3 research outputs found

    Applications of fuzzy counterpropagation neural networks to non-linear function approximation and background noise elimination

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    An adaptive filter which can operate in an unknown environment by performing a learning mechanism that is suitable for the speech enhancement process. This research develops a novel ANN model which incorporates the fuzzy set approach and which can perform a non-linear function approximation. The model is used as the basic structure of an adaptive filter. The learning capability of ANN is expected to be able to reduce the development time and cost of the designing adaptive filters based on fuzzy set approach. A combination of both techniques may result in a learnable system that can tackle the vagueness problem of a changing environment where the adaptive filter operates. This proposed model is called Fuzzy Counterpropagation Network (Fuzzy CPN). It has fast learning capability and self-growing structure. This model is applied to non-linear function approximation, chaotic time series prediction and background noise elimination

    Mesin Pencari Berbasiskan Semantik Untuk Bahasa Indonesia

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    Makin meningkatnya jumlah informasi yang terdapat di Internet menjadi salah satu alasan yang kuat untuk mengembangkan mesin pencari yang handal. Google merupakan salah satu mesin pencari yang handal namun masih memiliki keterbatasan khususnya dalam melakukan analisa kandungan dokumen. Tujuan dari penelitian ini adalah untuk mengembangkan mesin pencari yang dapat menganalisa kandungan teks bahasa Indonesia dengan menggunakan metodologi studi literatur dan penelitian lapangan. Berdasarkan hasil uji coba, penggunaan analisa semantik mempermudah pengguna dalam mencari artikel yang dibutuhkan
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