18 - Data Flashcards
What are the 8 basic principles in the UK Data Protection Act for personal data?
- Must be fairly & lawfully processed
- Be processed according to individual’s rights under the Act
- Be processed securely
- Obtained and processed for specified purposes
- Be adequate, relevant and not excessive for purposes concerned
- Not be kept longer than necessary for purposes concerned
- Be accurate & up to date
- Must not be transferred to a country/territory outside the European Economic Area unless that country ensures an adequate level of protection
What is data governance?
Used to describe the overall management of the availability, usability, integrity & security of the data employed in an organization.
What does data governance policy set out?
- How organisations capture, analyse & process data
- Issues wrt data privacy & security
- Roles/responsibilities of company individuals wrt data
- Mechanism through which regulatory/legal requirements wrt data management are met
o Controls to be put in place to ensure required data standards are applied
o Ongoing monitoring methods for adequacy of controls wrt managing data security, availability, integrity & usability (data governance)
Organisations without adequate data governance procedures can be exposed to risks relating to:
- legal and regulatory non-compliance
- inability to rely on data for decision making
- reputational issues (leads to loss of business)
- incurring additional costs
Possible risks/problems we might face with using data:
- Inaccurate/Incomplete data
- Insufficient data removes credibility of risk estimates, particularly for the estimation of extreme outcomes
- Data is not sufficiently relevant to the intended purpose
- Data is not in the appropriate form for intended purpose
- Where external data is used, there is risk of it not being a good enough proxy for risk being assessed
- Historical data might not be accurate reflection of the future experience
- When actuary attempts to group data into homogeneous groups:
o Individual groups are too small for credible analysis
o Risk that combined groups are heterogeneous
Why might historical insurance data not accurately reflect the future?
- Past abnormal events
- Significant random fluctuations
- Future trends not reflected sufficiently in past data
- Change in the underlying mix of homogeneous groups
- Heterogeneity in the group to which assumptions are to relate
- Changes in the way past data was recorded
- Past data may not be sufficiently up to date
- External environment changes eg. medical, social, economic etc.
Main uses of data
F - financial control I - investment R - risk management E - experience analysis S - statutory returns P - premium rating A - accounting and administration C - determining contributions E - experience statistics
P - product costing,
I - management information
M - marketing
P - setting provisions
Advantages of data being controlled by a single integrated system:
- Easier access to information, no need to collate information
- No need to reconcile information from different systems
- Less chance of inconsistent treatment of information b/w different products or over time.
- Easier to place controls on who can amend/enter data
- Less prone to corruption
Problems with data quality & quantity can be a result of:
- Poor management of data recording or its verification processes
- Poor management of data systems
- Not enough data collected yet to perform analysis
Qualities of good proposal & claims forms:
Well designed proposal/claim forms contain unambiguous questions to ensure correct answers are collected from policyholders.
- Ideally the info. should be quantitative in nature (for rating factors)
- Use of tick boxes
The information on both the proposal and claim forms should be easy to enter into the system.
The system must be able to link across proposal and claims records.
How are proposal forms used when assessing claims?
- Cross-checking claims information (from claim forms) w proposal form to assess validity of claims
Ideal qualities of data from sponsors of a benefit scheme are that data should be:
- Consistent with previous data
- Complete, ie no omissions
- Accurate
- Up-to-date
- At the level of detail requested
Data is required from the sponsors of benefit schemes wrt :
All data that is probably financially significant wrt timing/amount of benefits for:
- Individuals entitled to receive benefits in the future (active & deferred members)
- Individuals currently receiving benefits (current pensioners)
Methods of verifying data:
- Using accounts (Bal. Sheet & Inc. Stat.) to verify asset valuations / claims experience data (past data)
- Asset data used to place reliable value on assets wrt legislation & regulation
Assertions to be examined when using data: (5)
- that a liability or asset exists on a given date
- that a liability is held or an asset is owned on a given date
- that the appropriate value of an asset or liability has been recorded.
- that when an event is recorded, the time of the event and the associated income or expenditure are allocated to the correct accounting period
- the data is complete (ie there are no unrecorded liabilities, assets or events)