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CAS Ratemaking Seminar

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Title: CAS Ratemaking Seminar


1
  • CAS Ratemaking Seminar
  • March 2006
  • Data-3 The Actuary and Data Standards
  • Data-1 The Actuary and The Data Manager

2
  • The Actuary and Data Standards
  • Yesterday, Today and Tomorrow
  • CAS Ratemaking Seminar
  • March 2006

3
Agenda
  • Strategic Data Planning
  • Timelines
  • The Shifting Focus of Insurance Information
  • How Do We Get There?
  • Enterprise Data Strategies
  • Standards
  • Standards and Data Management Best Practices
  • 10 Guidelines of Data Management
  • Questions and Commentary

4
Panelists
  • Art Cadorine, ACAS, ISO
  • Gary Knoble, AIDM
  • Pete Marotta, AIDM, ISO

5
Strategic Data Planning
6
Data - A Corporate Asset
  • Data, like all corporate assets, requires
    managing to ensure the maximum benefit is
    achieved by the organization.
  • Well-managed, high-quality data aids good
    corporate governance by providing management with
    a cohesive and objective view of an
    organizations activity and promotes data
    transparency.
  • Poorly-managed data can result in faulty business
    decisions.

7
Data and Strategic Planning
  • Data supports corporate decision-making
  • In providing a cohesive and objective view of
    corporate activities.
  • In viewing the external landscape.
  • In predicting the future.
  • In developing the corporate strategic plan.
  • In identifying process improvements and other
    efficiencies.
  • In measuring results.

8
PWC Study
  • Data is the currency of the new economy.
  • Companies that manage their data as a strategic
    resource and invest in its quality are already
    pulling ahead in terms of reputation and
    profitability from those that fail to do so.
  • Global Data Management Survey 2001,
    PriceWaterhouseCoopers

9
Enterprise Data Strategy A Definition
  • A plan that establishes a long-term direction for
    effectively using data resources in support of,
    and indivisible from, an organization's goals
    and objectives.
  • An Enterprise data strategy requires both
    business and technology input to
  • Facilitate IT planning.
  • Support the overall business plan.
  • Promote and maintain clearly and consistently
    defined data across the corporation.

10
Components of an Enterprise Data Strategy
  • Organizational level
  • Data Stewardship
  • Senior level oversight of corporate data.
  • From an enterprise-wide perspective.
  • Data Architecture What to Run, Where to Run,
    How to Run Software and Hardware
  • Ownership Customer and Data
  • Data Location
  • Software v. Service
  • Product Definition
  • Data and Process Models

11
Components of an Enterprise Data Strategy
  • Data level
  • Data Element Management
  • Data Definition and Attributes
  • Code Value and Data Set Management
  • Data Mapping Management
  • Data Quality
  • Data Standards
  • Business and Efficiency Driven
  • Internal and External
  • Data Privacy and Security
  • Compliance with Privacy Polices and Regulations
  • Data from Reputable Sources
  • Data Security

12
Strategic Data Planning
  • Strategic Data Planning is primarily a business,
    not an IT function.
  • IT critical to any enterprise data strategy.

13
Enterprise Data Strategy and IT Architecture
Supports Business Strategy
A set of guiding principles that define why and
what we do
Business Strategy
Application
Data
Infrastructure
A set of guiding principles that define how we
do what we do
IT Architecture
14
Results of a Successful Enterprise Data Strategy
  • Provide a process and a set of tools to
    facilitate Business and IT planning and
    decision-making
  • Maintain a common and consistent view of data
    that is shared company wide
  • Facilitate alignment and traceability of
    significant IT investments to their respective
    business drivers

15
Business Results of Enterprise Data
  • Ease of doing business
  • Speed to market
  • Facilitate RD
  • Customer Service
  • Compliance

16
Timelines
17
The Past
  • Regulators/Business
  • (underwriters, actuaries, etc.)
  • Coverage Forms
  • (changes in forms and coverages)
  • Data Standards

18
Today
  • Technology Financial
    3rd Parties
  • (Internet, XML, (SOX, GLB, HIPAA, etc.)
    (Credit, DMV,
  • Black Boxes, RFIDs) etc.)
  • Data Standards

19
Tomorrow
  • Business Needs Business, regulatory, technology,
    etc.
  • (Profitability, Loss Control, Consumer
    Protection, Solvency, Privacy, Confidentiality,
    etc.)
  • Data Needs
  • Data Standards

20
The Shifting Focus of Insurance Information
21
Regulation
  • From Annual Statement to Market Conduct Annual
    Statements to NAIC Databases
  • Financial Data Repository (FDR)
  • National Insurance Producer Registry (NIPR)
  • Fingerprint Repository
  • On-Line Fraud Reporting System (OFRS)
  • Uninsured Motorist Identification Database
  • From financial data used to monitor solvency to
    financial, statistical data and analytics used to
    monitor solvency
  • From US driven regulations to EU and
    internationally driven regulations

22
Pricing
  • From traditional underwriting and pricing - using
    traditional data sources (risk data, industry
    statistics) to predictive modeling and analytics
    - using non-traditional data sources
    (demographics, GIS, 3rd party data, non-insurance
    data, non-verifiable data sources, etc.)
  • From a stable risk control and claims environment
    to a dynamic environment of new hazards - mold,
    terrorism, computer viruses, cyber terrorism,
    etc.
  • From risk-specific risk management to enterprise
    risk management

23
Data
  • From a data quality focus on validity, timeliness
    and accuracy to a data quality focus on
    transparency, completeness and accuracy 
  • From data available on a periodic basis to data
    available real-time
  • From statistical plans and edit packages to data
    dictionaries, schema and implementation guides
  • From sharing data for the common good to
    protecting data for the common good

24
Technology
  • From centralized highly controlled technologies
    to ASPs, the, Internet, XML, LANs, PCs, etc.
  • From IT as an business enabler to IT as a
    business driver
  • From mainframes to LANS and high powered PCs

25
How Do We Get There?
26
How do we get there?
  • Enterprise Data Strategies
  • Assemble the right team
  • Business Needs internal and external, current
    and future
  • Technology current and future
  • New Products
  • New Processes
  • Standards
  • Best Practices

27
Data Users, Data Definers Data Enablers
  • Business Units (Underwriters)
  • Information Technology
  • Finance and Accounting
  • Actuaries
  • Claims
  • Government Affairs
  • Sales and Marketing
  • Research
  • Data Management
  • Data Element Management

28
New Processes The Goal Single Entry
Real Time data entry
Download
Solution Provider/Vendor
B Carrier processes data, syncronizes with
agency data base through download
A Form/Msg from Producer (agent/broker) to
Carrier Producer either waits for download, or
does data entry to process binder, ID cards,
certs.
Re-use of data
enabler
D Data may continue along the process to be
used by Reinsurers, etc.
C Messages from Carrier to Service Providers
(CLUE, MVR)
29
Straight Through Processing (STP)
  • The use of common, industry standard data
    elements, throughout all interactions of all
    parties, in all insurance transactions or
    processes.
  • STP allows data to flow effortlessly through the
    industry without redefinition, mappings or
    translations.

30
STP Vision
  • Provides a common set of definitions
  • Data definitions
  • Not of every transaction or message
  • Allows consistent industry solutions
  • Vendor provided software solutions
  • Internally developed applications
  • Facilitates exchange of information
  • Eliminates mappings and translations
  • Minimizes friction

31
STP Value
  • Improves data quality, utility
  • better benchmarking
  • Lessens data translations, eliminates return
    transactions for clarification
  • Reduces friction in insurance processes
  • Allows companies to differentiate on value added
  • Facilitates plug and play solutions

32
STP Benefits
  • Improved Customer Relationship
  • Less Time Processing
  • Ease of Doing Business
  • Retention and Growth
  • Profitability

33
Standards
34
What are Standards?
  • Definition Standard (n.) Anything recognized as
    correct by common consent, by approved custom, or
    by those most competent to decide a model a
    criterion.
  • -- Websters New Universal Dictionary

35
Types of Standards
  • Business Models
  • Identify All the Major Processes and
    Relationships
  • Common Insurance Terminology
  • Coverage and Forms
  • Process Standards
  • Application Forms, Report of Injury or Claim,
    Licensing, etc.

36
Types of Standards (Continued)
  • Other
  • Solvency Standards
  • Financial Information Exchange Standards
  • Market Conduct Information Standards
  • Ratemaking Standards
  • Operating Data Standards
  • Data Exchange Standards
  • Data Quality Standards

37
ACORD Standards
  • Doing Things Once Has Many Benefits
  • Data names
  • Data definitions
  • Paper or electronic operational forms
  • Machine readable formats
  • Business Process Models
  • Code list definitions
  • Data transmission standards

38
Data Collection Organization Standards
  • Policy Forms and Coverages
  • Rate Making Standards
  • Data Reporting Standards
  • Data Quality Standards
  • Data Element Definitions
  • Code List Definitions

39
Business Process
  • A business process is a collection of related
    structural activities that produce something of
    value to the organization, its stake holders or
    its customers.
  • It is, for example, the process through which an
    organization realizes its services to its
    customers.

40
Business Rules
  • Business rules describe the operations,
    definitions and constraints that apply to an
    organization in achieving its goals. 
  • For example a business rule might state that no
    credit check is to be performed on return
    customers.

41
Need for Industry Collaboration
42
Benefits of Industry Data Standards
Submission
Insurance Carriers
Regulatory Compliance
Broker/Insurer
Ins/Reinsurer
Claims
Reinsurer
Regulatory Authorities
STANDARDS IMPLEMENTATION
Claims Management Applications
Auditing
Service Providers
Insurance Agency
Payment transactions
Premium transactions
Agent/ Producer
43
Standards and Data Management Best Practices
44
10 Guidelines of Data Management
  1. Data must be fit for the intended business use.
  2. Data should be obtained from the authoritative
    and appropriate source.

45
10 Guidelines of Data Management
  1. Data should be input only once and edited,
    validated, and corrected at the point of entry.
  2. Data should be captured and stored as
    informational values, not codes.

46
10 Guidelines of Data Management
  • Data should have a different steward responsible
    for defining the data, identifying and enforcing
    the business rules, reconciling the data to the
    benchmark source, assuring completeness, and
    managing data quality.
  • Common data elements must have a single
    documented definition and be supported by
    documented business rules.

47
10 Guidelines of Data Management
  1. Metadata must be readily available to all
    authorized users of the data
  2. Industry standards must be consulted and reviewed
    before a new data element is created

48
10 Guidelines of Data Management
  • Data must be readily available to all appropriate
    users and protected against inappropriate access
    and use
  • Data users will use agreed upon common tools and
    platforms throughout the enterprise

49
Questions and Commentary
50
  • The Actuary and The Data Manager
  • Custodians of Enterprise Data Assets
  • CAS Ratemaking Seminar
  • March 2006

51
Agenda
  • Data Management Best Practices
  • 10 Guidelines of Data Management
  • Timelines
  • The Shifting Focus of Insurance Information
  • Information Quality and Assurance
  • Data Quality
  • Data Transparency
  • ASOP 23
  • Regulatory Requirements and the Role of Data
  • IDMA Data Management Value Propositions
  • Questions and Commentary
  • Organizations That Can Help

52
Panelists
  • Art Cadorine, ACAS, ISO
  • Bruce Tollefson, MN WC Rating Bureau
  • Christine Siekierski, WI Comp. Rating Bureau
  • Pete Marotta, AIDM, ISO

53
Data Management Best Practices
54
Data Management Best Practices
  • Data Stewardship establish a corporate data
    steward
  • Data and Data Quality Standards foster the
    development and adoption of data and data quality
    standards
  • Organizational Issues structure organization to
    promote good data management and data quality

55
Data Management Best Practices
  • Operations and Processes establish processes to
    maximize data quality and utility
  • Data Element Development and Specification
    design and maintain data, systems and reporting
    mechanisms in a manner that promotes good data
    management and data quality

56
10 Guidelines of Data Management
57
10 Guidelines of Data Management
  1. Data must be fit for the intended business use.
  2. Data should be obtained from the authoritative
    and appropriate source.

58
10 Guidelines of Data Management
  1. Data should be input only once and edited,
    validated, and corrected at the point of entry.
  2. Data should be captured and stored as
    informational values, not codes.

59
10 Guidelines of Data Management
  • Data should have a different steward responsible
    for defining the data, identifying and enforcing
    the business rules, reconciling the data to the
    benchmark source, assuring completeness, and
    managing data quality.
  • Common data elements must have a single
    documented definition and be supported by
    documented business rules.

60
10 Guidelines of Data Management
  1. Metadata must be readily available to all
    authorized users of the data
  2. Industry standards must be consulted and reviewed
    before a new data element is created

61
10 Guidelines of Data Management
  • Data must be readily available to all appropriate
    users and protected against inappropriate access
    and use
  • Data users will use agreed upon common tools and
    platforms throughout the enterprise

62
Timelines
63
The Past
  • Regulators/Business
  • (underwriters, actuaries, etc.)
  • Coverage Forms
  • (changes in forms and coverages)
  • Data Standards

64
Today
  • Technology Financial
    3rd Parties
  • (Internet, XML, (SOX, GLB, HIPAA, etc.)
    (Credit, DMV,
  • Black Boxes, RFIDs) etc.)
  • Data Standards

65
Tomorrow
  • Business Needs Business, regulatory, technology,
    etc.
  • (Profitability, Loss Control, Consumer
    Protection, Solvency, Privacy, Confidentiality,
    etc.)
  • Data Needs
  • Data Standards

66
The Shifting Focus of Insurance Information
67
Regulation
  • From Annual Statement to Market Conduct Annual
    Statements to NAIC Databases
  • Financial Data Repository (FDR)
  • National Insurance Producer Registry (NIPR)
  • Fingerprint Repository
  • On-Line Fraud Reporting System (OFRS)
  • Uninsured Motorist Identification Database
  • From financial data used to monitor solvency to
    financial, statistical data and analytics used to
    monitor solvency
  • From US driven regulations to EU and
    internationally driven regulations

68
Pricing
  • From traditional underwriting and pricing - using
    traditional data sources (risk data, industry
    statistics) to predictive modeling and analytics
    - using non-traditional data sources
    (demographics, GIS, 3rd party data, non-insurance
    data, non-verifiable data sources, etc.)
  • From a stable risk control and claims environment
    to a dynamic environment of new hazards - mold,
    terrorism, computer viruses, cyber terrorism,
    etc.
  • From risk-specific risk management to enterprise
    risk management

69
Data
  • From a data quality focus on validity, timeliness
    and accuracy to a data quality focus on
    transparency, completeness and accuracy 
  • From data available on a periodic basis to data
    available real-time
  • From statistical plans and edit packages to data
    dictionaries, schema and implementation guides
  • From sharing data for the common good to
    protecting data for the common good

70
Technology
  • From centralized highly controlled technologies
    to ASPs, the, Internet, XML, LANs, PCs, etc.
  • From IT as an business enabler to IT as a
    business driver
  • From mainframes to LANS and high powered PCs

71
  • Information Quality and Assurance

72
Data Quality
  • Data Quality is defined as the process for
    ensuring that data are fit for the use intended
    by measuring and improving its
  • key characteristics.

73
Managing Data Data Quality Guiding Principles
  • Data is a corporate asset
  • Data should be fit for the use intended
  • Data should flow from underlying business
    processes
  • Data quality should be managed as close to the
    source as possible
  • Best Practices are ever evolving

74
Data Quality Key Characteristics
  • Fit for its intended use
  • Accuracy
  • Validity
  • Timeliness and Other Timing Criteria
  • Completeness or Entirety
  • Reasonability
  • Absence of Redundancy
  • Accessibility, Availability and Cohesiveness
  • Privacy

75
Data Transparency Key Characteristics
  • Data defined and documented
  • Utility across time and source
  • Supports internal controls.
  • Clear, standardized, comparable information
  • Facilitates assessment of the health of the
    systems using the data
  • Promotes better controls
  • Improves operational and financial performance
  • Documents data elements, data element
    transformations and processes

76
ASOP 23 Data Quality
  • Purpose is to give guidance in
  • Selecting data
  • Reviewing data for appropriateness,
    reasonableness, and comprehensiveness
  • Making appropriate disclosures
  • Does not recommend that actuaries audit data

77
ASAP 23 Data QualityConsiderations in
Selection of Data
  • Appropriateness for intended purpose
  • Reasonableness, comprehensiveness, and
    consistency
  • Limitations of or modifications to data
  • Cost and feasibility of alternatives
  • Sampling methods

78
ASOP 23 Data QualityDefinition of Data
  • Numerical, census, or class information
  • Not actuarial assumptions
  • Not computer software
  • Definition of comprehensive
  • Definition of appropriate

79
ASAP 23 Data QualityOther Considerations
  • Imperfect Data
  • Reliance on Others
  • Documentation/Disclosure

80
Regulatory Requirements and the Role of Data
81
Why Regulation?
  • Its all about consumer protection
  • Solvency
  • Ensuring that companies are financially sound and
    able to pay claims
  • Market Conduct
  • Point of sale and service
  • Ensuring that the agent is licensed and
    appointed, the customer understands the coverage,
    claims are handled effectively (i.e. injured
    workers are paid on a timely basis)
  • Rate Adequacy

82
The Impact of Standards on the US Regulatory
Landscape
  • US Office of Management Budget Circular A-119
  • Government agencies should recognize the
    positive contribution of standards development
    and related activities. When properly conducted,
    standards development can increase productivity
    and efficiency in Government and industry, expand
    opportunities for international trade, conserve
    resources...

83
The Impact of Standards on the US Regulatory
Landscape
  • Government should utilize standards built by the
    industry and implemented within company
    operations
  • Cuts expenses
  • Ensures STP and quality

84
Industry, State and Federal Requirements
State
Industry
DOIs WC Commissions DMVs DOTs
Rating Bureaus Stat Agencies Residual Market Plans
Insurance Company Data Collection Data
Storage Data Sharing
Federal
SEC Treasury Homeland Security HHS
85
Regulatory Issues Data
  • Reporting Requirements
  • Financial
  • DMV
  • Workers Compensation
  • Statistical
  • Market Conduct
  • Operations
  • Electronic Applications
  • UETA
  • eSIGN
  • Privacy (HIPAA, GLB)

86
Current Successes in Standardizing Data for
Regulatory Purposes
  • Workers Compensation Insurance
  • Boards and bureaus (statistical reporting)
  • State WC Commissions (proof of coverage and
    monitoring claims)
  • Producer licensing and appointments
  • Producer to carrier information needs
  • State issues such as National Producer Number
  • State application compliance and filings
  • Interstate Compact

87
Accountability, Quality, Transparency Regulations
  • Sarbanes Oxley
  • US law ensuring accuracy of financial data with
    accountability of company executives
  • Solvency II
  • EU proposal similar to SOX addressing financial
    reporting and public disclosure
  • Reinsurance Transparency
  • International Association of Insurance
    Supervisors working group to explore solvency of
    reinsurers worldwide. Differences in data
    definitions are presenting a challenge

88
SOX and the Data Manager
  • The importance and visibility of Data Management
    among senior executives and regulators has
    increased.
  • The importance of Data as an important corporate
    resources has increased.
  • The contribution of Data Management to proper
    data and process control is more widely
    recognized.
  • The demand for data quality has increased.

89
IDMA Data Management Value Propositions
90
Data Management Value
  • Product Development and Revenue Generation
    Maintains data management processes and tools
    that promote speed-to-market of new products and
    services
  • Enhances customer acquisition, retention, service
    and satisfaction through good quality customer
    data
  • Maintains the data management processes and tools
    that support the pricing of insurance products

91
Data Management Value
  • Provides an enterprise communication channel for
    new products, services, programs and technologies
    that allows all facets of the organization to
    evaluate the impact of these changes
  • Specifies data needed to support new products and
    ensures that these data are assessable in a
    timely manner

92
Data Management Value
  • Efficiency and Utility
  • Reduces the cost of data collection, storage, and
    dispersal
  • Manages data content and definition across the
    organization
  • Advocates industry and enterprise data standards
    which insure consistent definitions and values
    for enterprise data elements
  • Ensures accurate booking of premium and loss
    transactions
  • Ensures the quality of the enterprise data
  • Promotes the interoperability of data and
    databases

93
Data Management Value
  • Strategic Planning
  • Participates in the development of an enterprise
    data vision and strategy
  • Monitors external activities and reporting on
    potential impact on enterprise
  • Compliance
  • Protects the privacy and confidentiality of the
    enterprise data
  • Ensures compliance with data reporting laws and
    regulations,
  • Represents the organization to regulators,
    workers compensation administrators, advisory
    organizations, research organizations, standards
    organizations and other industry groups

94
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