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Why Estimates Never Seem to Add Up

Donald E. Shannon CPCM, Fellow, PMP. Why Estimates Never Seem to Add Up. So There I Was in the Elevator – Just Me and the CEO. The CEO (your boss’ boss) remembers your proposal for the XYZ project and asks you: “If we approve XYZ how much will it cost and when can it be ready?”.

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Why Estimates Never Seem to Add Up

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  1. Donald E. Shannon CPCM, Fellow, PMP Why Estimates Never Seem to Add Up

  2. So There I Was in the Elevator – Just Me and the CEO • The CEO (your boss’ boss) remembers your proposal for the XYZ project and asks you: “If we approve XYZ how much will it cost and when can it be ready?”

  3. What Are We Doing Wrong? • We fail to understand the true nature of an estimate • Nothing is certain until the work is done • Estimates are random variables chosen from a range of (uncertain) possible values that are likely to be modified by risk. • No such thing as a 100% accurate estimate – just our ‘best educated guess’ • Incomplete or changing specifications • Artificial time constraints • Lack of a structured estimating approach and a team of experts • Preferred - Multi-discipline team with proper training and experience • What we get – Whoever is available • Improper application of estimating tools and techniques.

  4. What could Go Wrong? http://about.bgov.com/health-reforms-cost-73-billion-counting/?thx

  5. What Should We be Doing? • Multiple studies and publications produced to address the issues • AF Cost Risk and Uncertainty Analysis Handbook • GAO Cost Estimating and Assessment Guide • GAO Schedule Assessment Guide • NASA Analytic Method for Probabilistic Cost and Schedule Risk Analysis • GAO recommendations will be focus of this presentation • While focused on Department and Agency level the guidelines are broadly applicable outside that arena. http://www.gao.gov/products/GAO-09-3SP

  6. The Integrated Cost Estimating Model • Best practices from GAO offer a holistic 12-step estimating approach • Integrates several, often discrete, techniques into a unified whole • Traditional Cost Estimate • Technical Baseline • Technology Roadmap • Work Breakdown Schedule • Program Master Schedule • Risk and Uncertainty • Resulting project model mathematically assessed using simulative or analytical tools Master Schedule WBS Project Model TechnologyRoadmap Risk Register Traditional Cost Estimate

  7. The GAO 12-Step Estimating Process1 Defining the Estimating Process 1. Data in the following table extracted from GAO Cost Estimating and Assessment Guide, GAO-09-3SP March, 2009

  8. The GAO 12-Step Estimating Process

  9. The GAO 12-Step Estimating Process

  10. The GAO 12-Step Estimating Process

  11. The GAO 12-Step Estimating Process

  12. The GAO 12-Step Estimating Process

  13. The GAO 12-Step Estimating Process

  14. Applying Theory to Practice Implementing Best Practices

  15. The Estimating Team – Use an Integrated Project Team Approach • A multi-discipline estimating team is a best practice • Team comprised of: • Program Management • Technical experts • Cost Analysts • Acquisition and Logistics • Finance • Scheduling • GAO recommends specific education and experience criteria for cost analyst. • Supplied by DAU • Level I, II, and III • 1 to 4 years experience • Bachelor’s degree • Specific courses in estimating

  16. Validate Technology Assumptions • When will technology be mature enough to insert into program? • Beware of optimistic estimates • Look at technical (im)maturity as a risk to be managed. • What changes will be necessary to accommodate new or emerging technologies? • Materials • Manufacturing methods • Logistic support

  17. Choose the Best Estimating Method for the Cost Element Being Estimated • Previous Actual Costs • Can be most robust method • Assumes cost have (or will) remained constant • Adjust for learning curve or manufacturing efficiency • Analogy (top-down) • Best applied to overall estimate as a sanity test • Useful when data is limited • Bottom-up (engineering estimate) • Best used when design is mature (detailed specifications and engineering available) • Can be used to build system estimate from individual sub-system or component estimates following WBS structure • Parametric estimate (Cost Estimating Relationship) • Expert Opinion

  18. Parametric Cost Estimating Models • Typically derived from a (linear) regression analysis using multiple variables. • Requires detailed data sets obtained from historical data • The ‘fit’ of the model to the data is determined by residual analysis (R2) • Linearity is assumed. Minor non-linearity can be tolerated • Data transformation may be required to address larger non-linearity issue • Number of variables determined by best fit and residual analysis • Result is a formula which summarizes the relationship among variables Image credit: Wikiuniversity.org

  19. Limitations on Parametric Models • Valid only for the domain / range of values for which they were created. • Cost estimates are dependent on the technical estimates. • How accurate are the technical requirements, technical estimates or parameters used in the CER? • DAU notes: “A common form of optimism bias is optimistic technical estimates from technical experts. Unfortunately it has been shown that most experts are overly optimistic in providing their most likely and worst case estimate1” 1. Dorey, Sean P. Major, USAF, Oehmen, Josef and Valerdi, Ricardo , 2012. Enhancing Cost Realism through Risk-Driven Contracting: Designing Incentive Fees Based on Probabilistic Cost Estimates. Defense ARJ, 19 (2), p. 133-158

  20. Cautions Concerning Expert Opinion • Tendency towards Optimism Bias • Underestimate labor hours, cost, and/or duration • Predict early availability of technology • Most pronounced on estimates of known or frequently performed tasks1 • Counter effects by requesting expert to render 3-point estimate with “most likely” estimate first2, then obtain best and worst case. • Counter effects with Delphi technique Roy, Michael M. and Christenfeld, Nicholas J. S., 2007. Bias in Memory Predicts Bias in Estimation of Future Task Duration Memory & Cognition, 35 (2), p. 557-564. Alleman, G, 2010. Why 3 Point Estimates Create False Optimism (Part 1). [Webpage] PM Toolbox, March 17. Available From: http://pmtoolbox.com/project-management-news/why-3-point-estimates-create-false-optimism.html .

  21. Cautions Concerning Expert Opinion • Studies have shown that some experts view generating 3-point estimates as onerous, leading to frivolous estimates1 • Project Advocacy Experts tend to dismiss opinions or estimates that would endanger advancement (or continuation) of their program2 Trietsch, D, Mazmanyan, L, Gevorgyan, L and Baker, K, 2010. Modeling Activity Times by the Parkinson Distribution with a Lognormal Core: Theory and Validation. [Article] Dartmouth.edu. Available From: http://faculty.tuck.dartmouth.edu/images/uploads/faculty/principles-sequencing schedu-ing/ModelingActivityTimes.pdf Christensen, David S. Ph.D., 1996. Project Advocacy and the Estimate at Completion Problem. Journal of Cost Analysis (Spring), p. 35-60.

  22. Let’s Try A Sample Project Using the CER Technique • Model estimates the first-unit cost of 600 lb. UHF satellite consisting of 10 elements (subsystems). • Example extracted from “A Handbook of Cost Risk Analysis Methods”, Institute for Defense Analysis, Phillip Laurie Project Leader pg. 15 • Model’s CER was populated with technical estimates (size, weight, power, etc.) from appropriate technical experts. • Experts also provided “Best” and “Worst” case values for each estimate • Element cost modeled as triangular distributions. • Correlation matrix supplied – however the underlying data was not available for independent analysis. Image credit: NASA.gov

  23. The Results …. • Data produced by the CER is shown in the table • Separate calculation for each WBS element. • WBS elements summed to derive total • Total program cost (single point) estimated at $30,997,000 • Caveats • Model has some inherent inaccuracy (best fit not perfect fit) • Estimates provided by SMEs may contain uncertainties • Program outcome could be effected by risk

  24. Best Practice – Consider Uncertainty • In general, estimates are developed around a set of assumptions concerning programmatic unknowns. • What if those assumptions do not hold true? • Recommended practice is to develop best and worst case cost scenarios to define the range of the “most likely” estimate. • Results are then analyzed to arrive at a probabilistic estimate inclusive of uncertainty.

  25. Addressing Uncertainty • Expert opinion estimates are best represented by range of values vice a single point estimate • “Most Likely” value defines expected cost or duration based on rules and assumptions as stated. • “Best Case” value represents expected cost or duration if all assumptions stack up on the favorable end of the spectrum • “Worst Case” value represents expected cost or duration should all assumptions stack up on the pessimistic end of the spectrum Most Likely (m) 9 15 6 Best Case (a) Worst case (b) Typically the “Most Likely” value has less than a 50% opportunity of being correct. The mean (μ) tends to be closer to 50%, consequently the mean is recommended. Note: Letters used to denote the various values (a, m, b or a,b,c ) vary among researchers so some care should be exercised when examining data to determine which letter is associated with which value.

  26. Sum the (Uncertain) WBS Totals • Naïve estimate: Simple addition of most likely values (m) • Ignores uncertainty • Ignores possible interaction (correlation) between WBS elements • Preferred technique is to statistically sum the average (μ) values • Difference between the two sums is the uncertainty allowance. Note: a= cost estimate using the most optimistic set of assumptions, b= cost estimate using the most pessimistic set of assumptions and m = the cost estimate using the most likely (baseline) assumptions. All estimates in 1,000 dollar increments.

  27. Sum the (Uncertain) WBS Totals • Previous example used analytical method to sum the means • Alternate technique is to sum the data using a Monte Carlo simulation • Results (shown here) are presented in a histogram showing relative likelihood of a specific value or range of values • In summing the totals correlation between (or among) individual WBS elements must be considered as it can skew the results1.

  28. Determine if WBS Costs are Correlated • Correlation between WBS elements can skew the estimate1. • Correlation matrix should be created from the same historical data used to create the Cost Estimating Relationship. • Use Excel (e.g., CORREL(array1,array2) or other tool to determine the Pearson’s coefficient of correlation P(x,y) • Results are then used to re-compute the summation distribution Covert, Raymond P., 2013. Analytic Method for Probabilistic Cost and Schedule Risk Analysis. [Report] NASA.gov, 5 April 2013. Available From: http://www.nasa.gov/pdf/741989main_Analytic%20Method%20for%20Risk%20Analysis%20%20Final%20Report.pdf

  29. Impact of Cost Correlation Greater dispersion of correlated data = larger values for σ2 and σ leading to wider less precise confidence intervals

  30. Best Practice – Consider Risk • Risk is the (contingency) impact to cost or schedule of specific events – the results of which are unknown at the present time. • 20% chance of failing the First Article Test • Likely impact would be a schedule delay of 4 to 7 weeks • Estimated costs of $200,000 plus $25,000 per week delayed • The effects of known or foreseen risk events should be considered when constructing the cost model and if significant, disclosed.

  31. Conduct Risk and Uncertainty Analysis • Three-point estimates capture variability (uncertainty) in estimate but do little to address specific risk events. • Best practice is to conduct Monte Carlo simulation of cost (and schedule) model including the impact(s) of risk events. Image credit: Risky Project – Used by Permission

  32. Combining Frequency Distributions Risk ‘a’ Risk ‘b’ Probabilistic Cost Estimate Risk ‘c’ The technique used to sum the various distributions can be analytic (e.g., Method of Moments or FRISK) or simulative Grinstead, Charles and Snell, Laurie, 1997. Sums of Independent Random Variables. An Introduction to Probability. 2 ed. American Mathematical Society. pg 293 Lurie, Philip M., Goldberg, Mathew, and Robertson, Mitchell, A Handbook of Cost Risk Analysis Methods, IDA Paper P2734, Institute for Defense Analysis, April, 1993pp15

  33. Identify the Confidence of the Point Estimates • Summation of the “most likely” estimates may not result in a sufficiently robust overall estimate • – In this case the most likely estimates only provide a 30.5% confidence level • - The sum of the means provides about a 54% confidence level • - Higher confidence levels (60-65%) may be desirable

  34. Now What? • The results of the estimate should be presented as a range of values. • Single point estimates (if made) should be accompanied by a confidence factor. • How the estimates are used then becomes a business decision – however it will be: • one that is based on a repeatable process and • includes an allowance for uncertainty and risk.

  35. Conclusions • The GAO 12-step method provides a useful process for creating meaningful cost estimates • Estimates are still difficult to generate because • We often lack of meaningful data • We face technical uncertainties • Project risks • Best practice is to generate estimates inclusive of risk and uncertainty • Best practice is to express estimates as statistical probabilities / confidence intervals

  36. About the Presenter Donald (Don) Shannon retired from the USAF in 1990 and went on to complete a subsequent 23-year contract and program management career in industry. He presently operates a consulting practice (The Contract Coach www.contract-coach.com) where he conducts no-cost training for both the NCMA and the New Mexico Procurement Technical Assistance Program (PTAP). He is the Certifications Co-chair and Secretary for the Rio Grande Chapter of NCMA and is a frequent presenter at their educational events. His education includes a BA in Business from St. Leo’s College and a MS in Logistics Management from AFIT. Mr. Shannon is a PMP, an NCMA Fellow, and a Lifetime CFCM and CPCM. His research includes “In the Land of the Blind the One-Eyed Man is King” (CM July 2014) and a unpublished journal article entitled “An Integrated Approach to Assessing Cost, Schedule, and Risk” He may be contacted at don@contract-coach.com

  37. Commonly Used Tools • Project Management • Microsoft Project (several versions – PC only) • Primavera (several versions) PC Only • ProjectLibre / Open Project (Free multi-platform) • FastTrack Schedule (Mac and PC versions) • Deltek Open Plan (Web Based) • OmniPlan (Mac) • Merlin (Mac) • Open Workbench (PC) • 2Plan (Mac, PC and Linux) • Excel (via templates and macros) • Project Risk Management • RiskyProject (Stand-alone PC only Includes Project software)) • @Risk (Excel add-in PC Only) • Oracle Crystal Ball (Excel add-in PC Only) • Oracle Risk Analysis (Enterprise solution) • Risk Engine (Excel add-in MAC) • SimVoi (Excel add-in Mac and PC) • Deltek (Web based – Enterprise level) • Other Tools • WBS Chart Pro

  38. Helpful Formulae for the Triangle Distribution1 Most Likely (m) 9 h = .222 μ = 10 15 6 Minimum (a) Maximum (b) 1. Notes on the Triangle Distribution, Dr. Shane Dye, Statistics Learning Center: StatsLC.com June 2013

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