Corpus ID: 22561157

Statistical Latent Space Approach for Mixed Data Modelling and Applications

@article{Nguyen2017StatisticalLS,
  title={Statistical Latent Space Approach for Mixed Data Modelling and Applications},
  author={T. Nguyen and T. Tran and Dinh Q. Phung and S. Venkatesh},
  journal={ArXiv},
  year={2017},
  volume={abs/1708.05594}
}
The analysis of mixed data has been raising challenges in statistics and machine learning. One of two most prominent challenges is to develop new statistical techniques and methodologies to effectively handle mixed data by making the data less heterogeneous with minimum loss of information. The other challenge is that such methods must be able to apply in large-scale tasks when dealing with huge amount of mixed data. To tackle these challenges, we introduce parameter sharing and balancing… Expand

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