Define personal data
Personal data is information that relates to an individual which would allow that individual to be identified, or where the data combined with other information could allow the individual to be identified
Eight principles which must be followed when processing personal data
Personal data must:
1. Be processed fairly and lawfully
2. Be obtained and processed for specified purposes
3. Be adequate, relevant and not excessive for the purposes concerned
4. Be accurate, and where necessary, kept up to date
5. Not be kept longer than necessary for the purposes concerned
6. Be processed in accordance with the individual’s rights
7. Be processed securely
8. Not be processed to another company or country unless that party ensures an adequate level of protection
Examples of what might count as ‘sensitive personal data’
Sensitive personal data can include information related to:
1. Racial or ethnic origin
2. Political opinions
3. Religious or other beliefs
4. Membership of trade unions
5. Physical or mental health or condition
6. Sexual life
7. Convictions, proceedings and criminal acts
Give examples of circumstances when sensitive personal information may be legitimately processed
State three characteristics of ‘big data’
Big data can be characterised by:
1. The data sets are very large
2. Data is brought together from different sources
3. Data can be analyzed very quickly, for example in real time
State four risks to a company not having adequate data governance procedures
Define ‘data governance’ and list the guidelines that a data governance policy may cover
Data governance – the overall management of the availability, usability, security and integrity of data employed in an organization
A data governance policy will set out guidelines with regards to:
1. The specific roles and responsibilities of individuals in the organization with regards to data
2. How an organization will capture, analyze and process data
3. Issues with respect to data security and privacy
4. The controls that will be put in place to ensure that the required data standards are applied
5. How the adequacy of controls will be monitored on an ongoing basis with respect to data usability, accessibility, integrity and security
6. Ensuring that the relevant legal and regulatory requirements in relation to data management are met by the organization
List the main sources of data
TRAINERS
Tables
Reinsurers
Abroad (data from overseas contracts)
Industry data
National statistics
Experience investigations on the existing contract
Regulatory reports and company accounts
Similar contracts
What is the overriding principle in relation to all the different uses of data?
There should be one single, integrated data system so that the data used for different applications is consistent
Define algorithmic trading
This is a form of automated trading that involves buying and selling financial securities electronically to capitalize on price discrepancies for the same stock or asset in different markets.
(can also refer to high frequency trading)
Explain the risks of algorithmic trading
List the key risks associated with using data
What two main factors cause data to be of poor quality and quantity?
How can good quality data be ensured from an insurance proposal and claims form?
Why is it important, at the time of the claim, to have access to the information given on the proposal form?
Why is it important that the insurance company retains a past history of policy and claims records?
When an insurance company analyses past experience in order to help set future assumptions, several years’ worth of data are often needed in order to give a sufficient volume of data, or to identify trends
What is the key problem with data for employee benefit schemes?
The actuary does not have full control over the data, as it is provided by the sponsor
The consequences of this may be poor quality or summarized data
NOTE: It is therefore particularly important to validate this type of data
What four sources of data are useful in order to conduct a valuation of a benefits scheme?
Give examples of reconciliation checks that can be performed on data
Give examples of cross-checks that can be performed on data
Give examples of reasonableness checks that can be performed on data
Give examples of spot checks that can be performed on data
Outline three problems with using summarized data
Reasons why industry data is not directly comparable