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ARTIFICIAL INTELLIGENCE
Digital technologies have dramatically changed business practices and consumer buying behavior. Nazir et al. (2023) found that the mediation and moderation approach integrates artificial intelligence technology, consumer engagement on social media, and conversion rate optimization. Nazir et al. (2023) suggest satisfying consumer experience is a best practice for examining consumer repurchase intentions in the hospitality industry. Data was collected from 308 hotel customers from different regions of Oman who had an online hotel booking experience, and SmartPLS was used to examine the data and proposed hypotheses. This literature review examines the influence artificial technology has on consumer repurchase intention. This study aims to discover whether artificial intelligence technology positively influences consumer engagement, i.e., on social media and conversion rate optimization. Similarly, consumer engagement on social media and conversion rate positively impacts satisfying consumer experience, increasing consumer repurchase intentions.
Theoretical framework
A stimulus-organism-response (SOR) theory describes some hypothesized relationships between AI technology, customer engagement, and customer repurchase intentions, according to Nazir et al. (2022). According to SOR theory, certain environmental stimuli boost an organism's cognitive and emotional abilities. The study by Nazir et al. (2022) suggests that ecological stimuli trigger specific physical responses. Some recent studies have also used the SOR model to analyze consumer behavior. However, it is difficult to explain the positive impact of AI-integrated social media platforms on consumer conversion rates, particularly in the hospitality sector, due to the limited empirical evidence. The literature review on AI-based social media platforms examines an integrated framework of factors influencing consumer repurchase intentions. The empirical evidence suggests that AI-integrated social media platforms positively impact consumer repurchase intentions. Moreover, further research is needed to gain a deeper understanding of the impact of AI-integrated platforms on consumer conversion rates.
Methodology
The systematic approaches will be based on secondary data collected by Nazir et al.(2022). Alternatively, secondary data can be collected from personal research or large-scale surveys. Customer surveys, demographics, and behavior data may be used to answer the research question. Through this systematic approach, patterns, and relationships found in the secondary data can be used to help answer the research question and draw meaningful conclusions.
The data shows that AI enables hospitality firms to make complicated, critical decisions in a highly competitive and unpredictable environment. AI's global economic contribution is predicted to increase from $20.82 billion in 2020 to $15 trillion in 2030 (The Insight Partners, 2021).
Hypothesis
In discussing how different theoretical perspectives come together to support the research. A hypothesis can be the following:
Hypothesis (H1).
The influence of AI marketing technology in online shopping platforms is conducive to consumer repurchase intentions.
Hypothesis (H2).
The influence of AI marketing technology in online shopping platforms could be more conducive to consumer repurchase intentions.
Comparisons
Kai et al. (2020) focused on a comparative customer engagement analysis of playing games on phones and personal computers. Kai et al. (2020) examined users' capabilities, characteristics, and experiences associated with mobile phones or PCs to determine which factors influenced customer engagement in gaming. The study examines whether the use of mobile phones or PCs significantly influences customer engagement, which influences customer behaviors. Even several studies have contributed to the existing literature on customer engagement, user experience, and buying behaviors. However, the study by Kai et al. (2020) intended to fill the gap by conducting a comparative and comprehensive analysis of the application buyer behavior on different platforms, such as using PCs and mobile phones, and determining the use based on differentiated customer engagement levels. The data analyzed by Kai et al. (2020) differs in that the study contributes to formulating strategies that focus on customer satisfaction which, in the long run, ensures the growth of competitiveness.
Kai et al. (2020) suggest AI technology can enhance interactions among customers, products, or services in interactive environments, and it can match demands quickly. AI chat robots, content recommendation systems, and consumer feature recognition have become artificial agents for AI marketing activities. For example, Amazon takes the lead in using artificial intelligence technology to achieve the retail relocation of people, goods, and stores and extends its artificial intelligence framework.
Data Analysis
The research examined data collection by Nazir et al. (2022) for 12 weeks. The respondents were customers who booked a hotel through online websites at least once over the last six months in three different regions. An ANOVA single-factor test is used for the one-way analysis of variance (ANOVA) to determine whether there are any statistically significant differences between the means of three or more independent (unrelated) groups. Similarly, the single factors test consumer engagement on social media and conversion rate positively influence satisfying consumer experience, leading to increased consumer repurchase intentions. Harman's single-factor test was utilized to test for common method bias in the data to prevent single-source bias. Data booking will be linked to booking behavior.
Conclusion
Automating business using AI enables hospitality companies to enhance the customer experience by discovering innovative, strategic, and long-term solutions. Silverman (2022) and Nazir et al. (2022), AI also allows hospitality firms to make complicated critical decisions in an unexpectedly unstable and competitive business environment. Chung (2005) suggests analyzing the data to identify patterns and trends. Based on the literature, one can provide recommendations to small business owners on using IT to increase the customer experience. It is essential to consider qualitative data to gain a more complete understanding of customer needs.
Moreover, Silverman (2022) and Chung (2005) note using quantitative data stata tests to analyze collected data is an excellent way to eliminate bias in research. In this way, the results will be presented clearly and understandably. Nazir et al. (2022) note the research can offer recommendations for small business owners to create more effective customer engagement strategies. Kai Kang et al. (2020) note the importance of a plan to monitor the strategy's performance.
Finally, Nazir et al. (2022) suggest consumer habit positively moderates the relationship between satisfying consumer experience and repurchase intention. The study facilitated the understanding of artificial intelligence technology to influence consumer engagement on social media and conversion rate to boost consumer satisfaction and repurchase intention and offers suggestions for developing impeccable service business strategies. The data by Nazir et al. (2022) suggests marketers must consider making posts more interesting through videos, images, and animations, which will satisfy consumers, ultimately boosting their desire to use, share, and generate content on social media platforms for hospitality organizations.
References
Anand, B. and Chung, C.A. (2005). Statistical Process Control for the Engineering IT Support Incident Life Cycle. Journal of International Technology and Information Management, 14(2), 83-92.
Kai Kang, Jinxuan Lu, Lingyun Guo, & Jing Zhao. (2020). How to Improve Customer Engagement: A Comparison of Playing Games on Personal Computers and on Mobile Phones. Journal of Theoretical & Applied Electronic Commerce Research, 15(2), 76–92. https://doi-org.10.4067/S0718-18762020000200106
McClave, J., Benson, P. G., and Sincich, T. (2022). Statistics for Business and Economics (14th ed.). New York, NY: Pearson.
Nazir, S., Khadim, S., Asadullah, M. A., & Syed, N. (2023). Exploring the influence of artificial intelligence technology on consumer repurchase intention: The mediation and moderation approach. Technology in Society, 72, 102190.
Silverman, D. (2022) Doing qualitative research (6th. Ed.). Sage publications, Inc. ISBN-978-1-5297-6901-2; ISBN-978-1-5297-6900-5 (pbk)