Case-Based Reasoning (CBR) has been employed as a problem-solving technique to solve numerous real-world applications. At the core of a successful CBR system is a high-quality case-base. Generating a quality case-base with minimal human intervention is a significant challenge which has not been given considerable attention in the past. In this paper, we propose a methodology for automatic generation of a quality case-base using genetic algorithm (GA). GA has been effectively used to evaluate quality of cases using predefined criteria as part of the fitness function. The performance and efficiency of the proposed approach has been evaluated and presented on the examination scheduling problem.
In the past few years, due to the increased usage of internet, smartphones, sensors and digital cameras, more than a million images are generated and uploaded daily on social media platforms. The massive generation of such multimedia contents has resulted in an exponential growth in the stored and shared data. Certain ever-growing image repositories, consisting of medical images, satellites images, surveillance footages, military reconnaissance, fingerprints and scientific data etc., has increased the motivation for developing robust and efficient search methods for image retrieval as per user requirements. Hence, it is need of the hour to search and retrieve relevant images efficiently and with good accuracy. The current research focuses on Content-based Image Retrieval (CBIR) and explores well-known transfer learning-based classifiers such as VGG16, VGG19, EfficientNetB0, ResNet50 and their variants. These deep transfer leaners are trained on three benchmark image datasets i.e., CIFAR-10, CIFAR-100 and CINIC-10 containing 10, 100, and 10 classes respectively. In total 16 customized models are evaluated on these benchmark datasets and 96% accuracy is achieved for CIFAR-10 while 83% accuracy is achieved for CIFAR-100.
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