3 research outputs found

    A Survey On Medical Digital Imaging Of Endoscopic Gastritis.

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    This paper focuses on researches related to medical digital imaging of endoscopic gastritis

    Master of Science

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    thesisMultiple Instance Learning (MIL) is a type of supervised learning with missing data. Here, each example (a.k.a. bag) has one or more instances. In the training set, we have only labels at bag level. The task is to label both bags and instances from the test set. In most practical MIL problems, there is a relationship between the instances of a bag. Capturing this relationship may help learn the underlying concept better. We present an algorithm that uses the structure of bags along with the features of instances. The key idea is to allow a structured support vector machine (SVM) to "guess" at the true underlying structure, so long as it is consistent with the bag labels. This idea is formalized and a new cutting plane algorithm is proposed for optimization. To verify this idea, we implemented our algorithm for a particular kind of structure - hidden markov models. We performed experiments on three datasets and found this algorithm to work better than the existing algorithms in MIL. We present the details of these experiments and the effects of varying different hyperparameters in detail. The key contribution from our work is a very simple loss function with only one hyperparameter that needs to be tuned using a small portion of the training set. The thesis of this work is that it is possible and desirable to exploit the structural relationship between instances in a bag, even though that structure is not observed at training time (i.e., correct labels for all the instances are unknown). Our work opens a new direction to solving the MIL problem. We suggest a few ideas to further our work in this direction

    Computational models and approaches for lung cancer diagnosis

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    The success of treatment of patients with cancer depends on establishing an accurate diagnosis. To this end, the aim of this study is to developed novel lung cancer diagnostic models. New algorithms are proposed to analyse the biological data and extract knowledge that assists in achieving accurate diagnosis results
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