Dhruba K Bhattacharyya


Ontology type: schema:Person     


Person Info

NAME

Dhruba K

SURNAME

Bhattacharyya

Publications in SciGraph latest 50 shown

  • 2019 MaNaDAC: An Effective Alert Correlation Method in RECENT DEVELOPMENTS IN MACHINE LEARNING AND DATA ANALYTICS
  • 2017-12 Materialized view selection using evolutionary algorithm for speeding up big data query processing in JOURNAL OF INTELLIGENT INFORMATION SYSTEMS
  • 2017-12 Disease biomarker identification from gene network modules for metastasized breast cancer in SCIENTIFIC REPORTS
  • 2017 Network Traffic Anomaly Detection and Prevention in NONE
  • 2016-12 Big data analytics in bioinformatics: architectures, techniques, tools and issues in NETWORK MODELING ANALYSIS IN HEALTH INFORMATICS AND BIOINFORMATICS
  • 2016-12 THD-Module Extractor: An Application for CEN Module Extraction and Interesting Gene Identification for Alzheimer’s Disease in SCIENTIFIC REPORTS
  • 2015-12 Unsupervised methods for finding protein complexes from PPI networks in NETWORK MODELING ANALYSIS IN HEALTH INFORMATICS AND BIOINFORMATICS
  • 2015-12 Detecting protein complexes using connectivity among nodes in a PPI Network in NETWORK MODELING ANALYSIS IN HEALTH INFORMATICS AND BIOINFORMATICS
  • 2015 Analysis of Gene Expression Patterns Using Biclustering in MICROARRAY DATA ANALYSIS
  • 2014-12 An effective measure corresponding to biological significance in NETWORK MODELING ANALYSIS IN HEALTH INFORMATICS AND BIOINFORMATICS
  • 2014-12 A statistical feature selection technique in NETWORK MODELING ANALYSIS IN HEALTH INFORMATICS AND BIOINFORMATICS
  • 2014-09 A model on achieving higher performance in the classification of hyperspectral satellite data: a case study on Hyperion data in APPLIED GEOMATICS
  • 2014-06 FUMET: A fuzzy network module extraction technique for gene expression data in JOURNAL OF BIOSCIENCES
  • 2014-05 Reconstruction of gene co-expression network from microarray data using local expression patterns in BMC BIOINFORMATICS
  • 2014 TDAC: Co-Expressed Gene Pattern Finding Using Attribute Clustering in PROCEEDINGS OF THE SECOND INTERNATIONAL CONFERENCE ON SOFT COMPUTING FOR PROBLEM SOLVING (SOCPROS 2012), DECEMBER 28-30, 2012
  • 2014 A Similarity Measure for Clustering Gene Expression Data in APPLIED ALGORITHMS
  • 2013 Causality Inference Techniques for In-Silico Gene Regulatory Network in MINING INTELLIGENCE AND KNOWLEDGE EXPLORATION
  • 2013 Multiobjective Differential Evolution Algorithm Using Binary Encoded Data in Selecting Views for Materializing in Data Warehouse in SWARM, EVOLUTIONARY, AND MEMETIC COMPUTING
  • 2012-09 Effective feature extraction approach for fused images of Cartosat-I and Landsat ETM+ satellite sensors in APPLIED GEOMATICS
  • 2012-08 An effective method for network module extraction from microarray data in BMC BIOINFORMATICS
  • 2012 Packet and Flow Based Network Intrusion Dataset in CONTEMPORARY COMPUTING
  • 2012 Selection of Views for Materializing in Data Warehouse Using MOSA and AMOSA in ADVANCES IN COMPUTER SCIENCE, ENGINEERING & APPLICATIONS
  • 2012 Decomposition+: Improving ℓ-Diversity for Multiple Sensitive Attributes in ADVANCES IN COMPUTER SCIENCE AND INFORMATION TECHNOLOGY. COMPUTER SCIENCE AND ENGINEERING
  • 2011 SATCLUS: An Effective Clustering Technique for Remotely Sensed Images in PATTERN RECOGNITION AND MACHINE INTELLIGENCE
  • 2011 An Effective Density-Based Hierarchical Clustering Technique to Identify Coherent Patterns from Gene Expression Data in ADVANCES IN KNOWLEDGE DISCOVERY AND DATA MINING
  • 2011 RODD: An Effective Reference-Based Outlier Detection Technique for Large Datasets in ADVANCED COMPUTING
  • 2010 DisClus: A Distributed Clustering Technique over High Resolution Satellite Data in DISTRIBUTED COMPUTING AND NETWORKING
  • 2008 DGDCT: A Distributed Grid-Density Based Algorithm for Intrinsic Cluster Detection over Massive Spatial Data in DISTRIBUTED COMPUTING AND NETWORKING
  • 2005 Image Retrieval by Content Using Segmentation Approach in PATTERN RECOGNITION AND MACHINE INTELLIGENCE
  • 2005 Density-Based View Materialization in PATTERN RECOGNITION AND MACHINE INTELLIGENCE
  • 2005 An Approach to Find Embedded Clusters Using Density Based Techniques in DISTRIBUTED COMPUTING AND INTERNET TECHNOLOGY
  • 2004 Rule Mining for Dynamic Databases in DISTRIBUTED COMPUTING - IWDC 2004
  • 2002-05-27 A New Distributed Algorithm for Large Data Clustering in INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING — IDEAL 2000. DATA MINING, FINANCIAL ENGINEERING, AND INTELLIGENT AGENTS
  • Affiliations

  • Tezpur University (current)
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