samir mikati, mit engineering systems division esd 71: engineering systems analysis for design
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Samir Mikati, MIT Engineering Systems Division ESD 71: Engineering Systems Analysis for Design Professor Richard de Neufville December 9 th , 2008. Using Flexible Business Development Plans to Raise the Value of High-Technology Startups. Slideshow format: Introduction - PowerPoint PPT PresentationTRANSCRIPT
Samir Mikati, MIT Engineering Systems Division
ESD 71: Engineering Systems Analysis for Design
Professor Richard de Neufville
December 9th, 2008
Using Flexible Business Development Plans to Raise the Value of High-Technology Startups
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Slideshow format:
Introduction
Development of an Application Portfolio
Comparison of Analysis methods: Decision Tree v. Lattice
Conclusions
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Introduction
Development of an Application Portfolio
Comparison of Analysis methods: Decision Tree v. Lattice
Conclusions
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Introduction: The Engineering System
Engineering Systems can take on different forms A space station, computer motherboard, power plant, irrigation system,
World Wide Web, complex organizational setups
System Analyzing: a high-technology startup Central question: How does one model the development of such an
uncertain system?1. Identify system attributes/boundaries2. Identify key uncertainties3. Use a decision tree and/or lattice to model development of startup
Builds a business development “roadmap” that: Proactively incorporates uncertainty recognition Uses flexibility to mitigate/take advantage of uncertainty
* Must recognize advantages/limitations of DT/lattice modeling methods to understand business development roadmap
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Introduction: Motivations
Schumpeter (1942): “Creative Destruction” process Innovation as the seed for new value creation and the destroyer of
obsolete products and services
Chesbrough (2002): Corporate Venture Capital CVC investments based on:
1. Objective Strategic (increase/migrate capabilities) Financial (make money carrying out strategic objective)
2. Strength of operational ties (between opportunity and company, this is difference between CVC and Venture Capital)
CVC provides an essential window into new strategic opportunities (innovations)
The Problem: How to correctly model and hence value highly uncertain CVC investments?
Decision Tree and Lattice valuation 2 methods that proactively incorporate uncertainty into system
valuation Both have limitations, should understand them
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A Paradigm Shift
Faulkner (1996): Way in which we value technology developments has progressed from: Least accurate, deterministic heavily discounted DCF method Most accurate, uncertainty recognizing and flexibility incorporating
appropriately discounted DCF method
Example of evolution of DCF methods (Faulkner 1996):
Decision Tree Valuation Method
Incorporates flexibility to better handle uncertainties
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Introduction
Development of an Application Portfolio
Comparison of Analysis methods: Decision Tree v. Lattice
Conclusions
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Application Portfolio 1: Describing the Engineering System
What is the system, what does it include and what does it exclude?
ENI (an Italian state-owned petrochemical company) evaluating a specific technology startup company based on its strategic/financial value
Analyzing a solar-thermal technology startup’s potential future value
What are its principal design levers or variables?
Amount, if any, of investment placed during a step in the development of the technology
What are the benefits of this system?
The value of merging the expertise of a startup with the vast capabilities (financial and project based) of an investing company
Investing firm’s ability to provide startup with enough capital and other resources to rapidly launch product development and commercialization (ability to pursue “call option” on expansion of successful technology)
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Application Portfolio 2: Key Uncertainty Identification
Critical Uncertainties incorporated into model:
1. Market size (use carbon tax rate as a proxy)
2. Success level of technology development (how good is product?)
Future fuel shares (observe projected size of renewables
market)
Source: IEA 2006, pp. 73
Past and predicted future best lab cell efficiencies
Source: Stanford E 104 Lecture, Benson
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Application Portfolio 3: Defining the System
The Players Investing Firm (ENI, a large Italian energy company) CSPond venture (a solar-thermal hi tech startup based in MIT)
Basic Description of Technology (Slocum 2008):
CSPond’s salt-filled tank (Slocum 2008) CSPond illustration of basic concept (Slocum 2008)
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Application Portfolio 3: Defining the System
The Fixed Design: A fixed business development plan
Analyze the uncertainties relevant to startup’s successful development, and then create a fixed “optimal” business plan
A Flexible Design: A dynamic business development plan
A flexible, dynamic model gives management the ability to decide on the level of investment in the technology after more information is learnt.The following figure is a part of the decision tree which illustrates management’s ability to decide on investment strategy given uncertainty in the carbon tax:
Fixed investment
decision
Flexible investment
decision
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Application Portfolio 4: Building a Decision Tree
The Method
1. Build a basic sequence of stages in the development of the system being modeled
2. Insert the first critical uncertainty and decision node pairi. Uncertainty node: turns a linkage between two development stages
into an uncertainty node with several different outcomesii. Decision node: placed after the uncertainty node (reflects a decision
management can make that will minimize the loss in system performance associated with unfavorable outcomes, and improve system performance by taking advantage of situations where the outcome is favorable)
3. Iterate (2.) n-times (according to desired complexity)
4. Analyze Decision Tree Use “fold back” method to prune least attractive decisions, leaving one
optimal decision for every decision node (now have a business roadmap)
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Application Portfolio 4: Building a Decision Tree
The Tree Inputs: an intelligently linked model
Critical parameters (i.e. cost of the flexible/inflexible contract, discount rate, length of company/product operation, and probabilities associated with the carbon tax and technology development uncertainties) defined as variables for easy manipulation
Structure
2 Decision-Chance pairs:
Decision 1 Chance Event 1 Decision 2 Chance Event 2Flexible: Buy right to develop technology and produce product in 5 years (for 15 years). Can decide how heavily to invest depending on new information obtained @ year 5.
Carbon Tax is:HighLow
Nonexistent*this chance node is a surrogate for “market”
uncertainty identified in AP 3
Decide to either invest:HighLow
No Investment
Technology is:Very Successful
SuccessfulA failure
* this chance node represents “technology”
uncertainty identified in AP 3
Inflexible: Buy technology and commit to producing products for 20 years (given investment strategy)
Cannot decide, must choose an investment strategy @ year 0. Here, we have decided in the “Low” investment strategy.
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Application Portfolio 4: Building a Decision Tree
Visual of Decision Tree Red lines indicate best decision for each decision node
This gives a “roadmap” of optimal decision for any uncertainty outcome
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Application Portfolio 4: Building a Decision Tree
Outcome distributions and VARG
-8 0 168 178 341 5870.000
0.100
0.200
0.300
0.400
Histogram- NPV of Solar Tech Com-
pany (flexible)
NPV of Solar Tech Company ($M)
Pro
bab
ilit
y
-34 23 49 76 213 281 5570.000
0.100
0.200
0.300
0.400
Histogram- NPV of Solar Tech Company
(inflexible)
NPV of Solar Tech Company ($M)
Pro
bab
ilit
y
-34 0 34 68 1021361702042382723063403724064404745085425760
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
NPV of Solar Tech Company
Flexible
Inflexible
ENPV Flexible
ENPV Inflexible
Cu
mm
ula
tive
Pro
bab
ilit
y
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Application Portfolio 4: Building a Decision Tree
Key Values
Q: Which business development plan (flexible v. inflexible) is better?
A: It depends on which value one is most interested in:
($, millions) Design Which is better?Flexible Inflexible
ENPV182.074609
8152.75405
9 FlexibleMinimum NPV -8 -34 FlexibleMaximum NPV 587 557 FlexibleInitial CAPEX 60 50 InflexibleNPV/CAPEX 3.0345 3.0550 Inflexible
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Application Portfolio 5&6: Creating a Lattice model
The Method
1. Choosing a “Start value” Look at the revenues that would be accrued from a very small time after
the start of operations of the company
2. Choosing “up” “down” and “p” values
P: likelihood current state will increase in value in (present+1) state Up/down: magnitude of increase/decrease in (present+1) state Initially choose an arbitrary set of values for the up, down and p values
simply to allow the lattice to be created Once all necessary lattices created, we can manipulate these values to
create a model that has similar properties to the decision tree
3. Dynamic Programming “Looking forward method of analyzing a lattice” Can create a “flexible” lattice by a “stop operations” put option
4. Choosing 1 decision Lattice method works best when incorporating 1 “flexibility” decision Our decision: “whether to continue company operations
(contracting CSPond projects) or halt them” (put option)
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Application Portfolio 5&6: Creating a Lattice model
The Method: To build our model, must build:
1. “Profits” lattice Small profits in beginning, grow according to up, down, and p values
2. “Probabilities” lattice
Depends on p and (1-p) values3. “Cashflow” lattice
Values from “profits” lattice – yearly operating costs (fixed+variable)
4. Baseline “Yearly contribution to ENPV” lattice Multiplies yearly discounted cashflows by appropriate p, sum all cell
multiplications to get ENPV
5. “Dynamic programming-based inflexible” lattice “looking into the future” method; ENPV should be the same as in (4)
6. “Dynamic programming-based inflexible” lattice Same as above, but now insert “put option” flexibility to stop operations When stop operations, incur only fixed costs Similar to flexibility option in decision tree: amount invested
7. “Continue or stop” company operations” lattice
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Application Portfolio 5&6: Creating a Lattice model
Key Results:
Note: this VARG only models first 6 years of company operations
$40,000,000.0 $20,000,000.0 $0.0 $20,000,000.0 $40,000,000.0 $60,000,000.0
0.0%
10.0%
20.0%
30.0%
40.0%
50.0%
60.0%
70.0%
80.0%
90.0%
100.0%
VARG curves - Abandonment option
Flexible Inflexible
NPV ($)
Cu
mu
lati
ve
Pro
ba
bili
ty
Downside risks mitigated
Take advantage of
upside
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Introduction
Development of an Application Portfolio
Comparison of Analysis methods: Decision Tree v. Lattice
Conclusions
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Advantages/limitations of “decision tree analysis” modeling
Structure: Uses a “tree” approach that iterates an uncertainty-decision node sequence
Strength- clearly illustrates a visual roadmap of the many different paths that the business development could take in the futureStrength- the shape (i.e. number of decision options and uncertainty outcomes) is not constrained by
any limitations (in the lattice model, we are constrained to a binomial decision process)
No regularity constraints:
While the binomial model is limited by “regularity” (it assumes that the diffusion process is “stationary” in that the probability of the next state remains constant throughout the periods considered), the decision tree is not limited to this constraint
No outcome constraints:
A major limitation of the lattice is that it can only generate lattices with purely positive or negative state values. the decision tree does not require additional analysis: a user simply inputs the relevant outcome values in the end stage, and conducts a folding-back analysis to evaluate the tree
Conclusion: Decisions analysis approach is the more flexible approach because of its
lack of regularity and outcome constraints, as well as its “unlimited” uncertainty/decision node outcome possibilities.Decision trees are more suitable when we have complex (i.e. more thanone outcome) and irregular (requires changing of probabilities) processes.
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Advantages/limitations of “lattice ” modeling
Structure: Similar to a decision tree analysis in that it uses a “tree” approach to model uncertainties and decisions, thus developing multiple paths. Key limitation: in order to keep the number of states increasing linearly with
the number of stages, we must assume path independence (since in this case all paths to a state have the same result)
In our system, barring the extreme cases (such as no projects acquired, or a truly explosive growth of work that causes relocation to a much bigger office) we can assume that this system is a relatively path independent process. That is, the order in which our company grows (i.e. slow growth then faster growth, or vice versa) will not affect the current state since we can adjust (to a certain degree) the number of employees working; hence our system can respond to changes without being fundamentally altered.
Limitation: the evolution of one state can only be into two future states. Solution: if we want to model several outcomes (states), we can do this by
introducing several stages (which will progressively double the number of states).
Limitation: “curse” of regularity. In the lattice model, the diffusion process is necessarily stationary: the
probability of “up” or “down” states does not change with time.
Limitation: only positive or negative values generated Solution: Define our initial lattice to have only positive values. Then
transform these necessarily positive values into potentially negativevalues by subtracting the relevant operational costs in each state
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Advantages/limitations of “lattice ” modeling
Powerful advantage: lattice approach models single decisions over many stages very effectively
It is thus useful in its ability to assess, at any given year and state, whether the option to stop investment should be pursued (decision tree analysis cannot do this as effectively, would have to create a very complicated tree)
How relevant is thus advantage to our solution? If we can simplify our model to an “invest” or “stop investment” scenario (currently it has 3 levels of investment), then this advantage could be used to gain detailed (yearly) information about when to continue/stop investment
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Introduction
Development of an Application Portfolio
Comparison of Analysis methods: Decision Tree v. Lattice
Conclusions
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1. There are of course advantages and limitations for the use of either modeling method. The key to successful use of these models is in understanding the mechanism behind which they operate
Models are not black boxes that somehow magically transform input data into perfectly correct output results
2. It is a modeler/user’s duty to understand exactly what the strengths and limitations are of the modeling technique in order to truly gain values from the results.
3. In the decision tree model, based on our extensive financial analyses (36 cashflow statements for each decision tree outcome) and model setup:
The flexible and inflexible business development plans predict an expected value of ~$185 M and $153 M, respectfully. This correlates to an improved system performance (NPV of the CSPond-based startup) of ~ 21%
4. How flexibility was incorporated to raise system value: By giving management the flexibility to vary the amount of investment
they make into the development of the technology at any given stage, they can use new information learned to make better decisions
Conclusions
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Conclusions
5. What is the “best” design: Depends on user The optimal choice may change depending on the circumstances of the
user (i.e. if cash-strapped then minimum initial CAPEX very important) The only criteria in which the inflexible model performs better than the
flexible model is in the CAPEX required (because the cost of a flexible contract versus a similar fixed contract is at a 20% premium)
6. “Systems thinking” The interrelatedness of so many different factors that must be
synthesized into a coherent model that appropriately uses all the relevant information requires two equally important things:
1. A solid grasp of the “big picture” of the system being modeled
2. It is insufficient to only be aware of the overall picture and not have a firm command of pumping out the “nitty gritty” calculations. The exercise of going through “nitty gritty” financial and other data/variable manipulation/generation provided “hands-on” exposure to the entire modeling process
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References
Chesbrough, H.W. Making sense of corporate venture capital. Harvard Business Review, March, 2002.
Christensen, Clayton M., Raynor, Michael E. (2003). “The Innovator’s Solution” Harvard Business School Press.
Faulkner, T. W. (1996) “Applying 'options thinking' to R&D valuation”, Research- Technology Management, vol. 39(3): 50-56.
“World Energy Outlook 2006” International Energy Agency. Head of Publications Service, 9 rue de la Federation, 75739 Paris Cedex 15, France. Accessed: October 12 th, 2008.
Schumpeter, Joseph A. (1942) “Capitalism, Socialism and Democracy” Harper Perennial.
Stanford University, E 104, lecture Slide #11, Lecture #16
Slocum et al. (2008). “Concentrated Solar Power on demand: CSPond” (non-published technology description of CSPond technology)