Abstract:
Government enacts rules & regulations. People are bound to follow those rules and regulations in
their everyday life. Human brains do the computation for generating conclusions to take decisions on
different circumstances applying those rules. A Human being does not need any external rule reasoner.
However, nowadays data is generated by different automated systems, and inserted, updated, deleted in
different database design formats. So, the decision-making becomes difficult by generating required
conclusions from large repositories of data having multiple formats. Therefore, artificial intelligence
in form of the Rule Based System can help to mitigate this problem by analyzing the conclusions from
the given facts. But, the existing Rule Based Systems processes the adverse events from only one data
sources at a single time and manually generates the facts. In this circumstance, the study proposes
an automated Rule Based System, which is capable of generating conclusions as output for the given
input queries. The study results in a database independent Rule Based method with dynamic predicate
generation & translation for analyzing the stored adverse events from multiple databases by applying
the predefined set of rules and regulations. The formal rules are generated using Defeasible Logic (DL)
to efficiently handle the logic-based implementation of the proposed methodology. In addition, the
proposed system includes SPINdle rule engine to generate required conclusions by loading the formal
rules that are generated using the DL. The resulting Rule Based Reporting System (RuleRS) integrates
simultaneous reasoning generation from the adverse events along with the existing Rule Based Systems
to get the argumentation from multiple relational databases. It also supports the easy integration of
additional data sources for generating assumptions. The output is sent to the I/O section for showing the
generated reports. The study also conducted an empirical evaluation for the single sources (i.e., FAERS
& ChildSafe database separately) and proposed RuleRS in reasoning simultaneously from multiple
sources of data (i.e., FAERS & ChildSafe database concurrently). The evaluation result is promising to
integrate the developed system with the existing RuleRS.
Description:
This thesis is submitted to the Department of Computer Science and Engineering, Khulna University of Engineering & Technology in partial fulfillment of the requirements for the degree of Master of Science in Engineering in Computer Science and Engineering, December 2018.
Cataloged from PDF Version of Thesis.
Includes bibliographical references (pages 52-56).