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1 Course Intro Scott Matthews 12-706 / 19-702 Lecture 1
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Lecture 1:2 Objectives Prepare you to construct, assess, and explain models to aid in public decision making Build a framework on which you can add additional courses and knowledge Understand issues of estimation, economics, uncertainty, coping with multiple parties and objectives in decision making.
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Lecture 1:3 History: Merged Course – Economists and Engineers Seemed to work well during the past 8 years. Courses overlapped in content - need for practical decision making aids. Engineers need economic perspective; economists need an engineering (practical problem solving) perspective.
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Lecture 1:4 Course History I’ve taught this course for 10+ years 1995: Benefit-cost analysis (73-359) 1997: Merged with CEE 12-706 2005: Merged with EPP 19-702
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Lecture 1:5 About Me U2 Fan Married, 2 sons. Get no sleep I have 2 great other helpers x3
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Lecture 1:6 TAs: Paulina and Amanda Contact info on syllabus When should office hours be? Decide today, Wednesday Goal - before HWs (due Wed in general)
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Lecture 1:7 Scott Matthews Associate Prof., CEE/EPP Research Director and Faculty Green Design Institute B.S. ECE/Engineering & Public Policy, M.S. Economics, PhD. Economics (all CMU) Research Sustainable infrastructure and green product/system design Help stakeholders understand all private and social costs of decisions.
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Lecture 1:8 Course Web Page Course web page: http://www.ce.cmu.edu/~hsm/bca2007/ Lecture notes, problem sets and schedule
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Lecture 1:9 Course Grade Components ~6 Problem Sets Case Study Writeups Take-Home Final Examination Several Group Projects Participation: Borderline cases (I will learn all names)
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Lecture 1:10 Text and Handouts Clemen and Reilly “Making Hard Decisions” (aka Clemen) Optional: Schaum’s Guide to Engineering Economics Lecture notes- available on web page. Application cases. Miscellaneous: articles, problems, etc.
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Lecture 1:11 Graduate Course “Rules” Whose first grad course? Students do readings in advance I supplement reading with discussion and examples I do not re-lecture what you’ve read Class time will be mostly spent on applications and demos Should reconsider if not comfortable
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Lecture 1:12 Cheating / etc. Guidelines I will not tolerate it The whole point of this class is to teach you how to build your own models and use them Stealing what others have done, aside from being against policy, undermines the purpose of the course, and your education If you use external sources to help you build models, make sure you cite them
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Lecture 1:13 Application Areas Methods and techniques are general. Emphasize environmental / civil systems applications as examples. Roadways, transit systems. Air and water pollution Water and wastewater systems. Public, private and mixed investment/finance decisions (e.g. Stadium construction).
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Lecture 1:14 Planning Process versus Analysis Benefit-Cost Analysis and Design support planning processes, often performed by consultants or staff. Planning processes tend to involve many different parties (current terminology - “stakeholders”), all with their own agendas.
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Lecture 1:15 Our Course Scope: The Real World Scary thought.
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Lecture 1:16 The Policy World Normative vs. Positive theories N - based on ‘norms’ - ‘should be done’ P - based on ‘reality’ - ‘actually done’ This reinforces the idea of perspective Guardian vs. Spender mentality Guardians bottom-line oriented, see only tolls Tend to underestimate costs Spenders see everything (inc. costs) as benefits Tend to overestimate benefits
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Lecture 1:17 A Teaser of What We Will Learn Risk Analysis Models Cost-Effectiveness Environmental Valuation Simulation Effective Visuals and Documentation
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Lecture 1:18 Open Ended Questions - Examples Its 1990. Should we spend $5-10 billion improving the levee / storm protection system around New Orleans in case of a Category 4 hurricane?
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Lecture 1:19 How Will Our Answer Vary? How Would Cost of Electricity Change if we replaced light bulbs with photo sensors
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Lecture 1:20 Should we travel by plane or train?
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Lecture 1:21 Preview: Estimation The first concept we will go over (Wednesday) is on structured estimation problems. How do we construct an estimate for a number when we do not know the answer?
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Lecture 1:22 Estimation in the Course We will encounter estimation problems in sections on demand, cost and risks. We will encounter estimation problems in several case studies. Projects will likely have estimation problems. Need to make quick, “back-of-the-envelope” estimates in many cases. Don’t be afraid to do so!
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Lecture 1:23 Problem of Unknown Numbers If we need a piece of data, we can: Look it up in a reference source Collect number through survey/investigation Guess it ourselves Get experts to help you guess it Often only ‘ballpark’, ‘back of the envelope’ or ‘order of magnitude needed Situations when actual number is unavailable or where rough estimates are good enough E.g. 100s, 1000s, … (10 2, 10 3, etc.) Source: Mosteller handout
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Lecture 1:24 Notes on Estimation Move from abstract to concrete, identifying assumptions Draw from experience and basic data sources Use statistical techniques/surveys if needed Be creative, BUT Be logical and able to justify Find answer, then learn from it. Apply a reasonableness test ** very important
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Lecture 1:25 How Many TV Sets in the US? Work in groups of 2-3
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Lecture 1:26 How many TV sets in the US? Can this be calculated? Estimation approach #1: Survey/similarity How many TV sets owned by class? Scale up by number of people in the US Should we consider the class a representative sample? Why not?
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Lecture 1:27 TV Sets in US – another way Estimation approach # 2 (segmenting): Work from # households and # TV’s per household - may survey for one input Assume x households in US Assume z segments of ownership (i.e. what % owns 0, owns 1, etc) Then estimated number of television sets in US = x*(4z 5 +3z 4 +2z 3 +1z 2 +0z 1 )
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Lecture 1:28 TV Sets in US – sample Estimation approach # 2 (segmenting): work from # households and # tvs per household - may survey for one input Assume 50,000,000 households in US Assume 19% have 4, 30% have 3, 35% 2, 15% 1, 1% 0 television sets Then 50,000,000*(4*.19+3*.3+2*.35+.15) = 125.5 M television sets
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Lecture 1:29 TV Sets in US – still another way Estimation approach #3 – published data Source: Statistical Abstract of US Gives many basic statistics such as population, areas, etc. Done by accountants/economists - hard to find ‘mass of construction materials’ or ‘tons of lead production’. How close are we?
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Lecture 1:30
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Lecture 1:31 Lessons Learned? What were primary sources of our “error” in estimating this number? What can we learn from sources of error? Reading for Wednesday.
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