Integration of Artificial Intelligence and Database Management System: An Inventive Approach for Intelligent Databases

The integration of AI and DBMS technologies promises to play a significant role in shaping the future of computing. AI/DB integration is crucial not only for next generation computing but also for the continued development of DBMS technology. Both DBMS and AI systems represent well established technologies, research and development in the area of AI/DB integration is comparatively new. The motivations driving the integration of these two technologies include the need for (a) access to large amounts of shared data for knowledge processing, (b) efficient management of data as well as knowledge, and (c) intelligent processing of data. In addition to these motivations, the design of Intelligent Database Interface (IDI) was also motivated by the desire to preserve the substantial investment represented by most existing databases. Several general approaches to AI/DB integration and various developments in the field of intelligent databases have been investigated and reported in the paper.

[1]  Chin-Liang Chang DEDUCE 2: Further Investigations of Deduction in Relational Data Bases , 1977, Logic and Data Bases.

[2]  Mara Abel,et al.  PetroGrapher: managing petrographic data and knowledge using an intelligent database application , 2004, Expert Syst. Appl..

[3]  Giuseppe Psaila,et al.  Toward XML-based knowledge discovery systems , 2002, 2002 IEEE International Conference on Data Mining, 2002. Proceedings..

[4]  Hendrik Decker,et al.  Getting Rid of Straitjackets for Flexible Integrity Checking , 2007, 18th International Workshop on Database and Expert Systems Applications (DEXA 2007).

[5]  Jorge B. Bocca EDUCE: A Marriage of Convenience: Prolog and a Relational DBMS , 1986, SLP.

[6]  Christopher D. S. Moss,et al.  Intelligent databases , 1987 .

[7]  Rachel Pottinger,et al.  Schema Repository for Database Schema Evolution , 2006, 17th International Workshop on Database and Expert Systems Applications (DEXA'06).

[8]  S. Oke Application of Decision Tree as a Data Mining Tool in a Manufacturing System , 2009, Database Technologies: Concepts, Methodologies, Tools, and Applications.

[9]  S. Chittayasothorn,et al.  A frame-based object relational expert database system , 2007, AFRICON 2007.

[10]  Michael L. Brodie Future Intelligent Information Systems: AI and Database Technologies Working Together , 1988, AAAI.

[11]  Daling Wang,et al.  CD-Trees: An Efficient Index Structure for Outlier Detection , 2004, WAIM.

[12]  Adnan Yazici,et al.  A fuzzy Petri net model for intelligent databases , 2007, Data Knowl. Eng..

[13]  Hassina Bounif,et al.  Predictive Approach for Database Schema Evolution , 2006 .

[14]  Georg Gottlob,et al.  Interfacing Relational Databases and Prolog Efficiently , 1986, Expert Database Conf..

[15]  Rudi Studer,et al.  Intelligent Information Processing , 2002, IFIP — The International Federation for Information Processing.

[16]  Ioannis N. Kouris,et al.  An Improved Algorithm for Mining Association Rules Using Multiple Support Values , 2003, FLAIRS Conference.

[17]  E. F. Codd,et al.  A relational model of data for large shared data banks , 1970, CACM.

[18]  J. Gerard Wolff,et al.  Towards an intelligent database system founded on the SP theory of computing and cognition , 2003, Data Knowl. Eng..

[19]  Anirban Mondal,et al.  2nd International Workshop on Data Management in Global Data Repositories , 2006 .

[20]  Hendrik Decker,et al.  Integrity Checking and Maintenance in Relational and Deductive Database and Beyond , 2007 .

[21]  Jack Minker,et al.  Interfacing Predicate Logic Languages and Relational Databases , 1982, ICLP.

[22]  Cristina P. Santos,et al.  Querying petrographic descriptions in an intelligent database system , 2002, Proceedings 2002 IEEE International Conference on Artificial Intelligence Systems (ICAIS 2002).

[23]  Rudi Studer,et al.  Erratum to: Intelligent Information Processing , 2002 .

[24]  Elisa Bertino,et al.  Intelligent Database Systems , 2000 .

[25]  Nelson Mendonça Mattos An Approach to Knowledge Base Management , 1991, Lecture Notes in Computer Science.

[26]  Tzung-Pei Hong,et al.  A new incremental data mining algorithm using pre-large itemsets , 2001, Intell. Data Anal..

[27]  Antoni Olivé Integrity Constraints Checking In Deductive Databases , 1991, VLDB.

[28]  Zongmin Ma,et al.  Intelligent Databases: Technologies and Applications , 2006 .

[29]  J. Gerard Wolff,et al.  Medical diagnosis as pattern recognition in a framework of information compression by multiple alignment, unification and search , 2006, Decis. Support Syst..

[30]  Henning Christiansen,et al.  Integrity Checking and Maintenance with Active Rules in XML Databases , 2007, 24th British National Conference on Databases (BNCOD'07).

[31]  Mark Chignell,et al.  Intelligent database tools & applications , 1993 .

[32]  Adrian Walker,et al.  PROSQL: A Prolog Programming Interface with SQL/DS , 1984, Expert Database Workshop.

[33]  Zongmin Ma,et al.  Fuzzy XML data modeling with the UML and relational data models , 2007, Data Knowl. Eng..

[34]  Gian Piero Zarri Ontologies and reasoning techniques for (legal) intelligent information retrieval systems , 2007, Artificial Intelligence and Law.

[35]  Ioannis N. Kouris,et al.  Efficient automatic discovery of 'hot' itemsets , 2004, Inf. Process. Lett..

[36]  Noriaki Izumi,et al.  Context-Awareness of Content Delivery Service Based on Location Estimate with an Active RFID system , 2007 .

[37]  Timothy W. Finin,et al.  The Intelligent Database Interface: Integrating AI and Database Systems , 1990, AAAI.

[38]  Cláudio de Souza Baptista,et al.  Towards a logical multidimensional model for spatial data warehousing and OLAP , 2006, DOLAP '06.