Ali Ghodsi


Ontology type: schema:Person     


Person Info

NAME

Ali

SURNAME

Ghodsi

Publications in SciGraph latest 50 shown

  • 2019-01 Deep learning enables de novo peptide sequencing from data-independent-acquisition mass spectrometry in NATURE METHODS
  • 2017-02 Advances in projection of climate change impacts using supervised nonlinear dimensionality reduction techniques in CLIMATE DYNAMICS
  • 2017 Discovery Radiomics via a Mixture of Deep ConvNet Sequencers for Multi-parametric MRI Prostate Cancer Classification in IMAGE ANALYSIS AND RECOGNITION
  • 2017 Fast Spectral Clustering Using Autoencoders and Landmarks in IMAGE ANALYSIS AND RECOGNITION
  • 2016 Semi-supervised Dictionary Learning Based on Hilbert-Schmidt Independence Criterion in IMAGE ANALYSIS AND RECOGNITION
  • 2015-10 Greedy column subset selection for large-scale data sets in KNOWLEDGE AND INFORMATION SYSTEMS
  • 2014-01 Minimizing the Discrepancy Between Source and Target Domains by Learning Adapting Components in JOURNAL OF COMPUTER SCIENCE AND TECHNOLOGY
  • 2013-05 Efficient greedy feature selection for unsupervised learning in KNOWLEDGE AND INFORMATION SYSTEMS
  • 2012 Protein Structure by Semidefinite Facial Reduction in RESEARCH IN COMPUTATIONAL MOLECULAR BIOLOGY
  • 2012 Supervised Texture Classification Using a Novel Compression-Based Similarity Measure in COMPUTER VISION AND GRAPHICS
  • 2011 Dictionary Learning in Texture Classification in IMAGE ANALYSIS AND RECOGNITION
  • 2010 Learning an Affine Transformation for Non-linear Dimensionality Reduction in MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES
  • 2007 Subjective Localization with Action Respecting Embedding in ROBOTICS RESEARCH
  • 2004 Transformation-Invariant Embedding for Image Analysis in COMPUTER VISION - ECCV 2004
  • Affiliations

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