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With the rapid development of technology, e-learning pretends to be more useful and popular in education. E-learning can be used in or out of the classroom. Courseware is becoming a well known form of e-learning in present days. It helps to convert the conventional process of learning and teaching towards e-learning. Different educational organizations are providing their resources to all through...
Considering the rapid expansion of the usage of mobile communication devices in Bangladesh, development of technology and reduction in cost, well designed mobile based e-learning framework is expected to contribute significantly in educational development and thereby having a long term effect on poverty alleviation. This paper shows an M-Learning framework for Bangladesh.
Conventional positive association rules are the patterns that occur frequently together. These patterns represent what decisions are routinely made based on a set of facts. Irregular association rules are the patterns that represent what decisions are rarely made based on the same set of facts. Many domains like Healthcare, Banking etc need the irregular rule to improve their system. In this paper,...
Several studies show that background knowledge of a domain can improve the results of clustering algorithms. In this paper, we illustrate how to use the background knowledge of medical domain in clustering process to predict the likelihood of diseases. To find the likelihood of diseases, clustering has to be done based on anticipated likelihood attributes with core attributes of disease in data point...
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