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Artificial Intelligence in Marketing: a text mining and topic modeling approach

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Detalhes bibliográficos
Resumo:This research uses a Text Mining approach to analyze the literature. This methodology creates Artificial Intelligence (AI) dimensions and clusters in literature to find patterns and trends about its application in Marketing, resulting in a dataset of 2,255 articles on the AI and marketing topic by the leading publishers up to 2023. Since textual sources take big data format, this paper's techniques present several scalable advantages compared to other methodologies. This approach uses two methods to overcome the limitations: an API, a visual pictorial representation that summarizes the topics discovered. The results show that Data Modeling systems are the three most frequent terms in all the abstract tokens showing more than 2,000 occurrences. Trends such as Natural Language processing (sentiment, analysis, text, image, video, and language), Machine Learning, Algorithms, Expert Systems, and Social Media, particularly Twitter, have been unveiled from the data analysis. However, a clear description of AI in Marketing is still needed. Overall, this paper presents an approach with several scalability advantages compared to previous methods, a crucial aspect of dealing with big data.
Autores principais:Costa, Tânia Gomes
Assunto:Artificial Intelligence Marketing Literature analysis Literature dimensions Text mining Topic modeling SDG 4 - Quality education SDG 8 - Decent work and economic growth SDG 9 - Industry, innovation and infrastructure SDG 10 - Reduced inequalities SDG 11 - Sustainable cities and communities SDG 12 - Responsible production and consumption SDG 17 - Partnerships for the goals
Ano:2023
País:Portugal
Tipo de documento:dissertação de mestrado
Tipo de acesso:acesso embargado
Instituição associada:Universidade Nova de Lisboa
Idioma:inglês
Origem:Repositório Institucional da UNL
Descrição
Resumo:This research uses a Text Mining approach to analyze the literature. This methodology creates Artificial Intelligence (AI) dimensions and clusters in literature to find patterns and trends about its application in Marketing, resulting in a dataset of 2,255 articles on the AI and marketing topic by the leading publishers up to 2023. Since textual sources take big data format, this paper's techniques present several scalable advantages compared to other methodologies. This approach uses two methods to overcome the limitations: an API, a visual pictorial representation that summarizes the topics discovered. The results show that Data Modeling systems are the three most frequent terms in all the abstract tokens showing more than 2,000 occurrences. Trends such as Natural Language processing (sentiment, analysis, text, image, video, and language), Machine Learning, Algorithms, Expert Systems, and Social Media, particularly Twitter, have been unveiled from the data analysis. However, a clear description of AI in Marketing is still needed. Overall, this paper presents an approach with several scalability advantages compared to previous methods, a crucial aspect of dealing with big data.