Author List: Keil, Mark; Mann, Joan; Rai, Arun;
MIS Quarterly, 2000, Volume 24, Issue 4, Page 631-664.
Software projects can often spiral out of control to become ‘runaway systems’ that far exceed original budget and schedule projections. The behavior that underlies many runaway systems can best be characterized as ‘escalation of commitment to a failing course of action.’ The objectives of this study were to: (1) understand the extent to which IS projects are prone to escalate, (2) compare the outcomes of projects that escalate with those that do not, and (3) test whether constructs associated with different theories of escalation can be used to discriminate between projects that escalate and those that do not A survey was administered to IS audit and control professionals and, to establish a baseline for comparison, the survey was designed to gather data on projects that did not escalate as well as those that did escalate. The results of our research suggest that between 30% and 40% of all IS projects exhibit some degree of escalation. Projects that escalated had project outcomes that were significantly worse in terms of perceived implementation performance and perceived budget/schedule performance, as compared to projects that did not escalate. Using constructs from theories that have been used to explain the escalation phenomenon, we were able to test various logistic regression models for their ability to discriminate between projects that escalate and those that do not. To construct our models, we explored constructs derived from self-justification theory, prospect theory, agency theory, and approach avoidance theory. While constructs derived from all four theories were significant in logistic regression models, the completion effect construct derived from approach avoidance theory provided the best classification of projects, correctly classifying over 70% of both escalated and non-escalated projects.
Keywords: escalation; IS project failure; Software project management
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#139 0.361 project projects failure software commitment escalation cost factors study problem resources continue prior escalate overruns taken failing troubled sunk fail
#124 0.140 validity reliability measure constructs construct study research measures used scale development nomological scales instrument measurement researchers developed validation discriminant results
#215 0.100 data classification statistical regression mining models neural methods using analysis techniques performance predictive networks accuracy method variables prediction problem measure
#110 0.084 theory theories theoretical paper new understanding work practical explain empirical contribution phenomenon literature second implications different building based insights need
#93 0.082 performance results study impact research influence effects data higher efficiency effect significantly findings impacts empirical significant suggest outcomes better positive
#9 0.057 using subjects results study experiment did conducted task time used experienced use preference experimental presented decision-making empirical significantly effects better
#220 0.052 research study different context findings types prior results focused studies empirical examine work previous little knowledge sources implications specifically provide