Kunnathuvalappil Hariharan, Naveen (2017): Predictive model building for driver-based budgeting using machine learning. Published in: Journal of Emerging Technologies and Innovative Research (JETIR) , Vol. 4, No. 6 (June 2017): pp. 567-575.
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Abstract
Budgeting in the traditional sense is simply too slow and rigid to keep pace with the swiftly changing business environment. At the moment, there is far too much volatility, complexity, and uncertainty. A driver-based planning and budgeting model is more data-driven than a traditional budget model. This budgeting strategy shortens the time it takes to create a budget. Most driver-based planning and budgeting models center on predictions. One of the most difficult aspects of using driver-based planning, however, is identifying appropriate business drivers and predicting the impact of these drivers. Machine learning can assist driver-based budgeting processes in identifying the key drivers and predicting the impacts of these drivers. This study discusses the building of predictive modeling using machine learning. It illustrates stages from quantifying the budgeting issues to determining the best predictive mode for driverbased budgeting.
Item Type: | MPRA Paper |
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Original Title: | Predictive model building for driver-based budgeting using machine learning |
Language: | English |
Keywords: | Driver-based budgeting; Machine learning; Model construction; Modelvalidation; Predictive model |
Subjects: | G - Financial Economics > G0 - General > G00 - General G - Financial Economics > G3 - Corporate Finance and Governance |
Item ID: | 109516 |
Depositing User: | Naveen Kunnathuvalappil Hariharan |
Date Deposited: | 02 Sep 2021 11:47 |
Last Modified: | 02 Sep 2021 11:47 |
References: | Barbieri, M. M. and Berger, J. O. (2004) ‘Optimal predictive model selection’, The Annals of Statistics, 32(3), pp. 870–897. Barrett, R. (2007) ‘Planning and Budgeting for the Agile Enterprise: A driver-based budgeting toolkit’. Canhoto, A. I. and Clear, F. (2020) ‘Artificial intelligence and machine learning as business tools: A framework for diagnosing value destruction potential’, Business horizons, 63(2), pp. 183–193. Carrion Schafer, B. and Wakabayashi, K. (2012) ‘Machine learning predictive modeling high-level synthesis design space exploration’, IET computers & digital techniques / IET, 6(3), p. 153. C Godley, A. (2016) Budgeting as a valuable tool in preventing unfavorable business developments. Тернопіль, ТНЕУ. Available at: http://dspace.wunu.edu.ua/bitstream/316497/5055/1/Andrew_C._Godley.pdf. Cockburn, A., Gutwin, C. and Greenberg, S. (2007) ‘A predictive model of menu performance’, in Proceedings of the SIGCHI Conference on Human Factors in Computing Systems. New York, NY, USA: Association for Computing Machinery, pp. 627–636. Cokins, G. (2017) ‘Strategic business management: From planning to performance’. Collier, P. M. and Agyei-Ampomah, S. (2005) Management Accounting-Risk and Control Strategy. Elsevier. Gopal, M. (2019) ‘Applied machine learning’. Available at: https://www.accessengineeringlibrary.com/content/book/9781260456844. Kale, V. (2014) Inverting the Paradox of Excellence: How Companies Use Variations for Business Excellence and How Enterprise Variations Are Enabled by SAP. CRC Press. Kale, V. (2016) Enhancing Enterprise Intelligence: Leveraging ERP, CRM, SCM, PLM, BPM, and BI. CRC Press. Laud, P. W. and Ibrahim, J. G. (1995) ‘Predictive model selection’, Journal of the Royal Statistical Society. Available at: https://rss.onlinelibrary.wiley.com/doi/abs/10.1111/j.2517-6161.1995.tb02028.x. Lee, E. (2002) ‘How do we build trust in machine learning models?’, Available at SSRN 3822437. Available at: https://www.researchgate.net/profile/Ernesto-Lee/publication/350785349_How_do_we_build_trust_in_machine_learning_models/links/60cb4cb9299bf1cd71d60dfd/How-do-we-build-trust-in-machine-learning-models.pdf. Leon, L. D., Rafferty, P. D. and Herschel, R. (2012) ‘Replacing the annual budget with business intelligence driver-based forecasts’, Intelligent information management, 04(01), pp. 6–12. Maruster, L. (2003) A machine learning approach to understand business processes. Citeseer. May, A. U. (2017) ‘Traditional budgeting in today’s business environment’, Journal of Applied Finance & Banking, 7(3), pp. 111–120. Mohri, M., Rostamizadeh, A. and Talwalkar, A. (2018) ‘Foundations of machine learning’. Olivera, A. R. et al. (2017) ‘Comparison of machine-learning algorithms to build a predictive model for detecting undiagnosed diabetes - ELSA-Brasil: accuracy study’, Sao Paulo medical journal = Revista paulista de medicina, 135(3), pp. 234–246. Rael, R. (2017) Smart Risk Management: A Guide to Identifying and Calibrating Business Risks. John Wiley & Sons. Réka, C. I., Ştefan, P. and Daniel, C. V. (2014) ‘TRADITIONAL BUDGETING VERSUS BEYOND BUDGETING: A LITERATURE REVIEW’, Annals of the University of Bucharest. Mathematical Series. Risk Management Institute Singapore (2014) Global Credit Review - Volume 4. World Scientific. Safar, J. A. et al. (2006) ‘Meeting business goals and managing office bandwidth: A predictive model for organizational change’, Journal of Change Management, 6(1), pp. 87–98. Sammut, C. and Webb, G. I. (2010) Encyclopedia of machine learning. 2010th edn. Edited by C. Sammut and G. I. Webb. New York, NY: Springer. Saporito, P. L. (2014) Applied Insurance Analytics: A Framework for Driving More Value from Data Assets, Technologies, and Tools. Pearson Education. Sato, M. et al. (2019) ‘Machine-learning Approach for the Development of a Novel Predictive Model for the Diagnosis of Hepatocellular Carcinoma’, Scientific reports, 9(1), p. 7704. Suveera, G. (no date) Cost and Management Accounting: Fundamentals and its Applications. Vikas Publishing House. |
URI: | https://mpra.ub.uni-muenchen.de/id/eprint/109516 |