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Data and Applications Security Developments and Directions Dr. Bhavani Thuraisingham The University of Texas at Dallas Lecture #17 Data Warehousing, Data Mining and Security March 23, 2009
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Outline l Background on Data Warehousing l Security Issues for Data Warehousing l Data Mining and Security
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What is a Data Warehouse? l A Data Warehouse is a: - Subject-oriented - Integrated - Nonvolatile - Time variant - Collection of data in support of management’s decisions - From: Building the Data Warehouse by W. H. Inmon, John Wiley and Sons l Integration of heterogeneous data sources into a repository l Summary reports, aggregate functions, etc.
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Example Data Warehouse Oracle DBMS for Employees Sybase DBMS for Projects Informix DBMS for Medical Data Warehouse: Data correlating Employees With Medical Benefits and Projects Could be any DBMS; Usually based on the relational data model Users Query the Warehouse
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Some Data Warehousing Technologies l Heterogeneous Database Integration l Statistical Databases l Data Modeling l Metadata l Access Methods and Indexing l Language Interface l Database Administration l Parallel Database Management
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Data Warehouse Design l Appropriate Data Model is key to designing the Warehouse l Higher Level Model in stages - Stage 1: Corporate data model - Stage 2: Enterprise data model - Stage 3: Warehouse data model l Middle-level data model - A model for possibly for each subject area in the higher level model l Physical data model - Include features such as keys in the middle-level model l Need to determine appropriate levels of granularity of data in order to build a good data warehouse
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Distributing the Data Warehouse l Issues similar to distributed database systems Distributed Warehouse Central Bank Branch ABranch B Central Warehouse Central Bank Branch A Branch B Central Warehouse Branch B Warehouse Branch A Warehouse Non-distributed Warehouse
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Multidimensional Data Model
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Indexing for Data Warehousing l Bit-Maps l Multi-level indexing l Storing parts or all of the index files in main memory l Dynamic indexing
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Metadata Mappings
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Data Warehousing and Security l Security for integrating the heterogeneous data sources into the repository - e.g., Heterogeneity Database System Security, Statistical Database Security l Security for maintaining the warehouse - Query, Updates, Auditing, Administration, Metadata l Multilevel Security - Multilevel Data Models, Trusted Components
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Example Secure Data Warehouse
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Secure Data Warehouse Technologies
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Security for Integrating Heterogeneous Data Sources l Integrating multiple security policies into a single policy for the warehouse - Apply techniques for federated database security? - Need to transform the access control rules l Security impact on schema integration and metadata - Maintaining transformations and mappings l Statistical database security - Inference and aggregation - e.g., Average salary in the warehouse could be unclassified while the individual salaries in the databases could be classified l Administration and auditing
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Security Policy for the Warehouse Federated policies become warehouse policies? Component Policy for Component A Component Policy for Component B Component Policy for Component C Generic Policy for Component A Generic Policy for Component B Generic policy for Component C Export Policy for Component A Export Policy for Component B Export Policy for Component C Federated Policy for Federation F1 Federated Policy for Federation F2 Export Policy for Component B Security Policy Integration and Transformation
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Security Policy for the Warehouse - II
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Secure Data Warehouse Model
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Methodology for Developing a Secure Data Warehouse
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Multi-Tier Architecture Tier 1:Secure Data Sources Tier 2: Builds on Tier 1 Tier N: Data Warehouse Builds on Tier N-1 * * Tier 1:Secure Data Sources Tier 2: Builds on Tier 1 Tier N: Secure Data Warehouse Builds on Tier N-1 * * Each layer builds on the Previous Layer Schemas/Metadata/Policies
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Administration l Roles of Database Administrators, Warehouse Administrators, Database System Security officers, and Warehouse System Security Officers? l When databases are updated, can trigger mechanism be used to automatically update the warehouse? - i.e., Will the individual database administrators permit such mechanism?
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Auditing l Should the Warehouse be audited? - Advantages l Keep up-to-date information on access to the warehouse - Disadvantages l May need to keep unnecessary data in the warehouse l May need a lower level granularity of data l May cause changes to the timing of data entry to the warehouse as well as backup and recovery restrictions l Need to determine the relationships between auditing the warehouse and auditing the databases
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Multilevel Security l Multilevel data models - Extensions to the data warehouse model to support classification levels l Trusted Components - How much of the warehouse should be trusted? - Should the transformations be trusted? l Covert channels, inference problem
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Inference Controller
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Status and Directions l Commercial data warehouse vendors are incorporating role- based security (e.g., Oracle) l Many topics need further investigation - Building a secure data warehouse - Policy integration - Secure data model - Inference control
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Data Mining for Counter-terrorism
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Data Mining Needs for Counterterrorism: Non-real-time Data Mining l Gather data from multiple sources - Information on terrorist attacks: who, what, where, when, how - Personal and business data: place of birth, ethnic origin, religion, education, work history, finances, criminal record, relatives, friends and associates, travel history,... - Unstructured data: newspaper articles, video clips, speeches, emails, phone records,... l Integrate the data, build warehouses and federations l Develop profiles of terrorists, activities/threats l Mine the data to extract patterns of potential terrorists and predict future activities and targets l Find the “needle in the haystack” - suspicious needles? l Data integrity is important l Techniques have to SCALE
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Data Mining for Non Real-time Threats Integrate data sources Clean/ modify data sources Build Profiles of Terrorists and Activities Examine results/ Prune results Report final results Data sources with information about terrorists and terrorist activities Mine the data
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Data Mining Needs for Counterterrorism: Real-time Data Mining l Nature of data - Data arriving from sensors and other devices l Continuous data streams - Breaking news, video releases, satellite images - Some critical data may also reside in caches l Rapidly sift through the data and discard unwanted data for later use and analysis (non-real-time data mining) l Data mining techniques need to meet timing constraints l Quality of service (QoS) tradeoffs among timeliness, precision and accuracy l Presentation of results, visualization, real-time alerts and triggers
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Data Mining for Real-time Threats Integrate data sources in real-time Build real-time models Examine Results in Real-time Report final results Data sources with information about terrorists and terrorist activities Mine the data Rapidly sift through data and discard irrelevant data
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Data Mining Outcomes and Techniques for Counter-terrorism
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Example Success Story - COPLINK l COPLINK developed at University of Arizona - Research transferred to an operational system currently in use by Law Enforcement Agencies l What does COPLINK do? - Provides integrated system for law enforcement; integrating law enforcement databases - If a crime occurs in one state, this information is linked to similar cases in other states - It has been stated that the sniper shooting case may have been solved earlier if COPLINK had been operational at that time
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Where are we now? l We have some tools for - building data warehouses from structured data - integrating structured heterogeneous databases - mining structured data - forming some links and associations - information retrieval tools - image processing and analysis - pattern recognition - video information processing - visualizing data - managing metadata
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What are our challenges? l Do the tools scale for large heterogeneous databases and petabyte sized databases? l Building models in real-time; need training data l Extracting metadata from unstructured data l Mining unstructured data l Extracting useful patterns from knowledge-directed data mining l Rapidly forming links and associations; get the big picture for real- time data mining l Detecting/preventing cyber attacks l Mining the web l Evaluating data mining algorithms l Conducting risks analysis / economic impact l Building testbeds
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IN SUMMARY: l Data Mining is very useful to solve Security Problems - Data mining tools could be used to examine audit data and flag abnormal behavior - Much recent work in Intrusion detection (unit #18) l e.g., Neural networks to detect abnormal patterns - Tools are being examined to determine abnormal patterns for national security l Classification techniques, Link analysis - Fraud detection l Credit cards, calling cards, identity theft etc. BUT CONCERNS FOR PRIVACY
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