1. What are the contributions mentioned in the paper "Transfer learning for image classification with sparse prototype representations" ?
The authors develop a new method for transfer learning which exploits available unlabeled data and an arbitrary kernel function ; they form a representation based on kernel distances to a large set of unlabeled data points.. Related problems may share a significant number of relevant prototypes ; the authors find such a concise representation by performing a joint loss minimization over the training sets of related problems with a shared regularization penalty that minimizes the total number of prototypes involved in the approximation.. The authors conduct experiments on a news-topic prediction task where the goal is to predict whether an image belongs to a particular news topic.
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2. What future works have the authors mentioned in the paper "Transfer learning for image classification with sparse prototype representations" ?
Future work will investigate ways of combining both approaches in a single optimization scheme.
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