TY - JOUR
T1 - Quantifying forecast quality of IT business value
AU - Eveleens, J.L.
AU - van der Pas, M.
AU - Verhoef, C.
PY - 2012
Y1 - 2012
N2 - This article discusses how to quantify the forecasting quality of IT business value. We address a common economic indicator often used to determine the business value of project proposals, the Net Present Value (NPV). To quantify the forecasting quality of IT business value, we develop a generalized method that is able to account for asymptotic cases and negative valued entities. We assess the generalization with real-world data of four organizations together consisting of 1435 IT assets with a total investment cost of 1232+ million Euro for which 6328 forecasts were made. Using the generalized method, we determine the forecasting quality of the NPV, along with the benefits and cost using real-world data of another 102 IT assets with a total business value of 1812 million Euro. For the real-world case study, we will find that the quality of the forecasted NPVs is lower than the forecasted benefits, which is again lower than the forecasting quality of the cost. Also, we perform a sensitivity analysis to investigate the impact on the quality of an asset's forecasted NPV when the forecasting quality of benefits or cost improves. Counterintuitively, it turned out in this case study that if the quality of cost forecasts would improve, the overall quality of its NPV predictions would degrade. This underlines the importance of both accurate cost and benefit predictions. Finally, we show how to use the quantified forecast information to enhance decision information using two simulation examples. © 2011 Elsevier B.V. All rights reserved.
AB - This article discusses how to quantify the forecasting quality of IT business value. We address a common economic indicator often used to determine the business value of project proposals, the Net Present Value (NPV). To quantify the forecasting quality of IT business value, we develop a generalized method that is able to account for asymptotic cases and negative valued entities. We assess the generalization with real-world data of four organizations together consisting of 1435 IT assets with a total investment cost of 1232+ million Euro for which 6328 forecasts were made. Using the generalized method, we determine the forecasting quality of the NPV, along with the benefits and cost using real-world data of another 102 IT assets with a total business value of 1812 million Euro. For the real-world case study, we will find that the quality of the forecasted NPVs is lower than the forecasted benefits, which is again lower than the forecasting quality of the cost. Also, we perform a sensitivity analysis to investigate the impact on the quality of an asset's forecasted NPV when the forecasting quality of benefits or cost improves. Counterintuitively, it turned out in this case study that if the quality of cost forecasts would improve, the overall quality of its NPV predictions would degrade. This underlines the importance of both accurate cost and benefit predictions. Finally, we show how to use the quantified forecast information to enhance decision information using two simulation examples. © 2011 Elsevier B.V. All rights reserved.
U2 - 10.1016/j.scico.2011.07.010
DO - 10.1016/j.scico.2011.07.010
M3 - Article
SN - 0167-6423
VL - 77
SP - 314
EP - 354
JO - Science of Computer Programming
JF - Science of Computer Programming
IS - 3
ER -