It is difficult for college students with SA to concentrate on their studies (14), and their happiness in life is significantly reduced due to the excessive use of smartphones (1517). In severe cases, SA can cause personality disorder (18, 19) and even suicidal tendencies (2022). Therefore, it is very essential to pay close attention to college students’ SA and deeply explore the causes of college students’ SA so as to provide theoretical and methodological support for effective intervention or prevention of college students’ SA.

Meaning in life (MIL) refers to “the sense made of, and significance felt regarding, the nature of one’s being and existence” (23). MIL is closely associated with addictive behaviors. Numerous studies have revealed that the higher an individual’s MIL, the less likely he or she is to develop addictive behaviors (2429). According to meaning therapy theory, meaning in life is the basic element of happiness in life experienced by individuals, and constantly seeking the meaning and purpose of life is the fundamental drive of human existence (30). The lack of meaning in life may cause individuals to fall into a state of emptiness, leading them to lose themselves in real life, which in turn leads to addictive behaviors and then seriously affects the physical and mental health of individuals (30). The meaning therapy theory is supported by some empirical studies among college students. Until now, many studies have indicated that MIL is closely related to college students’ SA. Specifically, studies have revealed that college students’ MIL and their level of SA are negatively associated (28, 29). MIL not only has a direct effect on college students’ SA, but also has an indirect effect on college students’ SA through other variables. For example, some scholars verified that MIL could indirectly affect college students’ SA through self-control (31). In addition, a recent research has shown that MIL can indirectly affect college students’ SA through school adjustment (32). Summarizing the above literature, many scholars have made beneficial investigations on the relationship between MIL and college students’ SA, but these studies only investigated the influence of MIL on college students’ SA, and all the studies were cross-sectional rather than follow-up studies.

From the current studies, although there is no direct study on the influence of SA on college students’ MIL, the resource conservation theory and some related studies suggest that the above influence is likely to exist. According to the resource conservation theory proposed by Hobfoll (33), individuals have limited resources (e.g., time, energy, and attention), and people will strive to maintain, protect, and acquire these resources. However, the loss of these resources is likely to pose a threat to people’s lives, resulting in negative consequences. The above notion has been supported by some empirical studies. These studies have found that SA is significantly related to college students’ interpersonal problems (34, 35) and self-esteem (36, 37). SA can trigger college students’ anxiety (38, 39) and depression (36, 4042). Furthermore, a longitudinal study revealed that SA could significantly positively affect adolescents’ depression (43). Since interpersonal relationships, self-esteem, anxiety, and depression are all important predictors of college students’ MIL (29, 4448), based on the resource conservation theory, we speculate that SA is also probably an important influencing factor of MIL. In short, from the previous studies, the causal relationship between MIL and college students’ SA is not clear. Few studies have explored the reciprocal relationships between MIL and college students’ SA.

In addition to exploring the relationship between MIL and college students’ SA, scholars have also conducted some studies on gender differences in college students’ MIL and SA. On the whole, previous studies have revealed that female college students’ meaning in life is significantly lower than that of male college students (4952), and female college students’ smartphone addiction is more serious than that of male college students (5359). Males and females are very different when it comes to coping with external pressures. Compared with males, females may perceive threatening events as stress events and often feel in a stressful environment (6063). There are obvious differences between males and females in coping with external pressure. Males are more focused on problem solving, and may be more inclined to use positive coping styles (e.g., rational coping and detached coping) to cope with pressure, while females may be more inclined to use negative coping styles (e.g., emotional response and avoidance) to cope with pressure rather than focus on problem solving (64, 65). Since negative coping style is a risk factor for the individual’s meaning in life (66, 67), it is understandable why female college students have a lower level of MIL than male college students. Smartphones have the following functional characteristics: (a) collectivity of functions (68, 69); (b) personalization and customization of content (9, 54, 70); (c) accessibility (2, 71); and (d) convenience (2, 71). Some scholars have found that it is precisely because of the above-mentioned functional characteristics of smartphones that female college students use smartphones more frequently in order to make up for the psychological emptiness caused by the low level of MIL and alleviate their negative emotions, thus leading to more serious SA among female college students than male college students (32). However, few studies have explored the moderating effect of gender on the relationship between college students’ MIL and SA.

There may also be gender differences in the relationship between SA and college students’ MIL. The social replacement hypothesis suggests that indulging in social communication through the internet reduces the time for individuals to interact with friends and family, which leads to a small social circle and may lead to depression and loneliness (72). Replacement means that personal use of the Internet may replace offline communication (73, 74). Consistent with the social replacement hypothesis, some studies revealed that individuals may perceive less support from others through Internet communication than offline communication (75, 76). Online social interaction cannot replace offline social interaction: they are not the same psychologically, and addiction to mobile social media may increase the degree of individual social isolation (77). Previous studies have found that female college students will use social media more than male college students to satisfy their social needs (55, 78, 79). Therefore, smartphone addiction may have a more negative impact on female college students’ meaning in life. However, few studies have explored the moderating effect of gender on the relationship between college students’ SA and MIL.

In this study, college students are taken as the subjects to conduct a three-wave cross-lag panel model to explore the reciprocal relationships between college students’ MIL and SA (see Figure 1). This study proposed two hypotheses:

Hypothesis 1: There are reciprocal relationships between MIL and SA.

Hypothesis 2: Gender moderates the reciprocal relationships between MIL and SA.

FIGURE 1
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Figure 1. Conceptual model.

2. Materials and methods

2.1. Participants and procedure

Using the convenient cluster sampling method, freshmen from 20 classes at three universities in Shandong Province, China were selected for a 2-year follow-up study in this study, with data collected three times at 1-year intervals. The inclusion criteria are as follows: (a) 18–25 years old, (b) Full-time college students, (c) Smartphone users, and (d) Voluntary participation in the three questionnaire surveys and signing online informed consent form. Exclusion criteria: (a) Suffering from psychiatric disorders and (b) Suffering from other addictive behaviors. Data were collected in early April of 2020 (Time 1), in early April of 2021 (Time 2), and in early April of 2022 (Time 3). The Wen Juan Xing platform was used to distribute the informed consent form and questionnaire to the 20 classes. 802 freshmen participated in the survey at time 1. In the end, 705 students participated in all three surveys, which is equivalent to a total loss of 97 students with a loss rate of 12.09%. All participants signed the online informed consent form. Table 1 shows the demographic profiles of participants.

TABLE 1
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Table 1. The demographic profiles of participants (n = 705).

2.2. Measures

2.2.1. Meaning in life

This study used the Chinese version of Meaning in Life Scale (80) to evaluate the meaning in life of college students. The scale has 9 items in total, which includes two factors: presence of meaning (e.g., “There is no clear purpose in my life”) and searching for meaning (e.g., “I have found a purpose in life that satisfies me”). Each item is rated on a seven-point Likert scale ranging from 1 (strongly disagree) to 7 (strongly agree). In this study, at time 1, time 2, and time 3, the Cronbach’s α of the scale were 0.88, 0.86, and 0.89, respectively. The construct validity of the scale at time 1, time 2, and time 3 was also good: χ2/df ≤ 2.258, comparative fit index (CFI) ≥ 0.956, Standardized Root Mean Square Residual (SRMR) ≤ 0.041, Tucker-Lewis Index (TLI) ≥ 0.949, root mean square error of approximation (RMSEA) ≤ 0.066.

2.2.2. Smartphone addiction

This study used the Chinese version of Smartphone Addiction Scale – Short Version to assess the college students’ smartphone addiction. The Chinese version scale was translated from the Smartphone Addiction Scale – Short Version (SAS-SV) compiled by Kwon et al. (69) by forward-backward method. The scale has 10 items in total (e.g., “Feeling impatient and fretful when I am not holding my smartphone”). Each item is rated on a six-point Likert scale ranging from 1 (strongly disagree) to 6 (strongly agree). At time 1, time 2, and time 3, the Cronbach’s α of this scale were 0.85, 0.87, and 0.87, respectively. The construct validity of the scale at time 1, time 2, and time 3 was also good: χ2/df ≤ 2.631, CFI ≥ 0.946, SRMR ≤ 0.034, TLI ≥ 0.938, RMSEA ≤ 0.062.

2.3. Data analysis

The present study used SPSS 26.0 and Mplus 7.11 to analyze the data. The data analysis procedure was as follows:

First, conducting a common method bias analysis with SPSS 26.0. Specifically, all items were subjected to Harman’s One-Factor Test (unrotated exploratory factor analysis) (81). If the variance explained by the first component, among all components with eigenvalues larger than 1, is less than 40%, it suggests that there is no common method bias present in this study (81).

Second, SPSS 26.0 was used to conduct descriptive statistics, implement independent samples t-tests to investigate the gender differences in meaning in life (MIL) and smartphone addiction (SA), and examine correlations between MIL and SA.

Third, in order to test whether there are reciprocal relationships between college students’ MIL and SA, the following four competing models were established: Model 1: No cross-lagged effects (T1MIL → T2SA, T2MIL → T3SA, T1SA → T2MIL and T2SA → T3MIL are dropped). Model 2: Smartphone addiction effects (T1SA → T2MIL and T2SA → T3MIL are dropped). Model 3: Meaning in life effects (T1MIL → T2SA and T2MIL → T3SA are dropped); Model 4: Reciprocal effects (all paths are included). Then, using structural equation model to examine the four competing models to determine whether the reciprocal effects model would best fit the data and significantly better than the other three models. Model fit was determined by the following indices: “Comparative Fit Index (CFI), Standardized Root Mean Square Residual (SRMR), Tucker-Lewis Index (TLI), and Root Mean Square Error of Approximation (RMSEA). An acceptable model is determined by the following criteria: CFI > 0.90, SRMR < 0.05, TLI > 0.90, and RMSEA < 0.08 (82). In addition, the differences of CFI (△CFI > 0.01) and the χ2 differences between models (p < 0.05) were used to determine the best model (8385).

Fourth, this study used Mplus 7.11 to conduct multiple group (male vs. female) analysis to test gender differences on reciprocal effects. According to the requirements of multiple group analysis, measurement invariance needs to be tested before comparing the differences of structural equation model in different group (85). This is because only when the relationship between observed variables and potential variables is invariant in all groups that need to be compared can the differences of structural equation model be further compared (85). Specifically, measurement invariance was tested by the following four steps: Step 1: Fitting measurement model for each group, respectively. Step 2: Configural invariance. Step 3: Metric invariance (common loadings across gender). Step 4: Scalar invariance (common loadings and intercepts across). Configural invariance is a prerequisite for testing other invariances, and it is usually used as a baseline model for testing (8385). Further invariance tests are nested models generated by restricting the corresponding parameters on the basis of the invariance at the previous level, and only if the invariance at the previous level is established can the invariance test be continued at a higher level (85). When scalar invariance (strong invariance) is established, measurement invariance is established (8385). An acceptable model is determined by the following criteria: CFI > 0.90, SRMR < 0.05, TLI > 0.90, and RMSEA < 0.08 (82). The differences of CFI (△CFI < 0.01) and the χ2 differences between models (p > 0.05) were used as the criteria of invariant measurements (8385). Then, using Mplus 7.11 to compare the differences of reciprocal effects among male college students (group 1) and female college students (group 2).

In this study, before testing the cross-lagged panel model, all the variables were standardized. When testing the reciprocal relationships between college students’ MIL and SA, all demographic variables were set as control variable, and when comparing the gender differences of the reciprocal effects, demographic variables except gender were set as control variable. Besides, 95% confidence interval based on the bias-corrected percentile method with 1,000 bootstrap samples was used to examine the reciprocal effects.

3. Results

3.1. Common method bias

The results of common method bias analysis showed that the eigenvalues of 18 components exceeded 1, and the first component explained 21.36% of the total variance, which was less than 40%, indicating that the common method bias was not present in this study.

3.2. Descriptive statistics, inferential statistics, and correlation analyzes

Table 2 shows the means and standard deviations of the main variables and gender differences in smartphone addiction and meaning in life. Specifically, at Time 1, Time 2, and Time 3, female college students’ scores of meaning in life (MIL) were significantly lower than male college students’ scores. Besides, at Time 1, Time 2, and Time 3, female college students’ smartphone addiction (SA) scores were significantly higher than male college students’ scores.

TABLE 2
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Table 2. Gender differences in college students’ smartphone addiction and meaning in life.

As shown in Table 3, there was a significant correlation between MIL at time 1, time 2, and time 3 (r = 0.48 ~ 0.62) among all participants. There was a significant correlation between SA at time 1, time 2, and time 3 (r = 0.69 ~ 0.78) among all participants. At time 1, time 2 and time 3, MIL was significantly correlated with SA (r = −0.50 ~ −0.68) among all participants. In addition, the time-dependent correlation between MIL and SA among all participants was also significant (r = −0.39 ~ −0.61).

TABLE 3
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Table 3. Inter-correlations of the variables among all participants (n = 705).

As shown in Table 4, among male college students, there was a significant correlation between MIL at time 1, time 2, and time 3 (r = 0.47 ~ 0.60). There was a significant correlation between SA at time 1, time 2, and time 3 (r = 0.68 ~ 0.77) among male college students. At time 1, time 2 and time 3, among male college students, MIL was significantly correlated with SA (r = −0.46 ~ −0.63). In addition, the time-dependent correlation between MIL and SA among male college students was also significant (r = −0.32 ~ −0.47).

TABLE 4
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Table 4. Inter-correlations of the variables among male college students (n = 338).

As shown in Table 5, there was a significant correlation between MIL at time 1, time 2, and time 3 (r = 0.50 ~ 0.66) among female college students. There was a significant correlation between SA at time 1, time 2, and time 3 (r = 0.70 ~ 0.80) among female college students. At time 1, time 2 and time 3, among female college students, MIL was significantly correlated with SA (r = −0.51 ~ −0.70). Furthermore, among female college students, the time-dependent correlation between MIL and SA was also significant (r = −0.52 ~ −0.68).

TABLE 5
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Table 5. Inter-correlations of the variables among female college students (n = 367).

3.3. Testing the cross-lagged panel model

Table 6 shows the results of model comparisons of the four competing models. All models fitted well. However, Model 2 (smartphone addiction effects), Model 3 (meaning in life effects), and Model 4 (reciprocal effects) better fitted the data than did Model 1 (no cross-lagged effects). Model 4 (reciprocal effects) yielded a better model fit than did Model 2 (smartphone addiction effects) and Model 3 (meaning in life effects). Thus, the reciprocal effects model (Model 4) showed the best model fit. The results of cross-lagged panel analysis (see Figure 2) showed that: (a) Meaning in life (MIL) at time 1 could significantly negatively predict smartphone addiction (SA) at time 2 (β = −0.19, p < 0.01), (b) MIL at time 2 could significantly negatively predict SA at time 3 (β = −0.14, p < 0.05), (c) SA at time 1 could significantly negatively predict MIL at time 2 (β = −0.25, p < 0.01), and (d) SA at time 2 could significantly negatively predict MIL at time 3 (β = −0.28, p < 0.01). These results verified that there were negative reciprocal relationships between MIL and SA.

FIGURE 2
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Figure 2. Path diagram of the cross-lagged panel model.

TABLE 6
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Table 6. Model fit indexes and comparison for different models of the relationship between meaning in life and smartphone addiction among college students.

3.4. Multi-group tests by gender on the reciprocal effects model

The measurement model (see Table 7) showed an acceptable fit for male college students and female college students. Thus, the measurement invariance tests can be performed next. As shown in Table 4, Model 1, model 2, and model 3 all fitted well. The model comparison showed that the fit indices of model 2 was not significantly different from that of model 1 (△CFI < 0.01, p > 0.05). Further comparing model 3 with model 2, the result found that the fit indices of model 3 was not significantly different from that of model 2 (△CFI < 0.01, p > 0.05). These results indicated that the measurement invariance across gender was established. Thus, structural model comparison can be conducted next.

TABLE 7
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Table 7. Measurement invariance tests for male college students and female college students.

As shown in Table 8, two cross-lagged paths in the same direction were constrained to be equal between male and female in each comparison model. The results showed that the difference between model 4b and model 4a was significant (△CFI > 0.01, p < 0.01). Compared with model 4a, model 4c showed a significant difference (△CFI > 0.01, p < 0.01). The above results revealed that the reciprocal effects among female college students were significantly different from that of male college students.

TABLE 8
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Table 8. Multi-group (male vs. female) tests on the reciprocal effects model.

3.5. Gender differences in reciprocal effects

Comparing the differences of reciprocal effects among male college students (group 1) and female college students (group 2), the results (see Table 9) showed that: (a) The path coefficient of T1MIL → T2SA in female college students were significantly larger than that of male college students (male: β = −0.11; female: β = −0.32), (b) The path coefficient of T1SA → T2MIL in female college students were significantly larger than that of male college students (male: β = −0.17; female: β = −0.43), (c) The path coefficient of T2MIL → T3SA in female college students were significantly larger than that of male college students (male: β = −0.09; female: β = −0.23), and (d) The path coefficient of T2SA → T3MIL in female college students were significantly larger than that of male college students (male: β = −0.20; female: β = −0.40). In a word, the reciprocal effects among female college students were significantly stronger than that of male college students.

TABLE 9
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Table 9. The results of gender comparison in reciprocal effects.

4. Discussion

A three – wave cross – lagged panel design was used to explore the reciprocal relationships between meaning in life (MIL) and smartphone addiction (SA) among Chinese college students in this study. The findings contribute to a deeper understanding of the dynamic relationships between MIL and SA and the gender differences in these relationships.

4.1. Gender differences in college students’ MIL and SA

Consistent with previous cross-sectional studies (4952), the research results found that the MIL of male college students was significantly stronger than that of female college students at both time 1, time 2, and time 3. The gender differences may be related to the different expectations of males and females in society. In the general concept of Chinese society, males are expected to be more responsible and motivated than females. Under the influence of this social expectation, the setbacks encountered in life may inspire males’ fighting spirit more, from which they will experience a stronger sense of responsibility and experience more MIL in the process of constantly breaking through themselves. On the other hand, compared with males, females tend to be more sensitive and emotional, and they are more likely to take a negative coping style when facing difficulties, resulting in makes it difficult for them to solve them when they encounter difficulties, which is not conducive to obtaining their MIL.

This study also found that there were significant gender differences in SA at time 1, time 2 and time 3, that is, female college students’ smartphone addiction was more serious than that of male college students, which was consistent with many previous studies (5359). The reason for the above gender differences is probably that males are more independent, while females are more socially dependent (86, 87). Compared with males, in order to satisfy social needs, females are more relational-oriented, and they participate in social activities more frequently. Correspondingly, either in the real world or the virtual world, females were more socially involved than males (87, 88). Also, from the perspective of traditional social culture in China, society is more inclined to expect females to have introverted and implicit personality (89). Under the requirements of this traditional social culture, female college students are more willing to express themselves in an implicit and indirect way, so using mobile social media (e.g., QQ and WeChat) inevitably becomes their best choice. They tend to use smartphones as an important medium of interpersonal communication, and they will communicate and interact with others through QQ, WeChat, and other apps on smartphones. Thus, the probability of female college students’ SA greatly increases.

4.2. The reciprocal relationships between MIL and SA

By conducting cross-lagged panel analysis, this study showed that there were negative reciprocal relationships between MIL and SA. Specifically, MIL at time 1 could significantly negatively predict SA at time 2, and MIL at time 2 could significantly negatively predict SA at time 3. These findings demonstrated that MIL is an important influencing factor of college students’ SA, which is congruent with meaning therapy theory (30). Frankl (30) proposed that finding the meaning of life is the primary motivation of human beings. If individuals cannot find the value and meaning of their existence, they will develop a sense of empty existence and easily lose themselves in social life, which may lead to addictive behaviors (30). Besides, the above findings are also supported by some previous studies among college students. Some scholars found that MIL could positively affect the addictive behavior of college students (28, 29). A recent intervention study on SA based on meaning therapy theory verified that meaningful therapy was an effective method to improve SA (90), which further demonstrated that MIL is an important predictor of SA. The higher the level of college students’ MIL, the stronger their school adjustment may be, and the lower the possibility of their SA. Contrariwise, if college students lack MIL, they are likely to have school adjustment problems and show depression and negativity. In order to relieve negative emotions and make up for inner emptiness, college students are easily addicted to the “virtual network world” of smartphones (32).

Furthermore, this study found that SA at time 1 could significantly negatively predict MIL at time 2, and SA at time 2 could significantly negatively predict MIL at time 3. These findings demonstrated that SA also influenced college students’ MIL. According to resource conservation theory, individuals have limited internal and external resources, and when these resources are consumed without return, they are likely to affect people’s normal lives and lead to negative consequences (33). If college students consume a lot of resources using their smartphones, they will have very limited or even few resources to cope with real life. Specifically, addiction to smartphones occupies a large number of individual cognitive resources, when there are multiple cognitive tasks (e.g., talking while playing smartphones; learning while playing smartphones) at the same time, individuals are prone to cognitive overload, which easily leads to their cognitive failure (91, 92). If this situation continues, it will inevitably have a negative impact on the physical and mental health of individuals. Thus, it can be well understood that college students will have interpersonal problems and negative emotions due to excessive use of smartphones or even addiction to smartphones, which will eventually lead to the decline of college students’ MIL.

4.3. The moderating effect of gender

By comparing the differences of reciprocal effects among male college students and female college students, this study found that the reciprocal effects in female college students were significantly stronger than those of male college students. Specifically, the influence of MIL on SA among female college students was significantly stronger than that of male college students. The gender differences in the above relationships can be explained from the perspective of gender differences in coping with stress. When dealing with external stressors, males may be more inclined to cope with stress using a positive coping style that focuses on problem solving. Yet females often feel they are in stressful situations and have more chronic stress than males, and they may be more inclined to cope with stress using negative coping styles that are not conducive to problem solving (64, 65). It should be emphasized that negative coping styles are not conducive to problem solving and may further exacerbate the negative effects of stress on female college students (65), thus leading to a lower level of MIL for female students than for male students. Since smartphones have the aforementioned functional characteristics, it is easier to get alternative satisfaction and compensation by using them (32). Thus, in order to make up for the psychological emptiness caused by the low level of MIL and alleviate negative emotions, female college students may use smartphones more frequently than male college students, which leads to more serious SA among female college students.

Meanwhile, this study have also shown that SA had a significantly stronger effect on female college students’ MIL than male college students. According to the social replacement hypothesis, the excessive use of mobile social media may replace activities in real situations, thus occupying individuals’ time and energy for offline activities, especially reducing the opportunities for offline communication with others, which will destroy individuals’ offline social support system, reduce the channels for individuals to obtain other people’s information, and make them participate in offline social activities insufficiently (72). In the end, it may lead to the reduction or lack of individual beneficial experiences, thus leading to negative emotions (93). Previous studies have found that males mainly use smartphones for more utilitarian and/or entertainment reasons, while females frequently use smartphones to meet social needs (55). Compared with males, females are more inclined to seek social support and are more sensitive (94). Therefore, SA may damage the social support system of female college students in real life and have a negative impact on their social interaction in real life, resulting in a lower level of MIL for female college students than for male college students. In a sense, the psychological need satisfaction that smartphone-addicted female college students seek in using their smartphones is a false substitute satisfaction that often serves to protect themselves from the aggression that comes with interpersonal and emotional problems. Although they find themselves in the virtual world for a short period of time, they experience more negative emotions in real life, which does not provide motivation for their development but damages their physical and mental health and makes them lose their MIL.

5. Conclusion

In this study, the three-wave cross-lag panel design was used to explore the reciprocal relationships between meaning in life (MIL) and college students’ smartphone addiction (SA). The results showed that MIL could negatively affect college students’ SA, and SA could also negatively affect college students’ MIL. In addition, there are significant gender differences in the reciprocal relationships between MIL and college students’ SA. Female college students are more likely to be addicted to smartphones because of their low level of MIL than that of male college students, which in turn leads to their further decline in MIL. This study not only deepens the research on the relationship between MIL and SA, but also provides theoretical support for preventing and intervening with college students’ smartphone addiction from a gender difference perspective.

6. Limitations, future directions, and implications

There are inevitably some limitations despite the fact that this study has produced some valuable findings. First, the participants in this study are all college students in China, and it is important to examine whether the findings consistent with this study exist in other countries and cultures in the future. Secondly, the participants in this study are mainly college students in northern China, and the current findings may not be applicable to all college students in China. Future research needs to expand the sampling range to examine whether the findings are applicable to college students in other parts of China. Thirdly, this study only explores the reciprocal relationships between meaning in life (MIL) and college students’ smartphone addiction (SA) by using the cross-lag panel design, and future research needs to use the cross-lag panel design to explore the complex mechanism of the influence of MIL on SA and SA on MIL.

The findings of this study have positive significance. As for the theoretical significance, this study examines the reciprocal relationships between MIL and college students’ SA and the moderating effect of gender on the reciprocal relationships for the first time, which can further deepen the research on the relationship between MIL and college students’ SA. Regarding the practical significance, this study can provide guidance for the targeted prevention and intervention with college students’ SA and lack of MIL. Specifically, we can prevent and intervene with college students’ SA by improving their MIL, especially that of female college students. In addition, the negative influence of SA on college students’ MIL can be reduced by interfering with their SA, especially that of female college students.

Data availability statement

The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.

Ethics statement

The studies involving human participants were reviewed and approved by Research Ethics Committee of Shandong Women's University. The patients/participants provided their written informed consent to participate in this study.

Author contributions

HZ and TS: methodology, investigation, formal analysis, writing—original draft, editing, and translation. SR-G: revised, validation, and supervision. MF: writing—review and supervision. All authors contributed to the article and approved the submitted version.

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

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Keywords: Chinese college students, reciprocal relationships, meaning in life, smartphone addiction, cross-lagged

Citation: Zhao H, Song T, Rafik-Galea S, Dong J, Fitriana M, Ji Y and Zhang J (2023) The reciprocal relationships between meaning in life and smartphone addiction among Chinese college students: evidence from a three-wave cross-lagged panel model. Front. Public Health. 11:1202741. doi: 10.3389/fpubh.2023.1202741

Received: 09 April 2023; Accepted: 27 June 2023;
Published: 13 July 2023.

Edited by:

Wael M. Y. Mohamed, International Islamic University Malaysia, Malaysia

Reviewed by:

Ihua Chen, Qufu Normal University, China
Jocelyne Azar, Lebanese American Univeristy, Lebanon

Copyright © 2023 Zhao, Song, Rafik-Galea, Dong, Fitriana, Ji, Zhang. 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: Tianjiao Song, 799446392@qq.com

Disclaimer: 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.