The Role of Artificial Intelligence in Shaping Sustainable Consumer Behavior: A Cross-Sectional Study of South west, Nigeria
- Oke T. T.
- Ramachandran T.
- A. F. Afolayan
- 255-266
- Jan 8, 2024
- Computer Science
The Role of Artificial Intelligence in Shaping Sustainable Consumer Behavior: A Cross-Sectional Study of Southwest, Nigeria
Oke T. T.1, Ramachandran T.2, and A. F. Afolayan3*, K. C. Ihemereze4, C. A. Udeh5
1Yannis Marketing, Lagos, Nigeria
1SRM Institute of Science and Technology, Kattankulathur, Chennai, India
2Institute for Sustainable Development, First Technical University, Ibadan, Oyo State, Nigeria
3Cocharis Motors Ltd, Nigeria
4Independent Researcher, Lagos
*Corresponding Author
DOI: https://doi.org/10.51244/IJRSI.2023.1012021
Received: 04 December 2023; Accepted: 08 December 2023; Published: 07 January 2024
ABSTRACT
Artificial Intelligence (AI) has become ubiquitous leaving imprints in every facet of life even stronger as the growing number of purchases occur online. Despite the associated benefits of AI, little is still known about the relationship between this powerful tool and sustainability in consumer behaviour. This study was, therefore conducted to assess the importance of AI in influencing sustainable consumer behaviour in Nigeria. Data was collected for the research using a pre-tested, well-structured questionnaire administered to 320 respondents. Data collected were analysed using SPSS version 20 and STATA version 12.0. Results of the analysis showed that the experience of the respondents is relatively high at 9.1±4.58, and the mean number of times purchased per month was 5±2.17 while 49 per cent of the respondents are aware of the use of AI in online shopping. About 67.5 per cent of the respondents were familiar with AI while 27.19 per cent carried out a purchasing decision based on AI-generated recommendations related to sustainability. Consumers also believe that the influence of AI on consumer choices is reflected in receiving personalized recommendations for products and services, but believe AI plays moderate role on the level of influence these personalized recommendations have on the decision to purchase a product is relatively low. The results suggest that AI could impact Sustainable consumer behaviour in the study area.
Keywords: Artificial Intelligence, Consumer Behaviour, Sustainability, e-commerce
INTRODUCTION
The human being is a very challenging subject of study to comprehend with its continually evolving nature and idiosyncrasy. This unique trait of man has continually been displayed in the allocation of resources either for production or consumption. The traditional method of getting the produced goods to consumers has since seen changes in the process of marketing (Jia et al., 2023). These changes extend to sustainability in every sphere of life of man including the decision-making process in markets and marketing. This growing global environmental awareness and concerns have triggered a major movement in consumer behaviour toward sustainability of production and consumption in recent years (Vinuesa et al., 2020). The growing awareness of the environmental impact of consumer decisions has led to a sustained increase in demand for sustainable products and activities. This trend is captured by Nielsen (2021), showing that 73% of customers worldwide are willing to alter their consumption patterns for sustainability’s sake. This fundamental change has made it possible to investigate novel strategies for promoting and maintaining environmentally conscious consumer behaviour (Vinuesa et al., 2020, Jiang et al., 2022).
Another game-changer is the continuing role of technology with the specific influence of Artificial Intelligence (AI) applications that cut across every fibre of society’s fabric (Beyari and Garamoun, 2022). The role that AI plays in our economy is increasingly important with its potential to power improvement of productivity and economic growth. This is expected to be expressed in the improvement of quality and timeliness of the decision-making processes of both producers and buyers. Data would be transformed by AI to strategically guide meaningful consumer behaviour thus leading to better consumer satisfaction. It is also expected that reaching the right clients at the right moment is made much easier for firms by AI-based digital marketing (Ransbotham, et al. 2017). Considering that we currently sit at the intersection of sustainability and technology, we must investigate the precise role that AI plays in shaping sustainable consumer behaviour.
The predictive power of AI has continued to significantly cause a revolution of product recommendations for buyers and improve customer service interaction. This is expected to provide a level of personalization that will suit consumers in terms of utility and satisfaction thereby affecting purchasing decisions and utility derived. With the continuing deployment of newer and improved AI technologies, the need to understand their influence on helping both suppliers and buyers towards sustainable consumer behaviour is a win-win scenario that the economy requires (Mecula, 2023). Actualizing this will be the beginning of a future where the decision-making process and market strategies are done with the primary intention of meeting environmental challenges while embracing technological advancements (Marcello et al., 2022).
For this study, the specific objectives of the study are to examine the influence of AI on consumer choices in the study area and identify the factors affecting AI implementation for Sustainable Behaviour.
LITERATURE REVIEW
Artificial intelligence (AI) as a tool has continued to affect increasing aspects of daily life in recent years with major implications for consumer behaviour and decision-making. This is very important because our lives are dependent on the millions of marketing transactions that occur every second which lays the need for this research. This part of the study prepares the literature review and aims to investigate the relationship between AI and sustainable consumer behaviour (Bawack, 2022).
With a focus on the Southwest area of Nigeria, this seminal effort investigates the dynamic interaction between Artificial Intelligence (AI) and Sustainable Consumer Behaviour. To provide a strong conceptual basis, this theoretical overview states the major concepts and how they relate to one another in the suggested framework.
Artificial Intelligence and Consumer Behavior
The appraisal of AI’s influence on consumer behaviour has received increasing attention from the important worlds of academic and industrial scopes. AI technologies, encompassing machine learning algorithms and individualized recommendation systems, have been effectively employed to enrich the consumer experience through the provision of customized suggestions and information. Existing research indicates that AI-driven personalized recommendations play a pivotal role in shaping consumer preferences and decisions across diverse domains (Hosta, 2021; Nekmahmud and Fekete-Farkas, 2020).
However, there exists a notable gap in research concerning the specific ramifications of AI on consumer behaviour within the sustainability context. A comprehensive understanding of how AI technologies contribute to the adoption of sustainable practices becomes especially imperative as societies confront environmental challenges and actively seek innovative solutions.
AI-Sustainable Consumer Behavior Framework
To serve as a guide for this research effort into the influence of AI on shaping sustainable consumer behaviour, we posit a theoretical framework (see Figure 1) showing the various variables for this study and their hypothesized interrelations. This framework is informed by pertinent literature encompassing AI, consumer behaviour, and sustainability.
Figure 1: AI-Sustainable Consumer Behavior Framework
- Independent Variable: Artificial Intelligence (AI) Implementation
In the context of sustainable consumer behaviour, AI implementation is posited as a pivotal factor influencing decision-making processes. We envisage three primary dimensions of AI implementation: personalized recommendations, information accessibility, and trust in AI. These dimensions collectively contribute to the extent to which AI influences consumers to make sustainable choices.
- Mediating Variable: Consumer Awareness and Trust in AI
Central to the model is the role of consumer awareness and trust in mediating the relationship between AI implementation and sustainable consumer behaviour. A heightened awareness of AI-driven sustainability information, coupled with trust in AI recommendations, is expected to amplify the impact of AI on shaping sustainable consumer practices.
- Dependent Variable: Sustainable Consumer Behavior
At the core of the framework lies sustainable consumer behaviour, encompassing two key dimensions: the purchase of environmentally friendly products and the adoption of sustainable practices in daily life. This variable serves as the outcome measure, reflecting the tangible impact of AI on fostering a more environmentally conscious consumer base.
- Moderating Variables: Cultural, Economic, and Technological Factors in Southwest Nigeria
Recognizing the regional nuances in Southwest Nigeria, cultural, economic, and technological factors are introduced as moderating variables. These factors are anticipated to influence the strength and direction of the relationships within the model, acknowledging the diverse contextual landscape in which the study unfolds.
Synthesis and Implications
The proposed theoretical model aligns with the broader discourse on AI and sustainability, integrating regional considerations to enrich our understanding of the intricate relationships at play. By exploring the interdependence of AI implementation, consumer awareness, trust, and sustainable behaviour, this framework offers a nuanced lens through which to examine the specific dynamics in Southwest Nigeria.
This model not only advances theoretical perspectives but also has practical implications for policymakers, businesses, and technology developers seeking to enhance sustainable practices in the region. As we embark on empirical investigations, this conceptual foundation will guide the interpretation of findings and contribute to the evolving dialogue on AI’s role in shaping sustainable consumer behaviour.
Gaps in Existing Literature
While AI’s impact on consumer behaviour has been explored, there is a notable gap in understanding how AI specifically contributes to sustainable consumer behaviour, particularly in diverse regional contexts. This study aims to address this gap by focusing on Southwest Nigeria, where cultural, economic, and technological factors may shape the dynamics between AI and sustainable practices.
In summary, this literature review establishes the foundation for our study, emphasizing the need to explore the role of AI in shaping sustainable consumer behaviour in Southwest Nigeria. The proposed theoretical framework provides a structured approach to examining the complex interplay between AI, consumer awareness, trust, and sustainable behaviour in this unique regional context.
DATA AND ESTIMATION METHOD
The population for this study consists of internet users in three States namely Lagos, Oyo and FCT, Abuja. Data were collected from randomly selected 320 students and shoppers using a structured questionnaire. Data were collected on socio-demographic information, risk-related factors, privacy concerns, web-based information, etc. Data collected were estimated using descriptive statistics.
ANALYSIS AND RESULTS
Socio-economic Characteristics
The mean sex value was 0.49, with a standard deviation of 0.40, indicating a relatively balanced distribution of gender within the sample. A mean age of 24 years was also recorded amongst the respondents, with a standard deviation of 10.9, reflecting a diverse age range within the surveyed population. On average, respondents were recorded to have attained at least 9.2 years of formal education, with a standard deviation of 4.91, suggesting variability in educational backgrounds within the sample. The mean monthly income from the table was revealed to be N45,050, with a standard deviation of N10,535.8, indicating variability in the income levels of the respondents. The mean off-schooling work value was also seen to be 0.55, with a standard deviation of 0.24, suggesting a moderate level of participation in off-schooling work among the respondents.
Table 1 revealed that respondents had an average online shopping experience of 9.1, with a standard deviation of 4.58, indicating moderate variability in the level of familiarity with online shopping platforms and that on average, respondents engaged in online shopping five times per month, with a standard deviation of 2.17, suggesting a consistent yet somewhat varied frequency of online shopping. The moderate level of online shopping experience and high frequency of monthly online shopping suggest a growing trend in the adoption of online shopping platforms among the surveyed population. This aligns with the global shift towards e-commerce.
Table 1 also revealed the mean awareness of AI use in shopping to be 0.49, with a standard deviation of 0.28, indicating moderate variability in respondents’ awareness of AI applications in the context of online shopping. This awareness level of AI, though moderate, indicates room for improvement. Strategies to enhance awareness and educate consumers about AI applications in online shopping may be beneficial for both consumers and businesses.
Table 1: Socio-demographic of the respondents
Variables | Description | Mean | SD |
Socio-demographic | |||
Sex | Sex of Respondents (1 = Male, 0 otherwise) | 0.49 | 0.40 |
Age | Age of respondents in years | 24 | 10.9 |
Eduyear | Number of years of formal education | 9.2 | 4.91 |
Monthlyincome | Monthly income (N) | 45,050 | 10,535.8 |
OffIncome | Off-schooling work (1 if participating in off-schooling work, 0 otherwise) | 0.55 | 0.24 |
Experience | Online shopping experience | 9.1 | 4.58 |
Timepurchase | Number of times of monthly online shopping is done | 5 | 2.17 |
AwareAI | Awareness of the use of AI in shopping (1 if used, 0 otherwise) | 0.49 | 0.28 |
Level of familiarity with AI
The level of familiarity of consumers to Artificial Intelligence is presented in Table 1.1 and Fig. 1. Results show that a total of 67.50% of the sampled population are familiar with artificial intelligence, with 18.75% being very familiar and 48.75% being somewhat familiar. This implies that the level of familiarity with AI in the study area is moderately high.
Table 1.1: Level of Familiarity with AI
Freq | Per cent | |
Very familiar | 60 | 18.75 |
Somewhat familiar | 156 | 48.75 |
Not familiar at all | 104 | 32.5 |
Total | 320 | 100 |
List of AI applications known to and used by respondents
The number of AI applications that consumers are familiar with make use of is presented in Table 1.2. Results show that a total of 67.50% of the sampled population are familiar with artificial intelligence, with 18.75% being very familiar and 48.75% being somewhat familiar. This implies that the level of familiarity with AI in the study area is moderately high.
Table 1.2: List of AI applications known to and used by respondents
AI Application known | Freq. | Per cent |
Ziva chatbot | 39 | 12.19 |
Zigi | 37 | 11.56 |
Leo chatbot | 36 | 11.25 |
Ivy Chatbot | 32 | 10 |
Temi Chatbot | 35 | 10.94 |
Kuda bank app | 37 | 11.56 |
Flutterwave | 29 | 9.06 |
Others (Grammarly, Elevenlabs, Midjourney, ChatGPT, Canva) | 75 | 23.44 |
Total | 320 | 100 |
AI’s Role in Shaping Sustainable Consumer Behavior
Table 1.3 reveals how the respondents perceived artificial intelligence to have a role in shaping consumer behaviour on a long-run scale to which 40.68% (Strongly Agree – 21.25%, Agree – 19.37%) of the respondents attested to being viable.
Table 1.3: Perception of respondents on whether AI shapes sustainable consumer behaviour
AI shapes sustainable consumer behaviour | Freq. | Per cent |
Strongly agree | 68 | 21.25 |
Agree | 62 | 19.37 |
Neutral | 70 | 21.88 |
Disagree | 67 | 20.94 |
Strongly disagree | 53 | 16.56 |
Total | 320 | 100 |
Distribution of Consumers made purchasing decisions based on AI-generated recommendations related to sustainability
According to findings in Table 1.4, approximately 27.19% of respondents reported making purchasing decisions based on AI-generated recommendations related to sustainability. This indicates a notable proportion of the sample actively relies on AI-driven suggestions when considering the environmental and social impact of their purchases.
Table 1.4: Consumers made purchasing decisions based on AI-generated recommendations related to sustainability
Freq. | Per cent | |
Yes | 87 | 27.19 |
No | 133 | 41.56 |
Not sure | 100 | 31.25 |
Total | 320 | 100 |
Distribution of Consumers according to their trust in AI recommendation related to Sustainability
Table 1.5 also goes further to reveal that 37.82% (Complete Trust – 19.38%, Trust to some Extent – 18.44%) of the responders had trust in the sustainability-driven recommendations generated by AI. This indicates that above a quarter of the sample has a high level of confidence in AI’s ability to provide reliable and trustworthy suggestions for sustainable purchasing.
The findings suggest a diverse landscape regarding the integration of AI-generated recommendations into consumers’ sustainability-related decision-making processes. While a significant portion remains skeptical or unsure, a noteworthy group actively incorporates AI suggestions into their purchasing decisions.
Table 1.5: Consumers’ Trust in AI recommendation related to sustainability
Freq. | Per cent | |
Completely trust | 62 | 19.38 |
Trust to some extent | 59 | 18.44 |
Neutral | 82 | 25.62 |
Do not trust much | 67 | 20.94 |
Do not trust at all | 50 | 15.62 |
Total | 320 | 100 |
Objective 2: Examine the Influence of Artificial Intelligence on Consumer Choices
Consumers received personalized recommendations for products or services from online platforms
From the findings in Table 2, approximately 57.19% of the respondents reported to receiving personalized recommendations for products or services from online platforms. This indicates a majority of the sample has experienced the integration of AI-driven personalized recommendations into their online shopping experiences.
Table 2.0: Consumers received personalized recommendations for products or services from online platforms
Freq. | Per cent | |
Yes | 183 | 57.19 |
No | 137 | 42.81 |
Total | 320 | 100 |
Consumers’ perception of the level of influence these personalized recommendations have on the decision to purchase a product
From Table 2.1, the findings revealed that approximately 30.31% (Very influential – 14.06%, Influential – 16.25%) of the respondents perceived personalized recommendations to be very influential in their decision to purchase a product. This suggests a notable portion of the sample attributes a high level of impact to AI-generated suggestions on their purchasing choices.
Table 2.1: Consumers’ perception of the level of influence these personalized recommendations have on the decision to purchase a product
Freq. | Per cent | |
Very Influential | 45 | 14.06 |
Influential | 52 | 16.25 |
Neutral | 47 | 14.69 |
Not influential | 39 | 12.19 |
Not applicable | 137 | 42.81 |
Total | 320 | 100 |
Consumers’ being comfortable with AI technologies using their data to provide personalized recommendations
Table 2.2 revealed that approximately 38.44% of respondents were comfortable with AI technologies using their data to provide personalized recommendations. This suggests a substantial portion of the sample is open to and accepting of the use of personal data for personalized AI-driven services.
Table 2.2: Consumers’ being comfortable with AI technologies using their data to provide personalized recommendations
Freq. | Per cent | |
Yes | 123 | 38.44 |
No | 80 | 25.0 |
Not sure | 117 | 36.56 |
Total | 320 | 100 |
Types of products or services that consumers believe benefit the most from AI-driven personalized recommendations in promoting sustainable choices
Table 2.3 shows that about 16.88 per cent of the respondents are aware of and make use of Grammarly which is based on AI for writing…
Table 2.3: Types of products or services that consumers believe benefit the most from AI-driven personalized recommendations in promoting sustainable choices
AI Application known | Freq | Per cent |
Ziva chatbot | 24 | 7.5 |
Zigi by MTN | 35 | 10.94 |
Leo Chatbot | 58 | 18.12 |
Ivy Chatbot | 52 | 16.25 |
Temi Chatbot | 54 | 16.88 |
Kuda bank app | 57 | 17.81 |
Flutterwave | 40 | 12.5 |
Total | 320 | 100 |
Types of products or services that consumers believe benefit the most from AI-driven personalized recommendations in promoting sustainable choices
Table 2 revealed that 43.75% (strongly agree – 23.75%, agree – 20.0%) of the sampled respondents view that AI can effectively contribute to raising awareness about sustainable living practices. This suggests a significant portion of the sample holds a positive view of AI’s potential role in promoting sustainability awareness.
Table 2.3: Consumers’ perception that AI can effectively contribute to raising awareness about sustainable living practices
Freq. | Per cent | |
Strongly agree | 76 | 23.75 |
Agree | 64 | 20.0 |
Neutral | 69 | 21.56 |
Disagree | 45 | 14.06 |
Strongly disagree | 66 | 20.63 |
Total | 320 | 100 |
Consumers’ ability to trust the information provided by AI about the sustainability of a product or service
Table 2.4 revealed that approximately 43.75% (Very likely – 24.69%, and likely – 19.06%) of respondents stated that they are very likely to trust the information provided by AI about the sustainability of a product or service. This indicates a substantial portion of the sample that has high confidence in the reliability of AI-generated information regarding sustainability.
Table 2.4: Consumers’ ability to trust the information provided by AI about the sustainability of a product or service
Freq. | Per cent | |
Very likely | 79 | 24.69 |
Likely | 61 | 19.06 |
Neutral | 53 | 16.56 |
Unlikely | 58 | 18.13 |
Very unlikely | 69 | 21.56 |
Total | 320 | 100 |
Objective 3: Identify Regional Factors Affecting AI Implementation for Sustainable Behavior
Consumers’ perception of the role of government policies in influencing sustainable consumer behaviour in the study area
Table 3.0, from the findings, revealed that 36.56% (very influential – 17.81%, influential – 18.75%) of the sampled respondents perceived government policies as very influential in influencing sustainable consumer behaviour in the study area. This suggests a moderate proportion of the sample attributes a high level of impact to government interventions in shaping sustainability practices.
Table 3.0: Consumers’ perception of the role of government policies in influencing sustainable consumer behaviour in the study area
Freq. | Per cent | |
Very influential | 57 | 17.81 |
Influential | 60 | 18.75 |
Neutral | 58 | 18.13 |
Not very influential | 67 | 20.94 |
Not influential at all | 78 | 24.37 |
Total | 320 | 100 |
Specific technological challenges in the study area that consumers believe that effective AI implementation could induce sustainable behaviour
From Table 3.1, respondents identified specific technological challenges in the study area that they believe effective AI implementation could address to induce sustainable behaviour which was power supply improvement (11.56%), traffic management (14.06%), educational dimension (12.19%), financial planning and access (15.94%), security purposes (17.50%), environmental dimension (12.50%) and access to timely Information (16.25%). These findings indicate that respondents recognize a range of technological challenges that, if effectively addressed through AI implementation, could contribute to sustainable behaviour in the study area.
Table 3.1: Specific technological challenges in the study area that consumers believe that effective AI implementation could induce sustainable behaviour
Freq. | Per cent | |
Power Supply improvement | 37 | 11.56 |
Traffic Management | 45 | 14.06 |
Educational dimension | 39 | 12.19 |
Financial planning and access | 51 | 15.94 |
Security purposes | 56 | 17.5 |
Environmental dimension | 40 | 12.5 |
Access to timely information | 52 | 16.25 |
320 | 100 |
Consumers’ perception of the role of economic factors in influencing their ability to adopt sustainable behaviour
From Table 3.2, findings revealed that 59.68% (strongly influence – 36.56%, influence – 23.13%) of the sampled respondents Approximately 36.56% of respondents strongly believe that economic factors strongly influence their ability to adopt sustainable behaviour. This suggests a significant portion of the sample perceives a strong connection between economic conditions and their capacity to engage in sustainable practices.
Table 3.2: Consumers’ perception of the role of economic factors in influencing their ability to adopt sustainable behaviour
Freq. | Per cent | |
Strongly influence | 117 | 36.56 |
Influence | 74 | 23.13 |
Neutral | 61 | 19.06 |
Do not influence | 68 | 21.25 |
Total | 320 | 100 |
Importance of community awareness and participation in promoting sustainable behaviour
From Table 3.3, the findings revealed that 44.69% (very influential – 23.75%, influential – 20.94%) of the sampled respondents perceived community awareness and participation as very influential in promoting sustainable behaviour. This suggests a significant portion of the sample recognizes the importance of community engagement in fostering sustainability practices.
Table 3.3: Importance of community awareness and participation in promoting sustainable behaviour
Freq. | Per cent | |
Very influential | 76 | 23.75 |
Influential | 67 | 20.94 |
Neutral | 59 | 18.43 |
Not very influential | 58 | 18.13 |
Not influential at all | 60 | 18.75 |
Total | 320 | 100 |
CONCLUSION
The increase in the use of the internet is enhancing the growth of e-commerce in Nigeria. However, the rate of increase in e-commerce, especially online purchasing can be shaped by the workings of AI in influencing Sustainable Consumer behaviour in the country.
Several ways were identified as the different uses of AI in the country presently and the consumers agree that AI plays a role in influencing sustainable consumer behaviour by suggesting recommendations for them to purchase related to sustainability and their trust in AI’s recommendation to make purchase decisions related to sustainability. Consumers also believe that the influence of AI on consumer choices is reflected in receiving personalized recommendations for products and services, but believe AI plays a moderate role in the level of influence these personalized recommendations have on the decision to purchase a product is relatively low. Retailers should, therefore, build on the influence of AI in facilitating sustainable consumer behaviour and thereby attracting and holding on to consumers through online purchasing.
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