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Institution

Delhi Technological University

EducationNew Delhi, India
About: Delhi Technological University is a education organization based out in New Delhi, India. It is known for research contribution in the topics: Computer science & Control theory. The organization has 4427 authors who have published 6761 publications receiving 71035 citations. The organization is also known as: Delhi College of Engineering & DTU.


Papers
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Journal ArticleDOI
TL;DR: The proposed immunoelectrode was validated with conventional ELISA for the detection of CEA in serum samples of cancer patients and resulted in improved electrochemical performance and signal stability.

86 citations

Journal ArticleDOI
TL;DR: In this article, the effect of varying the type and amount of chain extender on the mechanical properties of spray-coated polyurea is reported, which results in optimal H-bonding.

86 citations

Journal ArticleDOI
TL;DR: In this article, the authors explore the major drivers and roadblocks for remanufacturing in India and identify the key economic, environmental and social drivers of re-manufacturing, which is becoming the paradigm expression for product recovery management by manufacturing "as good as new" products after its end of life or end of use.

86 citations

Journal ArticleDOI
TL;DR: An efficient green emitting Tb 3+ doped NaCaPO 4 (NCP) phosphor was synthesized by using conventional solidstate reaction for solid-state lighting applications as mentioned in this paper.

86 citations

Journal ArticleDOI
TL;DR: A hybrid model based on movie recommender system which utilizes type division method and classified the types of the movie according to users which results reduce computation complexity is proposed and may deliver high performance related to veracity, and deliver more predictable and personalized recommendations.
Abstract: In a web environment, one of the most evolving application is those with recommendation system (RS). It is a subset of information filtering systems wherein, information about certain products or services or a person are categorized and are recommended for the concerned individual. Most of the authors designed collaborative movie recommendation system by using K-NN and K-means but due to a huge increase in movies and users quantity, the neighbour selection is getting more problematic. We propose a hybrid model based on movie recommender system which utilizes type division method and classified the types of the movie according to users which results reduce computation complexity. K-Means provides initial parameters to particle swarm optimization (PSO) so as to improve its performance. PSO provides initial seed and optimizes fuzzy c-means (FCM), for soft clustering of data items (users), instead of strict clustering behaviour in K-Means. For proposed model, we first adopted type division method to reduce the dense multidimensional data space. We looked up for techniques, which could give better results than K-Means and found FCM as the solution. Genetic algorithm (GA) has the limitation of unguided mutation. Hence, we used PSO. In this article experiment performed on Movielens dataset illustrated that the proposed model may deliver high performance related to veracity, and deliver more predictable and personalized recommendations. When compared to already existing methods and having 0.78 mean absolute error (MAE), our result is 3.503 % better with 0.75 as the MAE, showed that our approach gives improved results.

86 citations


Authors

Showing all 4530 results

NameH-indexPapersCitations
Shaji Kumar111126553237
Lars A. Buchhave10540846100
Anil Kumar99212464825
Bansi D. Malhotra7537519419
C. P. Singh6833717448
Ramesh Chandra6662016293
Rajiv S. Mishra6459122210
William W. Craig5831614311
S.G. Deshmukh5618311566
Jay Singh513018655
Neeraj Kumar502077670
Erling Halfdan Stenby502858500
Devendra Singh4931410386
Federico Calle-Vallejo4611311239
Rajesh Singh4669210339
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
202357
2022235
20211,519
20201,070
2019659
2018599