• Development Of An Information Retrieval System Using Tree-structured Clustering
    [FRSC Benue State]

  • REFRENCES -- [Total Page(s) 1]

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    • ABSRACT - [ Total Page(s): 1 ]Coming Soon ... Continue reading---

         

      APPENDIX A - [ Total Page(s): 2 ]REGISTRATION PAGE ... Continue reading---

         

      CHAPTER ONE - [ Total Page(s): 2 ]1.3    Justification for the StudyThis study provides a means of easy storage and retrieval of information of vehicles and their owners for the FRSC in Benue State. It eases the stress of searching through the entire directory when retrieving information on an existing record; it will ensure the provision of a clear statistics of vehicle owners in a particular local government in the state. The output of the study shall serve as a benchmark for the Federal Road Safety Corps on the ... Continue reading---

         

      CHAPTER TWO - [ Total Page(s): 4 ]2.3    Hierarchical Agglomerative ClusteringHierarchical Agglomerative Clustering (compare) is a similarity based bottom-up clustering technique in which at the beginning every term forms a cluster of its own. Then the algorithm iterates over the step that merges the two most similar clusters still available, until one arrives at a universal cluster that contains all the terms.In our experiments, we use three different strategies to calculate the similarity between clusters: com ... Continue reading---

         

      CHAPTER THREE - [ Total Page(s): 7 ]Quality improvement and cost reduction:platform.due to a central communicationv.        Use of Less Space for Record Storage: There will be elimination of much space used in storing records by introducing a computer storage media (disks) which can keep vast volume of information in a less space.vi.Speed Optimization:This will eliminate the problems of time wasting in registering records, checking from one line to the next as well as preparing a revenue report which is faster than using man ... Continue reading---

         

      CHAPTER FOUR - [ Total Page(s): 2 ]CHAPTER FOURRESULT AND IMPLEMENTATION4.1    IntroductionSystems design could be seen as the application of systems theory to product development. According to Wikipedia it is defined as the process of defining the architecture, components, modules, interfaces, and data for a system to satisfy specified requirements.4.2    System RequirementIn developing any system, there is need to specify some system requirements for minimum performance. However, with respect to this work the system requi ... Continue reading---

         

      CHAPTER FIVE - [ Total Page(s): 1 ]CHAPTER FIVESUMMARY, CONCLUSION AND RECOMMENDATION5.1    SUMMARYThis project work is aimed at providing a software model for grouping a set of related records in the Federal Road Safety Commission. The system has been designed to automate data for which vehicle owners are being registered. Consistency, reliability, fairness and quick turnaround time is ensured with the use of this system. Based on the model used in this software, further improvements can be made in order to include other feat ... Continue reading---