Quantifying Uncertainty in Expert Judgment: Initial Results

The work described in this report, part of a larger SEI research effort on Quantifying Uncertainty in Early Lifecycle Cost Estimation (QUELCE), aims to develop and validate methods for calibrating expert judgment. Reliable expert judgment is crucial across the program acquisition lifecycle for cost estimation, and perhaps most critically for tasks related to risk analysis and program management. This research is based on three field studies that compare and validate training techniques aimed at improving the participants' skills to enable more realistic judgments commensurate with their knowledge.

Most of the study participants completed three batteries of software engineering domain-specific test questions. Some participants completed four batteries of questions about a variety of general knowledge topics for purposes of comparison. Results from both sets of questions showed im-provement in the participants ' ' recognition of their true uncertainty. The domain-specific training was accompanied by notable improvements in the relative accuracy of the participants ' ' answers when more contextual information to the questions was given along with "reference points" about similar software systems. Moreover, the additional contextual information in the domain-specific training helped the participants improve the accuracy of their judgments while also reducing their uncertainty in making those judgments.

PDF [12083 KB]

Authors

Dennis R. Goldenson

Robert W. Stoddard

This report is related to the following area(s) of work:

Measurement and Analysis
Process Improvement

Technical Report
CMU/SEI-2013-TR-001
March 2013

Cite This Report

SEI:

Goldenson, Dennis; & Stoddard, Robert. Quantifying Uncertainty in Expert Judgment: Initial Results (CMU/SEI-2013-TR-001). Software Engineering Institute, Carnegie Mellon University, 2013. http://www.sei.cmu.edu/library/abstracts/reports/13tr001.cfm

IEEE:

D. Goldenson, and R. Stoddard, "Quantifying Uncertainty in Expert Judgment: Initial Results," Software Engineering Institute, Carnegie Mellon University, Pittsburgh, Pennsylvania, Technical Report CMU/SEI-2013-TR-001, 2013. http://www.sei.cmu.edu/library/abstracts/reports/13tr001.cfm

APA:

Goldenson, D., & Stoddard, R. (2013). Quantifying Uncertainty in Expert Judgment: Initial Results (CMU/SEI-2013-TR-001). Retrieved June 19, 2013, from the Software Engineering Institute, Carnegie Mellon University website: http://www.sei.cmu.edu/library/abstracts/reports/13tr001.cfm

CHI:

Goldenson, Dennis, and Robert Stoddard. Quantifying Uncertainty in Expert Judgment: Initial Results (CMU/SEI-2013-TR-001). Pittsburgh, PA: Software Engineering Institute, Carnegie Mellon University, 2013. http://www.sei.cmu.edu/library/abstracts/reports/13tr001.cfm

MLA:

Goldenson, D., & Stoddard, R. 2013. Quantifying Uncertainty in Expert Judgment: Initial Results (Technical Report CMU/SEI-2013-TR-001). Pittsburgh: Software Engineering Institute, Carnegie Mellon University. http://www.sei.cmu.edu/library/abstracts/reports/13tr001.cfm

Find Us Here

Find us on Youtube  Find us on LinkedIn  Find us on twitter  Find us on Facebook

Share This Page

Share on Facebook  Send to your Twitter page  Save to del.ico.us  Save to LinkedIn  Digg this  Stumble this page.  Add to Technorati favorites  Save this page on your Google Home Page 

For more information

Contact Us

info@sei.cmu.edu

412-268-5800

Help us improve

Visitor feedback helps us continually improve our site.

Please tell us what you
think with this short
(< 5 minute) survey.