Deepak Sharma

Work place: Department of Computer Engineering, Netaji Subash Institute of Technology, Sector-3, Dwarka, New Delhi, 110078, India



Research Interests: Natural Language Processing, Solid Modeling, Data Mining, Data Structures and Algorithms


Deepak Sharma has received his B.E. (in Computer Engineering) and M.Tech. (in Information Technology) from Bharati Vidyapeeth College of Engineering, Bharati Vidyapeeth University, Pune respectively. Currently, he is pursuing Ph.D. in Topic Modeling and Trend Analysis from Department of Computer Engineering, Netaji Subhas Institute of Technology, New Delhi, India. His research interest data mining, natural language processing, text mining, topic modeling.

Author Articles
A Trend Analysis of Machine Learning Research with Topic Models and Mann-Kendall Test

By Deepak Sharma Bijendra Kumar Satish Chand

DOI:, Pub. Date: 8 Feb. 2019

This paper aims to systematically examine the literature of machine learning for the period of 1968~2017 to identify and analyze the research trends. A list of journals from well-established publishers ScienceDirect, Springer, JMLR, IEEE (approximately 23,365 journal articles) related to machine learning is used to prepare a content collection. To the best of our information, it is the first effort to comprehend the trend analysis in machine learning research with topic models: Latent Semantic Analysis (LSA), Latent Dirichlet Allocation (LDA), and LDA with Coherent Model (LDA_CM). The LDA_CM topic model gives the highest topic coherence amongst all topic models under consideration. This study provides a scientific ground that helps to overcome the subjectivity of collective opinion. The Mann-Kendall test is used to understand the trend of the topics. Our findings provide indicative of paradigmatic shifts in research methodology of significant patterns of topical prominence and the evolving research areas. It is used to highlight the evolution regarding the previous and recent trends in research topics in the area of machine learning. Understanding such an intellectual structure and future trends will assist the researchers to adopt the divergent developments of this research in one place. This paper analyzes the overall trends of the machine learning research since 1968, based on the latent topics identified in the period of 2007~2017 that may be helpful to the researchers exploring the recommended areas and publish their research articles.

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A Survey on Journey of Topic Modeling Techniques from SVD to Deep Learning

By Deepak Sharma Bijendra Kumar Satish Chand

DOI:, Pub. Date: 8 Jul. 2017

Topic modeling techniques have been primarily being used to mine the topics from text corpora. These techniques reveal the hidden thematic structure in a collection of documents and facilitate to build up new ways to browse, search and summarize large archive of texts. A topic is a group of words that frequently occur together. A topic modeling can connect words with similar meanings and make a distinction between uses of words with several meanings. Here we present a survey on journey of topic modeling techniques comprising Latent Dirichlet Allocation (LDA) and non-LDA based techniques and the reason for classify the techniques into LDA and non-LDA is that LDA has ruled the topic modeling techniques since its inception. We have used the three hierarchical classification criteria’s for classifying topic models that include LDA and non-LDA based, bag-of-words or sequence-of-words approach and unsupervised or supervised learning for our survey. Purpose of this survey is to explore the topic modeling techniques since Singular Value Decomposition (SVD) topic model to the latest topic models in deep learning. Also, provide the brief summary of current probabilistic topic models as well as a motivation for future research.

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