Ch18: Modelling Flashcards
Model definition
Defined as a cut-down simplified version of reality that captures the essential features of a problem and aids understanding. Requires a balance being struck between realism (complexity) and simplicity for ease of application, verification and interpretation of results.
When model required, three approaches:
- Commercial modelling product could be purchased
- Existing model could be reused, possibly after modification
- A new model could be developed
Merits of three approaches of modelling will depend on the following: (5) (Commercial vs create in-house model vs existing)
- The level of accuracy required
- The ‘in-house’ expertise available
- Number of times the model is to be used
- Desired flexibility of the model
- Cost of each option
Operational issues surrounding modelling that need to be considered: (8)
- Model being used should be adequately documented
+ Key assumptions and approximations made are understood as models are often run by different staff - Workings of the model should be easy to appreciate and communicate, the results should be displayed clearly
- Model should exhibit sensible joint behavior of model variables
+ Allowance for variables linked to each other , and should be consistent - Outputs from the model should be capable of independent verification for reasonableness and should be communicable to those to whom advice will be given
- Model should not be overly complex or time-consuming to run
+ Avoid difficulty in interpretability or expensive to run, unless required by purpose - Model should be capable of development and refinement
- A range of methods of implementation should be available to facilitate testing, parameterization and focus of results
- Appropriate time period between projected cashflows
+ Reliability vs speed
+ Argument for shorter time period between cashflows in the early years, given that the starting inputs for the model should be known with a fair degree of certainty. Later on longer time periods, to avoid spurious accuracy.
Key steps in developing and running an actuarial model (7)
- Specify the purposes and key features of the model
+ Valid for purpose: (simple vs complex; Deterministic vs stochastic) - Obtain and adjust the data
- Set the parameters and assumptions, including dynamic links
+ List assumptions applicable
+ Consult experts available
+ Consideration of factors that could influence assumptions
+ Assumptions should be consistent
+ Should exhibit sensible joint behavior of model variables - Construct the model cashflows
+ Expenses; tax; investment income; premiums; provisioning - Check accuracy and fit of model and amend if necessary
+ Sensitivity analysis or scenario testing
+ Assumptions changed if necessary
+ Should be easy to develop and refine over time - Run model as many times as required
- Output and summarize the results
+ Should not be overly complex to understand and explain
+ Check if output seems sensible
Deterministic and stochastic models definitions
Deterministic:
- A model where the parameter values are fixed at the outset of running the model and the result of running the model is a single outcome.
- Sensitivity analysis and scenario testing can be carried out to assess the potential variability of the results
Stochastic:
- Model estimates at least one parameter by assigning it a probability distribution.
- The model is run a large number of times, with the values of stochastic parameters being selected from their distributions on each run.
- The outcome is a range of values, giving an understanding of the likely distribution of outcomes
Advantages and disadvantages of deterministic models (3&3)
Advantages:
- Easy to communicate output and process to a non-technical audience since it does not involve explanation of probability distributions
- Clearer which economic scenarios have been tested
- Usually cheaper and easier to design and quicker to run
Disadvantages
- Difficult to determine the range of economic scenarios that should be tested
- Danger that certain scenarios, which could be detrimental to the company are not identified
- Not good for valuing options and guarantees as it is difficult to model variability in take-up rates or guarantees biting
Advantages and disadvantages of stochastic models: (7&4)
Advantages:
- A wide variety of simulations can be run
- May due to random nature, identify valuable scenarios to consider which may not have been thought of as a scenario to test under a deterministic model
- Takes into account variability of model parameters and covariances between them
- Output forms a probability distribution from which valuable statistics such as mean and variance of output can be calculated
- Aids in understanding of the risks inherent in the project
- Useful for valuing options or guarantees, since likelihood of option being taken up or guarantee biting can be allowed for
- May be more accurate
Disadvantages:
- Time consuming to run and is more expensive to develop
- More complex design, leading to increased operational risk
- Output difficult to communicate and interpret for senior management
- Output only as good s input, and depends on choice of probability distributions and parameters for stochastic variables (and data)