DCH-23.5: Statistical Disclosure Control
Mechanisms exist to manipulate numerical data, contingency tables and statistical findings so that no person or organization is identifiable in the results of the analysis.
Control Question: Does the organization manipulate numerical data, contingency tables and statistical findings so that no person or organization is identifiable in the results of the analysis?
General (2)
| Framework | Mapping Values |
|---|---|
| NIST 800-53 R5 (source) | SI-19(5) |
| NIST 800-53 R5 (NOC) (source) | SI-19(5) |
Capability Maturity Model
Level 0 — Not Performed
There is no evidence of a capability to manipulate numerical data, contingency tables and statistical findings so that no pers on or organization is identifiable in the results of the analysis.
Level 1 — Performed Informally
C|P-CMM1 is N/A, since a structured process is required to manipulate numerical data, contingency tables and statistical findings so that no pers on or organization is identifiable in the results of the analysis.
Level 2 — Planned & Tracked
C|P-CMM2 is N/A, since a well-defined process is required to manipulate numerical data, contingency tables and statistical findings so that no person or organization is identifiable in the results of the analysis.
Level 3 — Well Defined
Data Classification & Handling (DCH) efforts are standardized across the organization and centrally managed, where technically feasible, to ensure consistency. CMM Level 3 control maturity would reasonably expect all, or at least most, the following criteria to exist: o Are expected to take the initiative to work with Data Protection Officers (DPOs) to ensure applicable statutory, regulatory and contractual obligations are properly addressed, including the storage, transmission and processing of sensitive/regulated data. o Maintain decentralized inventory logs of all sensitive/regulated media and update sensitive/regulated media inventories at least annually. o Create and maintain Data Flow Diagrams (DFDs) and network diagrams. o Document where sensitive/regulated data is stored, transmitted and processed in order to document data repositories and data flows. o Identify data classification types to ensure adequate cybersecurity and data protection controls are in place to protect organizational information and individual data privacy. o Identify and document the location of information on which the information resides. o Restrict and govern the transfer of data to third-countries or international organizations. o Limit the disclosure of data to authorized parties. o Mark media in accordance with data protection requirements so that personnel are alerted to distribution limitations, handling caveats and applicable security requirements. o Prohibit “rogue instances” where unapproved third parties are engaged to store, process or transmit data, including budget reviews and firewall connection authorizations. o Protect and control digital and non-digital media during transport outside of controlled areas using appropriate security measures. o Govern the use of personal devices (e.g., Bring Your Own Device (BYOD)) as part of acceptable and unacceptable behaviors. o Dictate requirements for minimizing data collection to what is necessary for business purposes. o Dictate requirements for limiting the use of sensitive/regulated data in testing, training and research.
- A Governance, Risk & Compliance (GRC) function, or similar function, assists users in making information sharing decisions to ensure data is appropriately protected, regardless of where or how it is stored, processed and/ or transmitted.
- A data classification process exists to identify categories of data and specific protection requirements.
- A data retention process exists to protect archived data in accordance with applicable statutory, regulatory and contractual obligations.
- Data/process owners:
- A Data Protection Impact Assessment (DPIA) is used to help ensure the protection of sensitive/regulated data processed, stored or transmitted on internal or external systems, in order to implement cybersecurity and data protection controls in accordance with applicable statutory, regulatory and contractual obligations.
- Human Resources (HR), documents formal “rules of behavior” as an employment requirement that stipulates acceptable and unacceptable practices pertaining to sensitive/regulated data handling.
- Data Loss Prevention (DLP), or similar content filtering capabilities, blocks users from performing ad hoc file transfers through unapproved file transfer services (e.g., Box, Dropbox, Google Drive, etc.).
- Mobile Device Management (MDM) software is used to restrict and protect the data that resides on mobile devices.
- Administrative processes and technologies:
Level 4 — Quantitatively Controlled
Data Classification & Handling (DCH) efforts are metrics driven and provide sufficient management insight (based on a quantitative understanding of process capabilities) to predict optimal performance, ensure continued operations and identify areas for improvement. In addition to CMM Level 3 criteria, CMM Level 4 control maturity would reasonably expect all, or at least most, the following criteria to exist:
- Metrics reporting includes quantitative analysis of Key Performance Indicators (KPIs).
- Metrics reporting includes quantitative analysis of Key Risk Indicators (KRIs).
- Scope of metrics, KPIs and KRIs covers organization-wide cybersecurity and data protection controls, including functions performed by third-parties.
- Organizational leadership maintains a formal process to objectively review and respond to metrics, KPIs and KRIs (e.g., monthly or quarterly review).
- Based on metrics analysis, process improvement recommendations are submitted for review and are handled in accordance with change control processes.
- Both business and technical stakeholders are involved in reviewing and approving proposed changes.
Level 5 — Continuously Improving
See C|P-CMM4. There are no defined C|P-CMM5 criteria, since it is reasonable to assume a continuously-improving process is not necessary to manipulate numerical data, contingency tables and statistical findings so that no pers on or organization is identifiable in the results of the analysis.
Assessment Objectives
- DCH-23.5_A01 numerical data is manipulated so that no individual or organization is identifiable in the results of the analysis.
- DCH-23.5_A02 contingency tables are manipulated so that no individual or organization is identifiable in the results of the analysis.
- DCH-23.5_A03 statistical findings are manipulated so that no individual or organization is identifiable in the results of the analysis.
Technology Recommendations
Micro/Small
- Data classification program
- Data privacy program
- Product / project management
Small
- Data classification program
- Data privacy program
- Product / project management
Medium
- Data classification program
- Data privacy program
- Product / project management
Large
- Data classification program
- Data privacy program
- Product / project management
Enterprise
- Data classification program
- Data privacy program
- Product / project management