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Factors influencing consumers’ continuance intention in online grocery shopping: a cross-sectional study using application behavior reasoning theory
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Research Article
Factors influencing consumers’ continuance intention in online grocery shopping: a cross-sectional study using application behavior reasoning theory
Binglin Liu1orcid, Min A Lee2,†orcid
Korean Journal of Community Nutrition 2024;29(3):199-211.
DOI: https://doi.org/10.5720/kjcn.2024.29.3.199
Published online: June 30, 2024

1PhD Student, Department of Foods and Nutrition, Kookmin University, Seoul, Korea

2Professor, Department of Foods and Nutrition, Kookmin University, Seoul, Korea

†Corresponding author: Min A Lee Department of Foods and Nutrition, Kookmin University, 77 Jeongneung-ro, Seongbuk-gu, Seoul 02707, Korea. Tel: +82-2-910-5745 Fax: +82-2-910-5249 Email: malee@kookmin.ac.kr
• Received: May 14, 2024   • Revised: May 29, 2024   • Accepted: May 30, 2024

© 2024 The Korean Society of Community Nutrition

This is an Open-Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/3.0) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

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  • Objectives
    Online grocery shopping has gained traction with the digital transformation of retail. This study constructs a behavioral model combining values, attitudes, and reasons for behavior—specifically, facilitators and resistance—to provide a more novel discussion and further understand the relative influences of the various factors affecting continuance intention in online grocery shopping.
  • Methods
    Data were collected through an online questionnaire from consumers who had engaged in online grocery shopping during the past month in Seoul, Korea. All collected data were analyzed using descriptive analysis, and model validation was performed using partial least squares structural equation modeling.
  • Results
    Continuance intention is primarily driven by facilitative factors (compatibility, relative advantage, and ubiquity). Attitude can also positively influence continuance intention. Although resistance factors (price, tradition, and risk) do not significantly affect continuance intention, they negatively affect attitude. Values significantly influence consumers’ reasoning processes but not their attitude.
  • Conclusions
    These findings explain the key influences on consumers’ online grocery shopping behavior in Seoul and provide additional discussion and literature on consumer behavior and market management. To expand the online grocery market, consumers should be made aware of the potential benefits of the online channel; the barriers they encounter should be reduced. This will help sustain online grocery shopping behavior. Furthermore, its positive impact on attitude will further strengthen consumers’ continuance intention.
The domestic online grocery market is rapidly developing, with online grocery shopping transactions reaching 36 trillion won in 2022, showing continued growth [1,2]. Moreover, changes in the external environment have influenced consumers to accept new purchasing experiences and habits [3,4]. Infectious diseases such as coronavirus disease 2019 (COVID-19) have greatly impacted consumer behavior, and even without restrictions on going out, most consumers still wish to maintain their online grocery shopping behavior [5]. Consumer demand for online grocery shopping continues to increase, but the domestic online grocery market penetration rate is only 25%, which is relatively low compared with the 45% rate in other industries [6]. Accordingly, identifying the factors that influence consumers to maintain their online grocery shopping behavior is expected to help expand the future of the online grocery market.
In the previous study, the role of online grocery shopping was defined and the market was analyzed on the basis of user type [7]. According to Kim & Kim [8], Korean consumers choose online grocery shopping for delivery services, product quality, and low prices. Kim [9] showed that Korean consumers who use mobile shopping malls are primarily influenced by their practicality. However, most studies have focused on the acceptance behavior stage, with almost no discussion on the continuous usage stage after purchase. Lim et al. [10] examined the repurchase intention of online fresh food consumers and found that visit frequency moderates consumer behavior. Some researchers also believe that as the impact of COVID-19 gradually decreases, changes in consumer behavior or cognition are likely. Furthermore, in addition to the impact on consumer behavior preferences or habits, consumers' perceptions of online grocery shopping behavior may also change [11,12].
Various factors influence consumers’ choice of online grocery shopping channels. In particular, technology can provide more benefits in grocery shopping, but competitors can easily imitate these technological aspects [13]. Therefore, among the various influencing factors, the impact of consumer cognition on behavioral decisions should be examined [14]. Values are a very stable personal characteristic that is an important antecedent factor in determining purchasing behavior and inducing preferences [14]. Hofstede’s value system has been applied in various fields of research, but its limitation is that it emphasizes cultural value differences due to differences between countries. Therefore, it may have low explanatory power for individual consumer behaviors [15]. Accordingly, Schwartz [16] explained individual values in four different dimensions—conservation, openness to change, self-enhancement, and self-transcendence— to identify the detailed aspects of purchasing behavior according to differences due to consumers’ intrinsic characteristics. Among them, openness to change was explained as consumers pursuing their own emotions and tastes in an unknown environment, and values related to openness to change have been considered to have explanatory power when measuring consumer behavior in online shopping [17,18].
Online grocery shopping behavior can be seen as a process in which consumers continuously accept innovation [19], and the adoption or resistance to this behavior may depend on consumers’ perceptions of the attributes of the innovation [20]. In research related to online shopping behavior, the characteristics of innovation are explained as reasons for behaviors occurring and spreading [21-23]. Additionally, consumers’ perceptions that innovationrelated aspects can bring more benefits to online grocery shopping can help with actual purchasing behavior and repurchase decisions [24]. Kleijnen et al. [25] measured resistance to innovation in both functional and psychological dimensions, stating that innovation requires consumers to break existing values or habits; they found that resistance factors can explain the discontinuation or abandonment of purchasing behavior. Claudy et al. [26] attempted to approach innovation and resistance factors in an integrated manner and conducted research to verify the validity of consumers' behavioral intentions. However, the applicability and role of these factors in online grocery shopping require further discussion. Therefore, this study aims to identify the factors that influence consumers’ online grocery shopping behavior. Most previous studies have focused on facilitating or positive factors in purchasing behavior but have rarely addressed resistance factors [27]. However, as online shopping behavior becomes more common, maintaining purchasing behavior has been shown to be difficult owing to the limited understanding of factors that inhibit consumer behavior and of acceptance barriers [28]. To identify the factors influencing continuous purchasing behavior in online grocery shopping, this study analyzes consumer purchasing behavior using behavioral reasoning theory. Behavioral reasoning theory is an extension of the theory of planned behavior and can explain a wide range of purchasing behaviors [26]. Value extension can help us understand consumers' attitude and information processing, such as reasoning [29]. The facilitating and resistance factors of behavior do not necessarily have to be quantitatively the same or opposite, and the proposed model can identify the relative influences of different factors within a single theoretical model [14,30]. The extended theoretical structure of behavioral reasoning theory has been verified in research on innovation resistance diffusion [26], online shopping [31], and food-related fields [32,33]. It provides researchers with various cognitive perspectives to understand consumer intentions and behavior. Therefore, it can help identify the factors influencing online grocery shopping continuance behavior according to domestic consumer values, attitude related to online grocery shopping, and facilitating and resistance factors. Furthermore, it can provide reference materials or empirical evidence useful to managers in the food and restaurant industry to develop better plans.
Ethics statement
This study was approved by the Institutional Review Board of Korea National University of Transport (KNUT IRB 2023-07). All participants were required to read a description of the content and purpose of the study prior to the start of the survey and to provide an online consent form.
1. Subject and survey period
A survey was conducted from November to December 2023 by posting an online recruitment notice targeting consumers residing in Seoul who frequently purchase groceries online [1]. The survey was conducted on 300 consumers aged 20 years or older who had experience using online channels to purchase groceries within the last month through quota sampling. A total of 293 responses, excluding insincere or missing data, were collected for the final data analysis.
2. Survey contents
This study aimed to discuss how consumers’ values, attitudes, facilitating factors, and resistance factors influence online grocery shopping behavior. We established the following eight hypotheses for this purpose (Figure 1). Consumer values influence attitude (H1), facilitating factors (H2), and resistance factors (H3) as antecedents of overall shopping behavior decision-making [17,18]. Attitude is a major predictor of purchase decisions or continuous behavior in consumer behavior [34-36], thus a positive attitude may be one of the main causes for maintaining continuous purchasing behavior (H4). A sufficient rational basis for consumer behavior can directly influence continuous intention without complex decision-making processes [37,38]. In this case, facilitating factors positively influence continuous intention (H5), and resistance factors negatively influence it (H6). Additionally, facilitating factors positively influence attitude (H7) and resistance factors negatively influence attitude (H8).
The questionnaire comprised three main parts to verify the proposed model and hypotheses. First, to measure all the observed items of the model, the items were reconstructed after reviewing the rationality and accuracy of the measurements based on previous studies. Along with Ashfaq et al.’s [38] openness to change value scale and attitude [14], continuous intention [39], relative advantage, ubiquity [31], and compatibility [40] related to facilitating factors, price barriers [41], and tradition barriers [30] related to resistance factors, risk barriers were reconstructed based on the four items proposed by Driediger & Bhatiasevi [7]. All items were measured using a 5-point Likert scale. The second part of the questionnaire consisted of the demographic characteristics of consumers to understand the general characteristics of the survey target. The last part was related to the actual state of online grocery shopping.
3. Data analysis
The data collected in this study were analyzed using SPSS Statistics 28 (IBM Corp., Armonk, NY, USA) for the descriptive statistical analyses. SmartPLS 4 (GmbH SmartPLS, Bönningstedt, Germany) was used to perform model verification and statistical analysis using partial least squares structural equation modeling (PLS-SEM). PLS-SEM can provide researchers with stable results when exploring theories and addressing complex problems. In verifying the measurement model, reliability was explained using Cronbach’s α and composite reliability (CR). Convergent validity was verified using the average variance extracted (AVE), and discriminant validity was verified using the Fornell-Larcker criterion and Heterotrait-Monotrait ratio (HTMT). The evaluation criteria for these methods used the threshold values proposed by Hair et al. [42]. Based on this, the path hypotheses of the structural model were verified, and the predictability of the model was evaluated using R2, Q2, and f2.
1. Sample characteristics
The characteristics of the sample are listed in Table 1. This study included 146 men (49.8%) and 147 women (50.2%). Sixty respondents were in their 50s (20.5%), 59 in their 40s and more than 60s (20.1%), and 58 in their 30s (19.8%), indicating an even distribution. Regarding educational level, 196 (66.9%) were university graduates, 52 (17.7%) were high school graduates, and 44 (15.0%) had a master’s degree or higher. The largest occupational group was general office workers at 131 (44.7%), followed by housewives at 44 (15.0%), and the self-employed at 26 (8.9%). The highest monthly household income was 6 million won or more (n = 107, 36.5%), followed by 4–5 million won (n = 48, 16.4%), and 2–3 million won (n = 44, 15.0%).
2. Factors influencing online grocery shopping
Table 2 presents the results of the descriptive statistical analysis of the factors influencing online grocery shopping. Overall, consumers had a relatively high perception of the ubiquity of online grocery shopping (4.05 ± 0.67), while the perception of price barriers was low (2.84 ± 0.87), likely due to the relatively high monthly household income of the respondents. Looking at consumers’ perceptions of each item, “Online grocery shopping works regardless of location” (4.17 ± 0.68), “Online grocery shopping can be visited anytime” (4.16 ± 0.62), and “I intend to continue using online grocery shopping rather than discontinue its use” (3.89 ± 0.67) were rated highly. However, perceptions of “Only stores can offer personalized services to customers” (2.72 ± 0.97) and “Online grocery shopping seems to have a lower cost-performance ratio compared to the other channels.” (2.75 ± 0.91) were low.
3. Reliability and validity
The results of analyzing the reliability and validity of the measurement model using the PLS algorithm showed that Cronbach’s α and CR values were above 0.6, demonstrating suitability (Table 3). For validity, the AVE was used to evaluate whether the observed items accurately explained the factors. The AVE value of the risk barrier (0.532) was the lowest but higher than the minimum threshold proposed by Hair et al. [42], verifying the reliability and validity of all factors.
Discriminant validity explains the degree to which latent variables can be distinguished, and this study evaluated it using the results of the Fornell-Larcker criterion and HTMT (Table 4). To verify discriminant validity, the Fornell-Larcker criterion requires that the square root of AVE on the diagonal be larger than the correlation coefficients in the other matrices. In this study, the maximum correlation value was 0.705, and the minimum square root of the AVE was 0.729, verifying discriminant validity. In addition, HTMT is a more stringent method that complements the Fornell-Larcker criterion verification results. Most of the HTMT values for the factors were below 0.85, and the HTMT values for relative advantage and continuous intention were below 0.9, satisfying the HTMT threshold proposed by Henseler et al. [43] and verifying discriminant validity.
4. Structural model path verification
The path hypotheses were verified based on the measurement model (Table 5). The significance of the path relationships was verified using the bootstrapping method with 5,000 iterations of resampling. First, the influence of values on attitude was not statistically significant, rejecting H1 (β = 0.079, t = 1.479). However, facilitating (H2: β = 0.188, t = 3.127) and resistance (H3: β = 0.166, t = 2.623) factors were found to be influenced by consumer values. Second, the continuous intention of online grocery shopping was most influenced by facilitate factors (H5: β = 0.639, t = 12.393) constructed by relative advantage, ubiquity, and compatibility, followed by attitude (H4: β = 0.186, t = 3.099). By contrast, the resistance factors of online grocery shopping measured in the study did not significantly influence continuous intention, rejecting H6 (β = 0.015, t = 0.402). Finally, facilitate factors positively influenced consumers’ attitudes toward online grocery shopping (H7: β = 0.634, t = 14.051), whereas resistance factors had a statistically significant negative influence on attitude (H8: β = −0.112, t = 2.422). In addition, the f2 evaluation results showed an effect greater than 0.002 for each verified path (Figure 2).
To further evaluate the predictive ability of the model, the R2 and Q2 results for the internal latent variables are presented in Table 6. The continuous intention model in this study showed an explanatory power of 59.6% for the variance, whereas the attitude toward online grocery shopping was 45.4%. Together with the Q2 results showing values greater than 0, it can be judged that the model proposed in this study has predictive explanatory power and predictive relevance through behavioral reasoning theory and facilitates and resists factors of innovation.
As consumers’ interest in purchasing groceries through online channels gradually increases, they perceive higher uncertainty when purchasing groceries online than when purchasing other products, making the decision-making process for purchasing behavior more difficult. Additionally, for consumer behavior, the success of e-commerce depends more on continuous usage than on the initial purchase decision [44]. Therefore, this study aimed to identify various factors influencing domestic consumers’ continuous online grocery shopping behavior.
First, values as a stable personal characteristic played a role in driving online grocery shopping behavior related to openness to change in this study [45]. This is consistent with the hypotheses of the behavioral reasoning theory model in this study, showing that continuous online grocery shopping is influenced by individual consumer values [14]. However, this study found that values did not influence attitude, suggesting that consumers may have a more complex value system when purchasing groceries online.
Second, attitude was verified as an important predictor of continuous intention in this study, similar to the study by Zheng et al. [46] on American consumers, where attitude, as an overall evaluation of behavior, was found to be a key prerequisite for continuous intention to purchase food online. Westaby [14] stated that behavioral intentions can be determined by various psychological paths, and verified the moderating effect of attitude.
Furthermore, Wood [47] and Bavel et al. [48] highlighted that the reason for consumer behavior is to maintain self-worth and needs, and that the sense of behavioral and psychological coherence remains in play after the behavior occurs and can be used to support, distort, or maintain subsequent behaviors. In the model proposed in this study, when consumers had sufficient reasons for online grocery shopping, it brought about behavioral and psychological balance. Therefore, facilitating or resistance factors may directly influence consumer decision-making or continuous intention [14]. This can explain why consumers may show a positive attitude toward the online grocery market, but not increase their actual shopping behavior.
Third, the facilitating factors had the strongest explanatory power for continuous intention and attitude, with compatibility being one of the most important facilitating factor. Compatibility refers to the degree to which a purchase decision aligns with the consumer’s lifestyle, values, past experiences, and needs. Similar to Lim et al. [49], this study found that when online grocery shopping meets consumer needs, it is more likely to lead to a positive attitude. However, although price is the biggest barrier for consumers in online grocery shopping, even price-sensitive consumers do not directly influence continuous intentions through resistance factors. In other words, when consumers have a positive attitude toward online grocery shopping, additional costs or other barriers do not necessarily lead to discontinued purchasing.
Online channels have brought new opportunities to the food market. This study provides various theoretical perspectives for understanding consumer behavior. Unlike most studies that have adopted the theory of planned behavior, behavioral reasoning theory provides a deeper explanation of online grocery shopping behavior. The gap between attitude and continued intention can be explained by extending consumer values, facilitating factors, and resistance factors. Additionally, while some researchers have questioned whether behavioral reasoning theory could explain consumers’ continuous intention [38], the model proposed in this study explained more than half of the variance in continuous intention, providing empirical evidence for further extending the theory’s scope of application. Thus, managers in food and restaurant markets should maximize consumers’ understanding of the potential benefits of online channels. Providing services more suitable for consumer situations can have a more positive impact on maintaining online grocery shopping behavior. Managers should also minimize the barriers faced by consumers because the prolonged accumulation of such inhibitions could lower their overall evaluation of their behavior. Kim & Kim [50] believed that subscription services could be a possible solution, providing a stable user base for the platform while offering consumers more opportunities for benefits.
This study has some limitations. First, we only collected data from consumers in the Seoul area, and further research and comparisons with other regions of Korea should be done in the future. Second, as behavioral reasoning is situation-based and online grocery shopping increases further, future studies could apply more comprehensive research methods, such as investigating the reasons for continued consumer behavior through qualitative methods such as consumer interviews.
This study provides new discussion points for future research on online grocery shopping behavior. In conclusion, when deciding whether to continue purchasing groceries online, consumers mainly rely on whether the groceries meet their personal needs. Additionally, even when there were resistance factors, consumers who showed a positive attitude toward online grocery shopping did not discontinue their continuous purchasing behavior. Therefore, managers in the food and restaurant markets need to focus more on factors related to consumers’ online grocery shopping, such as compatibility, relative advantage, and ubiquity. These factors not only positively influence attitude toward online grocery shopping but also provide direct and strong purchasing motivations for continuous behavior. The results of this study are expected to serve as empirical reference materials that can help managers and researchers in the food and restaurant markets gain a more practical understanding of how to maintain online grocery shopping behavior and extend future research on consumers’ continuous behavior in other food markets.

Conflict of Interest

There are no financial or other issues that might lead to conflict of interest.

Funding

This study did not receive any specific grants from funding agencies in the public, commercial, or non-profit sectors.

Data Availability

The participants of this study did not give written consent for their data to be shared publicly, so due to the sensitive nature of the research supporting data is not available.

Fig. 1.
Online grocery shopping model.
kjcn-2024-29-3-199f1.jpg
Fig. 2.
Online grocery shopping mode path coefficients.
Path coefficients significant *P < 0.05, **P < 0.01, ***P < 0.001.
kjcn-2024-29-3-199f2.jpg
Table 1.
Sample characteristics (n = 293)
Characteristics Frequency (%)
Gender
 Men 146 (49.8)
 Women 147 (50.2)
Age (year)
 20–29 57 (19.5)
 30–39 58 (19.8)
 40–49 59 (20.1)
 50–59 60 (20.5)
 ≥ 60 59 (20.1)
Education
 Junior high school 1 (0.3)
 High school 52 (17.7)
 Bachelor’s 196 (66.9)
 Master’s or above 44 (15.0)
Occupation
 Student 18 (6.1)
 Homemaker 44 (15.0)
 Office worker 131 (44.7)
 Public official 8 (2.7)
 Self-employed 26 (8.9)
 Specialized worker 25 (8.5)
 Service industry 21 (7.2)
 Production worker 2 (0.7)
 Other 18 (6.1)
Household salary (KRW)
 < 2 million 15 (5.1)
 2–3 million 44 (15.0)
 3–4 million 38 (13.0)
 4–5 million 48 (16.4)
 5–6 million 41 (14.0)
 > 6 million 107 (36.5)

n (%).

Table 2.
Results of descriptive analyses of observed variables (n = 293)
Variables1) Values
Value 3.22 ± 0.93
 I like surprises, and I am always looking for new things to do. 3.22 ± 0.85
 I look for adventure and like to take risks. 2.85 ± 0.94
 I am open to new experiences. 3.58 ± 0.83
Attitude 3.71 ± 0.65
 Online grocery shopping would be a good idea. 3.72 ± 0.63
 Online grocery shopping would be a wise idea. 3.59 ± 0.67
 I like the idea of using online grocery shopping. 3.82 ± 0.63
Continuance intention 3.66 ± 0.80
 I intend to continue using online grocery shopping rather than discontinue its use. 3.89 ± 0.67
 My intentions are to continue using online grocery shopping than use any alternative means. 3.38 ± 0.86
 If I could, I would like to continue using online grocery shopping as much as possible. 3.70 ± 0.75
Compatibility 3.60 ± 0.77
 Online grocery shopping services fit well into my lifestyle. 3.73 ± 0.75
 Online grocery shopping services meet my consumption habits. 3.63 ± 0.75
 Online grocery shopping services meet my consumption beliefs. 3.40 ± 0.77
Relative advantage 3.62 ± 0.77
 Online grocery shopping has more advantages compared to other methods. 3.62 ± 0.70
 Online grocery shopping takes less time and effort. 3.85 ± 0.80
 Online grocery shopping effectively has greater value. 3.41 ± 0.73
Ubiquitous 4.05 ± 0.67
 Online grocery shopping can be well informed anytime. 3.84 ± 0.65
 Online grocery shopping can be visited anytime. 4.16 ± 0.62
 Online grocery shopping works regardless of location. 4.17 ± 0.68
Price barrier 2.84 ± 0.87
 Online grocery shopping seems to have a low price to performance ratio. 2.86 ± 0.85
 Online grocery shopping does not have fair prices in terms of cost performance. 2.90 ± 0.83
 Online grocery shopping seems to have a lower cost-performance ratio compared to the other channels. 2.75 ± 0.91
Risk barrier 3.20 ± 0.97
 I am concerned with the payment security. 2.97 ± 0.93
 I am concerned with the privacy of personal information. 3.15 ± 0.95
 I am concerned with the punctuality of the delivery time. 3.06 ± 0.97
 I am concerned with the quality of the products delivered when ordering. 3.62 ± 0.88
Tradition barrier 3.06 ± 0.96
 Visiting stores is a nice occasion to meet friends. 3.27 ± 0.97
 Only stores can offer personalized services to customers. 2.72 ± 0.97
 I feel satisfied going to stores as compared to newer ways. 3.17 ± 0.84

Mean ± SD.

1) 1, Strongly disagree; 3, Neither agree nor disagree; 5, Strongly agree.

Table 3.
Reliability and convergent validity (n = 293)
Variables Outer loadings Cronbach’s α CR AVE
VAL 0.839 0.903 0.756
 VAL1 0.897
 VAL2 0.888
 VAL3 0.822
ATT 0.805 0.885 0.719
 ATT1 0.876
 ATT2 0.858
 ATT3 0.810
CI 0.802 0.883 0.716
 CI1 0.852
 CI2 0.802
 CI3 0.883
CPA 0.848 0.908 0.767
 CPA1 0.873
 CPA2 0.899
 CPA3 0.855
RA 0.700 0.833 0.627
 RA1 0.851
 RA2 0.682
 RA3 0.833
UBI 0.716 0.838 0.633
 UBI1 0.796
 UBI2 0.782
 UBI3 0.809
PB 0.846 0.907 0.765
 PB1 0.825
 PB2 0.882
 PB3 0.915
RB 0.701 0.817 0.532
 RB1 0.810
 RB2 0.820
 RB3 0.651
 RB4 0.612
TB 0.668 0.817 0.599
 TB1 0.719
 TB2 0.796
 TB3 0.804

VAL, value; ATT, attitude; CI, continuance intention; CPA, compatibility; RA, relative advantage; UBI, ubiquitous; PB, price barrier; RB, risk barrier; TB, tradition barrier; CR, composite reliability; AVE, average variance extracted.

Table 4.
Discriminant validity results (n = 293)
Variables VAL ATT CI CPA RA UBI PB RB TB
Fornell-Larcker criterion1)
 VAL 0.870
 ATT 0.179 0.848
 CI 0.117 0.606 0.846
 CPA 0.170 0.589 0.705 0.876
 RA 0.129 0.575 0.681 0.645 0.792
 UBI 0.173 0.478 0.479 0.498 0.458 0.796
 PB 0.109 −0.209 −0.133 −0.168 −0.074 −0.129 0.875
 RB 0.052 −0.103 0.001 −0.043 0.024 0.053 0.292 0.729
 TB 0.220 −0.064 −0.064 −0.131 −0.050 −0.091 0.477 0.274 0.774
Heterotrait-Monotrait ratio (HTMT)
 VAL
 ATT 0.217
 CI 0.142 0.748
 CPA 0.203 0.714 0.848
 RA 0.167 0.754 0.893 0.818
 UBI 0.223 0.600 0.604 0.616 0.641
 PB 0.128 0.248 0.157 0.201 0.133 0.160
 RB 0.094 0.174 0.139 0.109 0.177 0.121 0.373
 TB 0.299 0.152 0.212 0.235 0.167 0.163 0.614 0.395

VAL, value; ATT, attitude; CI, continuance intention; CPA, compatibility; RA, relative advantage; UBI, ubiquitous; PB, price barrier; RB, risk barrier; TB, tradition barrier; AVE, average variance extracted.

1) The diagonal is the square root of AVE.

Table 5.
The structural model hypothesis results (n = 293)
Hypothesis Path coefficient T value f2 Remark
First order
 H1 VAL → ATT 0.079 1.479 0.011 Not supported
 H2 VAL → FF 0.188 3.127** 0.037 Supported
 H3 VAL → RF 0.166 2.623** 0.028 Supported
 H4 ATT → CI 0.186 3.099** 0.047 Supported
 H5 FF → CI 0.639 12.393*** 0.567 Supported
 H6 RF → CI 0.015 0.402 0.001 Not supported
 H7 FF → ATT 0.634 14.051*** 0.692 Supported
 H8 RF → ATT −0.112 2.422* 0.022 Supported
Second order
 FF → CPA 0.896 59.481***
 FF → RA 0.846 43.907***
 FF → UBI 0.741 22.466***
 RF → PB 0.838 38.689***
 RF → RB 0.649 12.169***
 RF → TB 0.759 22.925***

VAL, value; ATT, attitude; CI, continuance intention; CPA, compatibility; RA, relative advantage; UBI, ubiquitous; PB, price barrier; RB, risk barrier; TB, tradition barrier; FF, facilitate factors; RF, resistance factors.

* P < 0.05,

** P < 0.01,

*** P < 0.001.

Table 6.
Predictive ability results (n = 293)
Constructs R2 Q2
ATT 0.454 0.023
CI 0.596 0.006
RF 0.027 0.016
FF 0.035 0.028

ATT, attitude; CI, continuance intention; FF, facilitate factors; RF, resistance factors.

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        Factors influencing consumers’ continuance intention in online grocery shopping: a cross-sectional study using application behavior reasoning theory
        Korean J Community Nutr. 2024;29(3):199-211.   Published online June 30, 2024
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      Factors influencing consumers’ continuance intention in online grocery shopping: a cross-sectional study using application behavior reasoning theory
      Image Image
      Fig. 1. Online grocery shopping model.
      Fig. 2. Online grocery shopping mode path coefficients. Path coefficients significant *P < 0.05, **P < 0.01, ***P < 0.001.
      Factors influencing consumers’ continuance intention in online grocery shopping: a cross-sectional study using application behavior reasoning theory
      Characteristics Frequency (%)
      Gender
       Men 146 (49.8)
       Women 147 (50.2)
      Age (year)
       20–29 57 (19.5)
       30–39 58 (19.8)
       40–49 59 (20.1)
       50–59 60 (20.5)
       ≥ 60 59 (20.1)
      Education
       Junior high school 1 (0.3)
       High school 52 (17.7)
       Bachelor’s 196 (66.9)
       Master’s or above 44 (15.0)
      Occupation
       Student 18 (6.1)
       Homemaker 44 (15.0)
       Office worker 131 (44.7)
       Public official 8 (2.7)
       Self-employed 26 (8.9)
       Specialized worker 25 (8.5)
       Service industry 21 (7.2)
       Production worker 2 (0.7)
       Other 18 (6.1)
      Household salary (KRW)
       < 2 million 15 (5.1)
       2–3 million 44 (15.0)
       3–4 million 38 (13.0)
       4–5 million 48 (16.4)
       5–6 million 41 (14.0)
       > 6 million 107 (36.5)
      Variables1) Values
      Value 3.22 ± 0.93
       I like surprises, and I am always looking for new things to do. 3.22 ± 0.85
       I look for adventure and like to take risks. 2.85 ± 0.94
       I am open to new experiences. 3.58 ± 0.83
      Attitude 3.71 ± 0.65
       Online grocery shopping would be a good idea. 3.72 ± 0.63
       Online grocery shopping would be a wise idea. 3.59 ± 0.67
       I like the idea of using online grocery shopping. 3.82 ± 0.63
      Continuance intention 3.66 ± 0.80
       I intend to continue using online grocery shopping rather than discontinue its use. 3.89 ± 0.67
       My intentions are to continue using online grocery shopping than use any alternative means. 3.38 ± 0.86
       If I could, I would like to continue using online grocery shopping as much as possible. 3.70 ± 0.75
      Compatibility 3.60 ± 0.77
       Online grocery shopping services fit well into my lifestyle. 3.73 ± 0.75
       Online grocery shopping services meet my consumption habits. 3.63 ± 0.75
       Online grocery shopping services meet my consumption beliefs. 3.40 ± 0.77
      Relative advantage 3.62 ± 0.77
       Online grocery shopping has more advantages compared to other methods. 3.62 ± 0.70
       Online grocery shopping takes less time and effort. 3.85 ± 0.80
       Online grocery shopping effectively has greater value. 3.41 ± 0.73
      Ubiquitous 4.05 ± 0.67
       Online grocery shopping can be well informed anytime. 3.84 ± 0.65
       Online grocery shopping can be visited anytime. 4.16 ± 0.62
       Online grocery shopping works regardless of location. 4.17 ± 0.68
      Price barrier 2.84 ± 0.87
       Online grocery shopping seems to have a low price to performance ratio. 2.86 ± 0.85
       Online grocery shopping does not have fair prices in terms of cost performance. 2.90 ± 0.83
       Online grocery shopping seems to have a lower cost-performance ratio compared to the other channels. 2.75 ± 0.91
      Risk barrier 3.20 ± 0.97
       I am concerned with the payment security. 2.97 ± 0.93
       I am concerned with the privacy of personal information. 3.15 ± 0.95
       I am concerned with the punctuality of the delivery time. 3.06 ± 0.97
       I am concerned with the quality of the products delivered when ordering. 3.62 ± 0.88
      Tradition barrier 3.06 ± 0.96
       Visiting stores is a nice occasion to meet friends. 3.27 ± 0.97
       Only stores can offer personalized services to customers. 2.72 ± 0.97
       I feel satisfied going to stores as compared to newer ways. 3.17 ± 0.84
      Variables Outer loadings Cronbach’s α CR AVE
      VAL 0.839 0.903 0.756
       VAL1 0.897
       VAL2 0.888
       VAL3 0.822
      ATT 0.805 0.885 0.719
       ATT1 0.876
       ATT2 0.858
       ATT3 0.810
      CI 0.802 0.883 0.716
       CI1 0.852
       CI2 0.802
       CI3 0.883
      CPA 0.848 0.908 0.767
       CPA1 0.873
       CPA2 0.899
       CPA3 0.855
      RA 0.700 0.833 0.627
       RA1 0.851
       RA2 0.682
       RA3 0.833
      UBI 0.716 0.838 0.633
       UBI1 0.796
       UBI2 0.782
       UBI3 0.809
      PB 0.846 0.907 0.765
       PB1 0.825
       PB2 0.882
       PB3 0.915
      RB 0.701 0.817 0.532
       RB1 0.810
       RB2 0.820
       RB3 0.651
       RB4 0.612
      TB 0.668 0.817 0.599
       TB1 0.719
       TB2 0.796
       TB3 0.804
      Variables VAL ATT CI CPA RA UBI PB RB TB
      Fornell-Larcker criterion1)
       VAL 0.870
       ATT 0.179 0.848
       CI 0.117 0.606 0.846
       CPA 0.170 0.589 0.705 0.876
       RA 0.129 0.575 0.681 0.645 0.792
       UBI 0.173 0.478 0.479 0.498 0.458 0.796
       PB 0.109 −0.209 −0.133 −0.168 −0.074 −0.129 0.875
       RB 0.052 −0.103 0.001 −0.043 0.024 0.053 0.292 0.729
       TB 0.220 −0.064 −0.064 −0.131 −0.050 −0.091 0.477 0.274 0.774
      Heterotrait-Monotrait ratio (HTMT)
       VAL
       ATT 0.217
       CI 0.142 0.748
       CPA 0.203 0.714 0.848
       RA 0.167 0.754 0.893 0.818
       UBI 0.223 0.600 0.604 0.616 0.641
       PB 0.128 0.248 0.157 0.201 0.133 0.160
       RB 0.094 0.174 0.139 0.109 0.177 0.121 0.373
       TB 0.299 0.152 0.212 0.235 0.167 0.163 0.614 0.395
      Hypothesis Path coefficient T value f2 Remark
      First order
       H1 VAL → ATT 0.079 1.479 0.011 Not supported
       H2 VAL → FF 0.188 3.127** 0.037 Supported
       H3 VAL → RF 0.166 2.623** 0.028 Supported
       H4 ATT → CI 0.186 3.099** 0.047 Supported
       H5 FF → CI 0.639 12.393*** 0.567 Supported
       H6 RF → CI 0.015 0.402 0.001 Not supported
       H7 FF → ATT 0.634 14.051*** 0.692 Supported
       H8 RF → ATT −0.112 2.422* 0.022 Supported
      Second order
       FF → CPA 0.896 59.481***
       FF → RA 0.846 43.907***
       FF → UBI 0.741 22.466***
       RF → PB 0.838 38.689***
       RF → RB 0.649 12.169***
       RF → TB 0.759 22.925***
      Constructs R2 Q2
      ATT 0.454 0.023
      CI 0.596 0.006
      RF 0.027 0.016
      FF 0.035 0.028
      Table 1. Sample characteristics (n = 293)

      n (%).

      Table 2. Results of descriptive analyses of observed variables (n = 293)

      Mean ± SD.

      1, Strongly disagree; 3, Neither agree nor disagree; 5, Strongly agree.

      Table 3. Reliability and convergent validity (n = 293)

      VAL, value; ATT, attitude; CI, continuance intention; CPA, compatibility; RA, relative advantage; UBI, ubiquitous; PB, price barrier; RB, risk barrier; TB, tradition barrier; CR, composite reliability; AVE, average variance extracted.

      Table 4. Discriminant validity results (n = 293)

      VAL, value; ATT, attitude; CI, continuance intention; CPA, compatibility; RA, relative advantage; UBI, ubiquitous; PB, price barrier; RB, risk barrier; TB, tradition barrier; AVE, average variance extracted.

      The diagonal is the square root of AVE.

      Table 5. The structural model hypothesis results (n = 293)

      VAL, value; ATT, attitude; CI, continuance intention; CPA, compatibility; RA, relative advantage; UBI, ubiquitous; PB, price barrier; RB, risk barrier; TB, tradition barrier; FF, facilitate factors; RF, resistance factors.

      P < 0.05,

      P < 0.01,

      P < 0.001.

      Table 6. Predictive ability results (n = 293)

      ATT, attitude; CI, continuance intention; FF, facilitate factors; RF, resistance factors.


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