Showing posts with label uncertainty. Show all posts
Showing posts with label uncertainty. Show all posts

Investment Decision under Uncertainty

Uncertainty refers to a situation in which a decision is expected to yield more than one outcome and the probability of none of the possible outcomes is known. Therefore, decisions taken under uncertainty are necessarily subjective. However, analysis have devised some decision rules to impart some objectively to the subjective decisions, provided decision-makers are able to identify the possible ‘states of nature’ and can estimate the outcome of each strategy. Some such important decision rules are discussed below:

1. Wald’s maximum decision criterion

Wald’s maximum decision criterion says that the decision-makers should first specify the worst possible outcome of each strategy and accept a strategy that gives best out of the worst outcomes. It gives a conservative decision rule for risk avoidance. However, this decision rule can be applied by those investors who fall in the category of risk averters. This investment rule can also be applied by firms whose very survival depends on avoiding losses.

2. Minimax regret criterion

Minimax regret criterion is another decision rule under uncertainty. This criterion suggests that the decision-makers should select a strategy that minimizes the maximum regret of a wrong decision. What is regret? “Regret is measured by the difference between the pay-off of a given strategy and the pay-off of the best strategy under the same state of nature. Thus, regret is the opportunity cost of a decision.

3. Hurwicz decision criterion

Hurwicz has suggested another criterion for investment decision under uncertainty. In his opinion, full realization of optimistic pay-off or full realization of most pessimistic pay-off is a rare phenomenon. The actual pay-off of a strategy lies somewhere between the two extreme situations. According to Hurwicz criterion, therefore, the decision-makers need to construct a decision index of most optimistic and most pessimistic pay-offs of each alternative strategy. The decision index is, in fact, a weighted average of maximum possible and minimum possible pay-offs, weight being their subjective probability such that sum of probabilities of maximum (Max) and minimum (Min) pay-offs equals one.

4. Laplace decision criterion

The Laplace criterion uses the Bayesian rule to calculate the expected value of each strategy. As mentioned earlier, Bayesian rule says that where meaningful estimate of probabilities is not available, the outcome of each strategy under each state of nature must be assigned the same probability and that the sum of probabilities of outcome of each strategy must add up to one. For this reason, the Laplace criterion is also called the ‘Bayesian criterion’. By assuming equal probability for all events, the environment of ‘uncertainty’ is converted into an environment of ‘risk’.

Once this decision rule is accepted, then decision-makers can apply the decision criteria that are applied under the condition of risk. The most common method used for the purpose is to calculate the ‘expected value’ as defined in the case of pay-off matrix in section. Once expected value of each strategy is worked out, then the strategy with the highest expected value is selected.

This decision rule avoids the problem that arises due to subjectivity in assuming a probability of pay-off. This criterion is, therefore, regarded as the criterion of rationality because it is free from a decision-makers attitude towards risk.

To sum up, uncertainty is an important factor in investment decisions but there is no unique method of dealing with uncertainty. There are several ways of making investment decisions under the condition of uncertainty. None of the methods as described above lead to a flawless decision. However, they do add some degree of certainty to decision-making. The choice of method depends on the availability of necessary data and reliability of a method under different conditions.

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Risk and Uncertainty in Managerial Decision Making

Risk means a low probability of an expected outcome. From business decision-making point of view, risk refers to a situation in which a business decision is expected to yield more than one outcome and the probability of each outcome is known to the decision-makers or it can be reliably estimated. For example, if a company doubles its advertisement expenditure, there are four probable outcomes such as; 

(i) its sales may more-than-double,
(ii) they may just double,
(iii) increase in sales may be less than double and
(iv) sales do not increase at all.

The company has the knowledge of these probabilities or has estimated the probabilities of the four outcomes on the basis of its past experience as:
(i) more-than double – 20 percent (or 0.2),
(ii) almost double – 40 percent (or 0.4),
(iii) less than double – 50 percent (or 0.5) and
(iv) no increase – 10 percent (or 0.1).

It means that there is 80 percent risk in expecting more than doubling of sales, and 60 percent risk in expecting doubling of sale, and so on.

There are two approaches to estimating probabilities of outcomes of a business decision, viz.
(i) a priori approach, i.e., the approach based on deductive logic or intuition
(ii) posteriori approach, i.e., estimating the probability statistically on the basis of the past data.

In case of a priori probability, we know that when a coin is tossed, the probabilities of ‘head’ or ‘tail’ are 50/50, and when a dice is thrown, each side has 1/6 chance to be on the top. 

The posteriori assumes that the probability of an event in the past will hold in future also. The probability of outcomes of a decision can be estimated statistically by way of ‘standard deviation’ and ‘coefficient of variation’.

Uncertainty refers to a situation in which there is more than one outcome of a business decision and the probability of no outcome is known nor can it be meaningfully estimated. The unpredictability of outcome may be due to lack of reliable market information, inadequate past experience and high volatility of the market conditions. For example, if a Nepalese firm, highly concerned with population burden on the country, invents an irreversible sterility drug, the outcome regarding its success is completely unpredictable. Consider the case of insurance companies. It is possible for them to predict fairly accurately the probability of death rate of insured people, accident rate of cars and other automobiles, rate of buildings catching fire, and so on, but it is not possible to predict the death of a particular insured individual, a particular car meeting an accident or a particular house catching fire, etc.

The long-term investment decisions involve a great deal of uncertainty with unpredictable outcomes. But, in reality, investment decisions involving uncertainty have to be taken on the basis of whatever information can be collected, generated and ‘guesstimated’. For the purpose of decision-making, the uncertainty is classified as:
(a) complete ignorance and
(b) partial ignorance.

In case of complete ignorance, investment decisions are taken by the investor using their own judgment or using any of the rational criteria. What criterion he chooses depends on his attitude towards risk. The investor’s attitude towards risk may be that of:
(i) a risk averter,
(ii) a risk neutral,
(iii) a risk seeker or risk lover.

In simple words, a risk averter avoids investment in high-risk business. A risk-neutral investor takes the best possible decision on the basis of his judgment, understanding of the situation and his past experience. He does his best and leaves the rest to the market. A risk lover is one who goes by the dictum that ‘the higher the risk, the higher the gain’. Unlike other categories of investors, he prefers investment in risky business with high expected gains.

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