Warning: define(): Argument #3 ($case_insensitive) is ignored since declaration of case-insensitive constants is no longer supported in /home/u742613510/domains/strategy-at-risk.com/public_html/wp-content/plugins/wpmathpub/wpmathpub.php on line 65
Risk – Page 2 – Strategy @ Risk

Tag: Risk

  • Perception of Risk

    Perception of Risk

    Google Trends and Google Insights for Search gives us the opportunity to gain information on a subject’s popularity. A paper by Google Inc. and Centers for Disease Control and Prevention (USA) have shown how search queries can be used to estimate the current level of influenza activity in the United States. (Ginsberg, Mohebbi, Patel, Brammer, Smolinski, & Brilliant, 2009)

    It is tempting to use these Google tools to see how searches for terms connected to risk and strategy has developed over the last years. Using Google Trends searching for the terms; economic risk and financial strategy we find the relative and normalized search frequencies as shown in the graphs below:

    Search-volume-index_1

    The weekly observations starts in January 2004, but we have due to missing data (?) started the economic risk search series in September 2004. As is evident from the time series, the search terms are highly correlated (appr. 0.80) and there is a consistent seasonal variation – with heightened activity in spring and fall. The average value for the normalized search volume index (index) is 1.0 for the term economic risk and 1.58 for financial strategy. The term financial strategy has then on average been used 0.58 times more than economic risk.

    The numbers …. on the y-axis of the Search Volume Index aren’t absolute search traffic numbers. Instead, Trends scales the first term you’ve entered so that its average search traffic in the chosen time period is 1.0; subsequent terms are then scaled relative to the first term. Note that all numbers are relative to total traffic. (About Google Trends, 2009)

    Both series shows a falling trend from early 2004 to mid 2006, indicating the terms lower relative shares of all Google searches. However from that on the relative shares have been maintained, indicating increased interest in the terms against increased Internet search activity.

    It is also possible to rank the different regions interest in the subject (the table can be sorted by pressing the column label):

    Region Ranking

    RegionRiskStrategy
    Singapore1.000.80
    South Africa0.861.43
    Hong Kong0.740.83
    Malaysia0.701.06
    India0.501.10
    South Korea0.440.46
    Philippines0.410.58
    Australia0.360.50
    Indonesia0.350.35
    New Zealand0.260.38

    Singapore is the region with the highest shares of searches including  the term ‘risk’ and South African the region with the highest shares of searches including ‘strategy’ In India the term ‘financial strategy’ is important but ‘risk’ is less important.`

    The most striking feature of the table however is the lack of American and European regions. Is there less interest in these subjects in the Vest than in the East ?

    References

    Ginsberg, J, Mohebbi, M, Patel, R, Brammer, L, Smolinski, M., & Brilliant, L., (2009). Detecting influenza epidemics using search engine query data. Nature, 457, 1012-1014.

    (n.d.). About Google trends. Retrieved from http://www.google.com/intl/en/trends/about.html#7

  • Valuation as a strategic tool

    Valuation as a strategic tool

    This entry is part 1 of 2 in the series Valuation

     

    Valuation is something usually done only when selling or buying a company (see: probability of gain and loss). However it is a versatile tool in assessing issues as risk and strategies both in operations and finance.

    The risk and strategy element is often not evident unless the valuation is executed as a Monte Carlo simulation giving the probability distribution for equity value (or the value of entity).  We will in a new series of posts take a look at how this distribution can be used.

    By strategy we will in the following mean a plan of action designed to achieve a particular goal. The plan may involve issues across finance and operation of the company; debt, equity, taxes, currency, markets, sales, production etc. The goal usually is to move the value distribution to the right (increasing value), but it may well be to shorten the left tail – reducing risk – or increasing the upside by lengthening the right tail.

    There are a variety of definitions of risk. In general, risk can be described as; “uncertainty of loss” (Denenberg, 1964); “uncertainty about loss” (Mehr &Cammack, 1961); or “uncertainty concerning loss” (Rabel, 1968). Greene defines financial risk as the “uncertainty as to the occurrence of an economic loss” (Greene, 1962).

    Risk can also be described as “measurable uncertainty” when the probability of an outcome is possible to calculate (is knowable), and uncertainty, when the probability of an outcome is not possible to determine (is unknowable) (Knight, 1921). Thus risk can be calculated, but uncertainty only reduced.

    In our context some uncertainty is objectively measurable like down time, error rates, operating rates, production time, seat factor, turnaround time etc. For others like sales, interest rates, inflation rates, etc. the uncertainty can only subjectively be measured.

    “[Under uncertainty] there is no scientific basis on which to form any calculable probability whatever. We simply do not know. Nevertheless, the necessity for action and for decision compels us as practical men to do our best to overlook this awkward fact and to behave exactly as we should if we had behind us a good Benthamite calculation of a series of prospective advantages and disadvantages, each multiplied by its appropriate probability waiting to be summed.” (John Maynard Keynes, 1937)

    On this basis we will proceed, using managers best guess about the range of possible values and most likely value for production related variables and market consensus etc. for possible outcomes for variables like inflation, interest etc. We will use this to generate appropriate distributions (log-normal) for sales, prices etc. For investments we will use triangular distributions to avoid long tails. Where, most likely values are hard to guesstimate or does not exist, we will use rectangular distributions.

    Benoit Mandelbrot (Mandelbrot, 2004) and Taleb Nasim (Nasim, 2007) have rightly criticized the economic profession for “over use” of the normal distribution – the bell curve. The argument is that it has too thin and short tails. It will thus underestimate the possibility of far out extremes – that is, low probability events with high impact (Black Swan’s).

    Since we use Monte Carlo simulation we can use any distribution to represent possible outcomes of a variable. So using the normal distribution for it’s statistically nicety is not necessary. We can even construct distributions that have the features we look for, without having to describe it mathematically.

    However using normal distributions for some variables and log-normal for others etc. in a value simulation will not give you a normal or log-normal distributed equity value. A number of things can happen in the forecast period; adverse sales, interest or currency rates, incurred losses, new equity called etc. Together with tax, legal and IFRS rules etc. the system will not be linear and much more complex to calculate then mere additions, subtraction or multiplication of probability distributions.

    We will in the following adhere to uncertainty and loss, where loss is an event where calculated equity value is less than book value of equity or in the case of M&A, less than the price paid.

    Assume that we have calculated  the value distribution (cumulative) for two different strategies. The distribution for current operations (blue curve) have a shape showing considerable downside risk (left tail) and a limited upside potential; give a mean equity value of $92M with a minimum of $-28M and a maximum of $150M. This, the span of possible outcomes and the fact that it can be negative compelled the board to look for new strategies reducing downside risk.

    strategy1

    They come up with strategy #1 (green curve) which to a risk-averse board is a good proposition: reducing downward risk by substantially shortening the left tail, increasing expected value of equity by moving the distribution to the right and reducing the overall uncertainty by producing a more vertical curve. In numbers; the minimum value was reduced to $68M, the mean value of equity was increased to $112M and the coefficient of variation was reduced from 30% to 14%. The upside potential increased somewhat but not much.
    To a risk-seeking board strategy#2 (red curve) would be a better proposition: the right tail has been stretched out giving a maximum value of $241M, however so have the left tail giving a minimum value to $-163M, increasing the event space and the coefficient of variation to 57%. The mean value of equity has been slightly reduced to $106M.

    So how could the strategies have been brought about?  Strategy #1 could involve introduction of long term energy contracts taking advantage of today’s low energy cost. Strategy #2 introduces a new product with high initial investments and considerable uncertainties about market acceptance.

    As we now can see the shape of the value distribution gives a lot of information about the company’s risk and opportunities.  And given the boards risk appetite it should be fairly simple to select between strategies just looking at the curves. But what if it is not obvious which the best is? We will return later in this series to answer that question and how the company’s risk and opportunities can be calculated.

    References

    Denenberg, H., et al. (1964). Risk and insurance. Englewood Cliffs, NJ: PrenticeHall,Inc.
    Greene, M. R. (1962). Risk and insurance. Cincinnati, OH: South-Western Publishing Co.
    Keynes, John Maynard. (1937). General Theory of Employment. Quarterly Journal of Economics.
    Knight, F. H. (1921). Risk, uncertainty and profit. Boston, MA: Houghton Mifflin Co.
    Mandelbrot, B., & Hudson, R. (2006). The (Mis) Behavior of Markets. Cambridge: Perseus Books Group.
    Mehr, R. I. and Cammack, E. (1961). Principles of insurance, 3.  Edition. Richard D. Irwin, Inc.
    Rable, W. H. (1968). Further comment. Journal of Risk and Insurance, 35 (4): 611-612.
    Taleb, N., (2007). The Black Swan. New York: Random House.

  • Corporate Risk Analysis

    Corporate Risk Analysis

    This entry is part 2 of 6 in the series Balance simulation

     

    Strategy @Risk has developed a radical and new approach to the way risk is assessed and measured when considering current and future investment. A key part of our activity in this sensitive arena has been the development of a series of financial models that facilitate understanding and measurement of risk set against a variety of operating scenarios.

    We have written a paper which outlines our approach to Corporate Risk Analysis to outline our approach. Read it here.

    Risk

    Our purpose in this paper is to show that every item written into a firm’s profit and loss account and its balance sheet is a stochastic variable with a probability distribution derived from probability distributions for each factor of production. Using this approach we are able to derive a probability distribution for any measure used in valuing companies and in evaluating strategic investment decisions. Indeed, using this evaluation approach we are able to calculate expected gain, loss and probability when investing in a company where the capitalized value (price) is known.

  • The Challenge

    The Challenge

    This entry is part 2 of 6 in the series Monte Carlo Simulation

     

    Whenever you take a decision where you can loose or gain something, value is at risk. Most decision makers want a situation where they maximize the value, and if everything goes wrong have a minimum of regret.

    Intuition based decisions are the most common type of decisions we make in our daily life, what we seem to forget is that the intuition is the sum of all our experiences gained through years of hard work and often at a high cost. So what seemed to be an easy decision might be the result of years of gathered information. The decision maker has in fact very little uncertainty since the information is known.

    When the decision involves other people that need to be convinced and the complexity is vast and the potential loss is bigger than the individual can bear other methods than intuition is required. This was the situation for the team in The Manhattan project building the first atomic bomb. They needed to know and they did not have the experience to know and there was no place to gather information.

    They had to take decisions with a great deal of uncertainty. In order to understand the risk involved in every single decision and the total risk, they needed a method to calculate the risk. Most decisions related to investments and business development does not face this huge challenge similar to The Manhattan project but the same method can be used.

  • Uncertainty – lack of information

    Uncertainty – lack of information

    This entry is part 3 of 6 in the series Monte Carlo Simulation

     

    Every item in a budget or a profit and loss account represents in reality a probability distribution. In this 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, costs etc.) metrics like NOPLAT, Free Cash Flow and Economic Profit will have a much higher variance.

    The key issue is to identify the various items and establish the individual probability distribution. This can take place by using historical data, interviewing experts or comparing data from other relevant sources. There are three questions we need to answer to define the proportions of the uncertainty:

    • What is the expected value?
    • What is the lowest likely value?
    • What is the highest likely value?

    When we have decided the limits where we with 95% probability estimate the result to be within we then decide what kind of probability distribution is relevant for the item. There are several to choose among, but we will emphasize three types here.

    1. The Normal Distribution
    2. The Skewed Distribution
    3. The Triangular Distribution

    The Normal Distribution is being used when we have situations where there is a likeliness for a symmetric result. It can be a good result but has the same probability of being bad.

    The Skew Distribution is being used when it can occur situations where we are lucky and experience more sales than we expected and vice versa we can experience situations where expenditure is less than expected.

    The Triangular Distribution is being used when we are planning investments. This is due to the fact that we tend to know fairly well what we expect to pay and we know we will not get merchandise for free and there is a limit for how much we are willing to pay.

    When we have defined the limits for the uncertainty where we with 95% probability estimate the result to be within we can start to calculate the risk and prioritize the items that matters in terms of creating value or loss.

  • Risk – Exposure to Gain and Loss

    Risk – Exposure to Gain and Loss

    This entry is part 4 of 6 in the series Monte Carlo Simulation

     

    It is first when the decision involves consequences for the decision maker he faces a situation of risk. A traditional way of understanding risk is to calculate how much a certain event varies over time. The less it varies the minor the risk. In every decision where historical data exists we can identify historical patterns, study them and calculate how much they varies. Such a study gives us a good impression of what kind of risk profile we face.

    • Risk – randomness with knowable probabilites.
    • Uncertainty – randomness with unknowable probabilities.

    Another situation occurs when little or no historical data is available but we know fairly well all the options (e.g. tossing a dice). We have a given resource, certain alternatives and a limited number of trials. This is equal to the Manahattan project.

    In both cases we are interested in the probability of success. We like to get a figure, a percentage of the probability for gain or loss. When we know that number we can decide whether we will accept the risk or not.

    Just to illustrate risk, budgeting makes a good example. If we have five items in our budget where we have estimated the expected values (that is 50% probability) it is only three percent probability that all five will target their expectation at the same time.

    0.5^5 = 3,12%

    A common mistake is to summarize the items rather than multiplying them. The risk is expressed by the product of the opportunities.