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Articles – Page 13 – Strategy @ Risk

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  • Real options

    Real options

    In real life both for investment decisions and in valuation of companies there are managerial flexibility in the sense that at future points of time there is flexibility in choosing among alternatives.

    When investing, the simplest example is the choice between to invest after a feasibility study or walk away. In valuation the choice can be at a future point of time to continue operation or disinvest.

    These alternatives are real options available for the decision maker. Recognizing these real options will usually increase (reduce loss) the value of the investment or the company under valuation.

    It is well known that most standard valuation techniques of risk-adjusted discounted cash flow (DCF) analysis fails to capture all sources of value associated with this type of investment, in that it assumes that the decision to invest is irreversible and inflexible, i.e., the investment cash flows are committed and fixed for the life of the project.

    A main contribution of real options analysis is to incorporate managerial flexibility inherent in the project in its valuation. Added flexibility value, overlooked in DCF analysis, comes from managerial decisions that can take advantage of price movements: operating flexibility and investment timing flexibility.

    Strategy @ Risk has the ability to incorporate a client’s specific decision alternative in the simulation model. Thus combining Monte Carlo simulation with decision tree analysis. The four-step process of the real option decision analysis is shown below.

    roaprocess

    Production Plant Case

    The board faces the following situation: The company has a choice between building a plant with production capacity of 150 000 metric tons at a most likely cost of $450 mill. or a smaller plant with a capacity of 85 000 metric tons at a most likely cost of $300 mill..

    The demand for the product is over 100 000 metric tons and rising. The decision between a small and large plant will be taken in year 1 and full production starts in year 2.

    If the decision has been to build the smaller plant (at a higher cost per unit produced) the capacity can be increased by 65 000 metric tons at most likely cost of $275 mill. (Normal distributed with variance of ±25%). The decision to increase capacity will be taken in year 2 if the demand exceeds 110 000 metric tons. It is assumed that the demand is normally distributed with a most likely demand of 100 000 metric tons, and demand varies ±20% (upper and lower 5% limit). The demand later periods is assumed to have an increasing variance and a 30% autocorrelation

    In year 3 and 4 it is considered that there is a 40% chance that if sales has been good (over 110 000 metric tons) a competitor will have entered the market reducing sales by 30 000 metric tons. If the demand falls below 70 000 metric tons the company will disinvest.

    The decisions will be made on the value of the discounted cash flows (20% discount rate).
    The above problem can be presented as a decision tree.

    real-options-web

    The boxes represent the “decision point”. The circles represent chance events. The chance events may be continuous, as is the case with demand forecasts, or discrete, as is the case of a competitor entering the market or not.

    Net Present Value of the Alternatives

    The analysis using both the decision tree and Monte Carlo simulation gives us the net present value of the different alternatives. As shown in the figures to the right, the best alternative is to build a large plant immediately giving a net present value of $679 mill.
    A small plant will give a lower net present value (NPV $626 mill.) even if we increase the capacity at a later stage (NPV $637 mill.).

    plant-alternatives

    In this case it will never be profitable to disinvest at any point of time. This will always give a lower value.In some cases it is difficult to distinguish the best strategy from its alternatives. We will in a later post come back to selection strategies using stochastic dominance.

  • What we do; Predictive and Prescriptive Analytics

    What we do; Predictive and Prescriptive Analytics

    This entry is part 1 of 3 in the series What We Do

     

    Analytics is the discovery and communication of meaningful patterns in data. It is especially valuable in areas rich with recorded information – as in all economic activities. Analytics relies on the simultaneous application of statistical methods, simulation modeling and operations research to quantify performance.

    Prescriptive analytics goes beyond descriptive, diagnostic and predictive analytics; by being able to recommend specific courses of action and show the likely outcome of each decision.

    Predictive analytics will tell what probably will happen, but will leave it up to the client to figure out what to do with it.

    Prescriptive analytics will also tell what probably will happen, but in addition:  when it probably will happen and why it likely will happen, thus how to take advantage of this predictive future. Since there are always more than one course of action prescriptive analytics have to include: predicted consequences of actions, assessment of the value of the consequences and suggestions of the actions giving highest equity value for the company.

    By employing simulation modeling (Monte Carlo methods) we can give answers – by probability statements – to the critical question at the top of the value staircase.

     

    Prescriptive-analytics

     

    This feature is a basic element of the S@R balance simulation model, where the Monte Carlo simulation can be stopped at any point on the probability distribution for company value  (i.e. very high or very low value of company) giving full set of reports: P&L and balance sheet etc. – enabling a full postmortem analysis: what it was that happened and why it did happen.

    Different courses of actions to repeat or avoid the result with high probability can then be researched and assessed. The EBITDA client specific model will capture relationships among many factors to allow simultaneous assessment of risk or potential associated with a particular set of conditions, guiding decision making for candidate transactions. Even the language we use to write the models are specially developed for making decision support systems.

    Our methods will as well include data and information visualization to clearly and effectively communicate both information and acquired knowledge – to reinforce comprehension and cognition.

    Firms may thus fruitfully apply analytics to business data, to describe, predict, and improve its business performance.

     

  • How we work

    How we work

    An initial meeting allows us to begin to understand each other and for us to gain an insight into a client’s business, ideas, ambitions and direction through an open but totally confidential exchange. Following one or possibly two further meetings and subject to client approval we prepare and submit a fully costed proposal of work, with time lines and key deliverables  made clear. (See:  S@R Services) .

    Formal acceptance of our proposal of work – its scope, scale, fees and costs, and timing initiates the program that will almost certainly require input and co- operation of key executives and managers at regular intervals during its life-cycle. All information, data and analysis will be handled according to relevant security standards.

    Depending upon the nature of the program, we usually take a phased approach enabling joint assessment at the end of each stage of work.

    On completion of an assignment we will deliver a comprehensive presentation and understandable report making clear our key recommendations and next steps to be pursued. We will not leave you at risk.

    If you are interested in S@R services, please do not hesitate contacting us to discuss how we can provide a solution satisfying your demands.

  • How to take advantage of Strategy@Risks services

    How to take advantage of Strategy@Risks services

    The purpose of the modelling is to as thoroughly as possible describe the company’s present economic and financial situation, and its state throughout the forecast period.

    The S@R financial simulation model can simulate the uncertainty and risk in various tax regimes, economic and fiscal write off. Calculate tax; incorporate depreciation rules to calculate deferred tax, any tax benefits related to forward carry losses. Forecast results from different financial strategies, strategies for dividends and repurchase of shares etc. Working with multiple currencies, currency risk and translation risk (hedge), for global clients.

    The reports produced from the Strategy@Risk starts from a complete set of information collected from the internal accounts, financial accounts, or from a company specific model.

    Strategy@Risk provides a full account of the calculations and results. We can modify the reports to the specific problem at hand, so that the relevant parameters are isolated and explained in the best manner. To further expose the problems at hand, we make extensive use of professional graphic illustrations.

    Here is a selection of our reports – based on the most likely value of the input variables – that is useful to illustrate relevant conditions. In addition probability distributions for all the variables will be calculated and those pertinent to the strategy will be graphed.

    • Profit and loss account and balance
    • Debt and equity calculations
    • Foreign exchange effects
    • Translation and translation hedge effects
    • Production, sales and inventory
    • Gross margin analysis
    • Working capital
    • EBIT, NOPLAT, Free cash flow
    • Cost and value of debt and equity
    • Economic Profit/EVA/Residual income/Super Profit
    • Cash flow to investor and internal proceeds
    • Fri cash flow value
    • Economic profit value
    • Adjusted present value
    • Key figures
    • VAT and investment tax
    • Depreciations
    • Tax deferred and payable
    • Cash flow analysis
    • Financing analysis
    • Year-end dispositions
    • Expected remaining life-time on investments
    • Value drivers
    • Assumptions and parameter values, etc.
  • Who we are

    Who we are

    Strategy@Risk is operated by partners with long experience as CFO, CEO and board members in a range of businesses. As former university employees we can draw on academia when a project demands state of the art knowledge in a field.

    Strategy@Risk takes advantage of a program language developed and used for financial risk simulation. We have used the program language for over 25years, and developed a series of simulation models for industry, banks and financial institutions.

    The language has as one of its strengths, to be able to solve implicit equations in multiple dimensions. For the specific problems we seek to solve, this is a necessity that provides the necessary degrees of freedom to formulate the approach to problems.

    The Strategy@Risk tool has highly advance properties:

    • State of the art in financial- and international trade theory.
    • Double-entry bookkeeping, using accounts balancing as tool for solving simultaneous equations generating P&L and Balance Sheet.

    • Solving implicit systems of equations giving unique WACC calculated for every period ensuring that “Free Cash Flow” always equals “Economic Profit” value.

    • Programs and models in “windows end-user” style.
    • Extended test for consistency in input, calculations and results.
    • Transparent reporting of assumptions and results.

    In the Strategy@Risk framework all items, whether from the profit and loss account or from the balance sheet, will have individual probability distributions. These distributions are generated by the combination of distributions from factors of production that define the item.

    Variance will increase as we move down the items in the profit and loss account. The message is that even if there is a low variance in the input variables (sales, prices, exchange rates, costs etc.) metrics like Noplat, Free Cash Flow, and Economic Profit and ultimately the Value of Equity will have a much higher variance.

  • Projects we have done

    Projects we have done

    Consultancy, in contrast to selling software products, is quite a delicate process. Trust is the most important asset to successfully completing a project, and S@R customers consider discretion to be important. That’s why we have decided to publish relevant contents – which provide insight into our methods of operation – only accessible in anonymous form and often collected from different projects.

    The same applies to naming customers, but large projects has been performed in

    • Finance
    • Banking
    • Pulp & Paper
    • Airport Operations
    • Brewery
    • Aquaculture
    • Mining & Quarrying
    • Car parts
    • Rail coach production

    etc. –  all for multinational companies.