--Optical Character Recognition plays an important role in Digital Image Processing and Pattern Recognition. Even though ambient study had been performed on foreign languages like Chinese and Japanese, effort on Indian script is still immature. OCR in Malayalam language is more complex as it is enriched with largest number of characters among all Indian languages. The challenge of recognition of characters is even high in handwritten domain, due to the varying writing style of each individual. In this paper we propose a system for recognition of offline handwritten Malayalam vowels. The proposed method uses Chain code and Image Centroid for the purpose of extracting features and a two layer feed forward network with scaled conjugate gradient for classification.
With the rise of large-scale social networks, network mining has become an important sub-domain of data mining. Generating an efficient network representation is one important challenge in applying machine learning to network data. Recently, representation learning methods are widely used in various domains to generate low dimensional latent features from complex high dimensional data. A significant amount of research effort is made in the past few years to generate node representations from graph-structured data using representation learning methods. Here, we provide a detailed study of the latest advancements in the field of network representation learning (also called network embedding). We first discuss the basic concepts and models of network embedding. Further, we build a taxonomy of network embedding methods based on the type of networks and review the major research works that come under each category. We then cover the major datasets used in network embedding research and describe the major applications of network embedding with respect to various network mining tasks. Finally, we provide various directions for future work which enhance further research.
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