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Titlebook: Mathematical Analysis and Computing; ICMAC 2019, Kalavak R. N. Mohapatra,S. Yugesh,C. Kalaivani Conference proceedings 2021 The Editor(s)

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A New Class of Incomplete Generalized Tri Lucas Polynomials,A new class of polynomials, namely, incomplete .(.)-. tri Lucas polynomials, is defined. Some identities involving these new polynomials are proved. A relation between incomplete .(.)-. tribonacci polynomials and incomplete .(.)-. tri Lucas polynomials is obtained. Some identities involving derivatives of these polynomials are also obtained.
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,A Theorem on Coupled Fixed Point and It’s Application,In this paper, we define a new class of mappings and prove a common coupled fixed point theorem in the context of complex valued metric spaces; we give an application to show the significance of theory in solving the system of fractional differential equation with nonlocal multi-point integral boundary condition.
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R. N. Mohapatra,S. Yugesh,C. KalaivaniDiscusses recent advances in areas of mathematical analysis, soft computing, approximation and optimization.Includes original, cutting-edge research articles by expert researchers from around the worl
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https://doi.org/10.1007/978-981-33-4646-8real and complex analysis; harmonic analysis; fixed point theory; functional analysis; dynamical systems
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es a challenge which prevents deep learning models from obtaining the results they have achieved most especially in the field of medical imaging. Recently, self-training with deep learning has become a powerful approach to leverage labelled training and unlabelled data. However, a challenge of gener
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B. N. Prasad Rao,M. Rangammaogress of online social networks, how to use the additional social information for recommendation has been intensively investigated. In this article, we devise a graph embedding technology to incorporate the customers’ social network side information into conventional matrix factorization model. Mor
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