Organizational Learning Supported by Machine Learning Models Coupled with General Explanation Methods: A Case of B2B Sales Forecasting

Author:

Bohanec Marko1,Robnik-Šikonja Marko2,Kljajić Borštnar Mirjana3

Affiliation:

1. Salvirt, Ltd , Dunajska 136, 1000 Ljubljana , Slovenia

2. University of Ljubljana , Faculty of Computer and Information Science , Večna pot 113, 1000 Ljubljana , Slovenia

3. University of Maribor , Faculty of Organizational Sciences , Kidričeva 55a, 4000 Kranj , Slovenia

Abstract

Abstract Background and Purpose: The process of business to business (B2B) sales forecasting is a complex decision-making process. There are many approaches to support this process, but mainly it is still based on the subjective judgment of a decision-maker. The problem of B2B sales forecasting can be modeled as a classification problem. However, top performing machine learning (ML) models are black boxes and do not support transparent reasoning. The purpose of this research is to develop an organizational model using ML model coupled with general explanation methods. The goal is to support the decision-maker in the process of B2B sales forecasting. Design/Methodology/Approach: Participatory approach of action design research was used to promote acceptance of the model among users. ML model was built following CRISP-DM methodology and utilizes R software environment. Results: ML model was developed in several design cycles involving users. It was evaluated in the company for several months. Results suggest that based on the explanations of the ML model predictions the users’ forecasts improved. Furthermore, when the users embrace the proposed ML model and its explanations, they change their initial beliefs, make more accurate B2B sales predictions and detect other features of the process, not included in the ML model. Conclusions: The proposed model promotes understanding, foster debate and validation of existing beliefs, and thus contributes to single and double-loop learning. Active participation of the users in the process of development, validation, and implementation has shown to be beneficial in creating trust and promotes acceptance in practice.

Publisher

Walter de Gruyter GmbH

Subject

Marketing,Organizational Behavior and Human Resource Management,Strategy and Management,Tourism, Leisure and Hospitality Management,Business and International Management,Management Information Systems

Reference47 articles.

1. Argyris, C. & Schön, D. (1996). Organizational Learning II: Theory, Method and Practice. Addison Wesley.

2. Armstrong, J. S., Green, K. C. & Graefe, A. (2015). Golden Rule of Forecasting: Be conservative. Journal of Business Research, 68 (8), 1717-1731, http://dx.doi.org/10.1016/j.jbusres.2015.03.031

3. Avison, D., & Fitzgerald, G. (2006). Methodologies for Developing Information Systems : A Historical Perspective. The Past and Future of Information Systems, 27–38, https://doi.org/10.1007/978-0-387-34732-5_3

4. Bohanec, M. (2016). Anonimized data set for B2B sales history. Retrieved 15.07.2017 from http://www.salvirt.com/research/b2bdataset

5. Bohanec, M., Kljajić Borštnar, M. & Robnik-Šikonja, M. (2015a). Feature subset selection for B2B sales forecasting. In: 13th International Symposium on Operational Research, Bled, Slovenia, 285-290.

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