TY - JOUR
T1 - Comparing AI-Based and Traditional Prospect Generating Methods
AU - Stadlmann, Christian
AU - Zehetner, Andreas
N1 - Funding Information:
The authors like to acknowledge the contributions of the research team consisting of S. Baumberger, M. Halama, M. Huber, D. Kutsam, A. Narli, B. Yüksel and J. Neumüller. Moreover, we would like to express our thankfulness to M. Seferovic of the Austrian Trade Commission in Chicago and G. Berend of the University of Szeged for their generous support with the database research and the data mining research.
Publisher Copyright:
© 2021 The Author(s). Published with license by Taylor & Francis Group, LLC.
PY - 2021/10/17
Y1 - 2021/10/17
N2 - This contribution deals with a comparison of one AI based data mining tool and two traditional approaches utilized to collect and interpret data for prospect generation. Traditional prospect generation methods, like manual web search or using purchased data from external providers may involve high costs and efforts and are subject to failures and waste through outdated and untargeted data. In contrast, AI based methods claim to provide better results at lower costs. Based on a real case, the authors compare effects of these three prospect generation methods. AI based data mining tools compensate for some weaknesses of other methods, especially because they do not need pre-defined selection criteria which might bias the results. In addition, they involve less effort from the researcher. However, the results in generating concrete prospects may be still weaker than with traditional methods if web crawling activities are influenced by underlying databases. For academic research in the field of prospect generation, this study provides a fact-based comparison of approaches. Implications for businesses include the advice to combine methods rather than to rely on a single approach. The time available for research and the complexity of the target market have an influence on the selection of the prospect generation approach.
AB - This contribution deals with a comparison of one AI based data mining tool and two traditional approaches utilized to collect and interpret data for prospect generation. Traditional prospect generation methods, like manual web search or using purchased data from external providers may involve high costs and efforts and are subject to failures and waste through outdated and untargeted data. In contrast, AI based methods claim to provide better results at lower costs. Based on a real case, the authors compare effects of these three prospect generation methods. AI based data mining tools compensate for some weaknesses of other methods, especially because they do not need pre-defined selection criteria which might bias the results. In addition, they involve less effort from the researcher. However, the results in generating concrete prospects may be still weaker than with traditional methods if web crawling activities are influenced by underlying databases. For academic research in the field of prospect generation, this study provides a fact-based comparison of approaches. Implications for businesses include the advice to combine methods rather than to rely on a single approach. The time available for research and the complexity of the target market have an influence on the selection of the prospect generation approach.
KW - commercial data
KW - data mining
KW - method comparison
KW - prospecting
KW - systematic manual web research
UR - http://www.scopus.com/inward/record.url?scp=85118119262&partnerID=8YFLogxK
U2 - 10.1080/10496491.2021.1987973
DO - 10.1080/10496491.2021.1987973
M3 - Article
SN - 1049-6491
VL - 28
SP - 160
EP - 174
JO - Journal of Promotion Management
JF - Journal of Promotion Management
IS - 2
ER -