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Titlebook: Advances on Intelligent Informatics and Computing; Health Informatics, Faisal Saeed,Fathey Mohammed,Fuad Ghaleb Conference proceedings 202

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Kuheli Roy Barman,Srimanta Baishyach on how ships could be detected. Based on the result, Random Forest outperforms other models in terms of accuracy, scoring 97.20% for RGB and 98.90% for HSV, in comparison with Decision Tree and Naive Bayes those are scored 96.82% for RGB and 97.18% for HSV and 92.43 for RGB and 96.30% for HSV res
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Contemporary Trends in Semiconductor Devices The developed convolution neural network model (AlexNet CNN), the Random Forest (RF), and the support vector machine (SVM) techniques were contrasted in the species classifications. The highest degree of accuracy achieved was 98.2% by using the developed CNN model.
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,“To Make Mosques a Place for Women”,milarity measures to quantify the magnitude of concept drift in data streams, to improve the classification performance. Series of the experiments were conducted on the real-world datasets and the results demonstrated the efficiency of our proposed model.
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https://doi.org/10.1057/9780230609266timeframe data set. As the FAGM (1,.) model focuses on the prioritization of newer information, the proposed model will be able to forecast the . emissions better compared to the GM (1,.) model even with a small sample size data.
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Lyn Di Iorio Sandín,Richard Perezperformance are English text, DNA, and protein. In number of attempts evaluation, for DNA, English, and protein text datasets, the improvement of the hybrid algorithm was 18%, 50%, and 50% in comparison to Berry-Ravindran algorithm and it was 71%, 74%, and 70% in comparison to Raita algorithm. The r
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https://doi.org/10.1057/9780230609266uctures into another two categories, and 3) class-specific models to recognize the Arabic word from the given image. We introduce benchmark experimental results of our method against previous methods on the Arabic Handwriting Database for Text Recognition. Our method outperforms the baseline methods
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