Chapter 12 - Risk and Uncertainty Flashcards

1
Q

Risk vs Uncertainty

A

Risk: quantifiable, associated probability (ie risk of not finding oil when drilling in an explored area)

Uncertainty: unquantifiable, cannot be mathematically modeled (a number of possible outcomes, but not probability can be assigned - ie digging for oil in an unexplored area)

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2
Q

Expected value

A

chance weighted outcomes (revenues)

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3
Q

Risk -

Neutral
Seeker
Averse

-Behaviour

A

Neutral: selects maximum expected value

Seeker: selects highest pay off (maximax)

Averse: trades off lower revenue for higher likelihood (maximin)

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4
Q

Utility Theory

A

Risk appetite changes with the level of investment amount.

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5
Q

Standard deviation

A

std dev = ROOT((SUM(x-MEAN)^2/n

Measure of distribution around a mean

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6
Q

Coefficient of variation

A

In order to be able to compare std deviations by dividing by its expected value allows to compare std deviations.

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7
Q

Expected Values (EV’s)
PRO
CON

A

PRO
considers risk
easy rule (one number)
simple to calc

CON
subjective
not useful for one-offs
ignores attitude to risk
no answer possible
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8
Q

Pay off tables and decision criteria

A

A quantification of all possible outcomes

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9
Q

Maximax
Maximin
Minimax

A

Maximax (optimist)
maximise payout

Maximin (pessimist)
Maximise minimum payout

Minimax (lost opportunity minimiser)
Minimise maximum regret

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10
Q

Perfect and Imperfect Information

A

Perfect: 100% accurate
Imperfect: usually correct

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11
Q

Decision trees

A
Square = decision point
Circle = chance outcome

Build EV’s following the tree lines

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12
Q

Decision Trees further considerations

A

Time value of money: incorporate dCF

Assume risk neutrality: decision maker selects option with the highest EV

Sensitivity analysis: show chances of possible outcomes

Oversimplification: decision models are an approximation of the reality, hence do not encompass all possible scenarios

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13
Q

Conditional probabilities

Contingency tables

A

Probability of an event based on the knowledge of the occurrence of a second event

table showing all chance weighted outcomes

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