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Contributed Talks
in
Workshop: Synthetic Data for Empowering ML Research

Contributed Talks Part 2/2


Abstract:

Papers:

  1. SynBench: Task-Agnostic Benchmarking of Pretrained Representations using Synthetic Data
  2. MAQA: A Multimodal QA Benchmark for Negation
  3. Generating Realistic Synthetic Relational Data through Graph Variational Autoencoders
  4. Mitigating Health Data Poverty: Generative Approaches versus Resampling for Time-series Clinical Data
  5. Private GANs, Revisited
  6. Contrastive Learning on Synthetic Videos for GAN Latent Disentangling
  7. HandsOff: Labeled Dataset Generation with No Additional Human Annotations
  8. Secure Multiparty Computation for Synthetic Data Generation from Distributed Data
  9. Counterfactual Fairness in Synthetic Data Generation
  10. HyperTime: Implicit Neural Representations for Time Series
  11. Generic and Privacy-free Synthetic Data Generation for Pretraining GANs
  12. Importance of Synthesizing High-quality Data for Text-to-SQL Parsing
  13. Fast Learning of Multidimensional Hawkes Processes via Frank-Wolfe
  14. TAPAS: a Toolbox for Adversarial Privacy Auditing of Synthetic Data
  15. On the legal nature of synthetic data
  16. Synthesizing Informative Training Samples with GAN
  17. Unsupervised Anomaly Detection for Auditing Data and Impact of Categorical Encodings.
  18. C-GATS: Conditional Generation of Anomalous Time Series
  19. Medical Scientific Table-to-Text Generation with Synthetic Data under Data Sparsity Constraint
  20. Mind Your Step: Continuous Conditional GANs with Generator Regularization
  21. Federated Learning on Patient Data for Privacy-Protecting Polycystic Ovary Syndrome Treatment
  22. Random Walk based Conditional Generative Model for Temporal Networks with Attributes
  23. Generating High Fidelity Synthetic Data via Coreset selection and Entropic Regularization
  24. Conditional Progressive Generative Adversarial Network for satellite image generation
  25. Multi-Modal Conditional GAN: Data Synthesis in the Medical Domain
  26. Hypothesis Testing using Causal and Causal Variational Generative Models

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