Using supervised machine learning for B2B sales forecasting: A case study of spare parts sales forecasting at an after-sales service provider
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摘要
In this paper, we present a method to use advance demand information (ADI), taking the form of request for quotation (RFQ) data, in B2B sales forecasting. We apply supervised machine learning and Natural Language Processing techniques to analyze and learn from RFQs. We apply and test our approach in a case study at a large after-sales service and maintenance provider. After evaluation we found that our approach identifies ∼ 70% of actual sales (recall) with a precision rate of ∼ 50%, which represents a performance improvement of slightly more than a factor 2.5 over the current labor-intensive manual process at the service and maintenance provider. Our research contributes to literature by giving step-by-step guidance on incorporating artificial intelligence in B2B sales forecasting and revealing potential pitfalls along the way. Furthermore, our research gives an indication of the performance improvement that can be expected when adopting supervised machine learning into B2B sales forecasting.
论文关键词:Supervised machine learning,Natural Language Processing (NLP),B2B sales forecasting,Prioritization on sales potential,Information Extraction,Imbalanced data
论文评审过程:Received 4 April 2021, Revised 8 August 2021, Accepted 16 September 2021, Available online 13 October 2021, Version of Record 23 October 2021.
论文官网地址:https://doi.org/10.1016/j.eswa.2021.115925