4 research outputs found

    A Multi-Tier Knowledge Discovery Info-Structure Using Ensemble Techniques

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    Fokus utama kami ialah untuk mempelajari keujudan peraturan-peraturan yang ditemui daripada data-data tanpa catatan serta menjana keputusan yang lebih tepat dan muktamad. Our terminal focus is to learn rules instances that have been discovered from unannotated data and generate results with high accuracy

    A Multi-Tier Knowledge Discovery Info-Structure Using Ensemble Techniques [QA76.9.D35 S158 2007 f rb].

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    Fokus utama kami ialah untuk mempelajari keujudan peraturan-peraturan yang ditemui daripada data-data tanpa catatan serta menjana keputusan yang lebih tepat dan muktamad. Ini dilakukan melalui kaedah penghibridan yang merangkumi kedua-dua mekanisma berselia dan tidak berselia. Our terminal focus is to learn rules instances that have been discovered from unannotated data and generate results with high accuracy. This is done via a hybridized methodology which features both supervised and unsupervised techniques. Unannotated data without prior classification information could now be useful as our research has brought new insight to knowledge discovery and learning altogether

    Analysing visual field and diagnosing glaucoma progression using a hybrid of per location differences and artificial neural network ensembles

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    Visual function test results for glaucoma diagnosis is perceived to be subjective and problematic.In this paper, we aim to address the issues and problems associated with these current approaches.We present (a) a system architecture for analyzing visual field and diagnosing glaucoma progression; (b) a per location differences approach for analyzing visual field to obtain measurements of glaucoma progression; and (c) a neural network ensemble approach where several artifial neural network are jointly used to diagnose glaucoma progression.It is hoped that it would be possible to diagnose glaucoma progression with just one reading of a patient’s visual field

    Using ensemble and learning techniques towards extending the knowledge Discovery Pipeline.

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    The generation of a huge amount of data by an enterprise is of great concern to decision makers. This problem is compounded by the many environmental challenges that an enterprise faces in the effort to produce better products and services. It is highly crucial to know what goes on in its business transactions both internally and externally and to examine the heart of an enterprise's transactions, that is its data, and to transform it into actionable knowledge through the process of knowledge discovery
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