Secure System Research Laboratories is a Japanese research and development organization specializing in cybersecurity, privacy protection, and safe computing environments. Its work enhances data protection in the public and private sectors. NEC Labs America collaborates with Secure System Research Laboratories on cyber threat detection, malware behavior modeling, and secure system design. Please read about our latest news and collaborative publications with Secure System Research Laboratories.

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Superclass-Conditional Gaussian Mixture Model for Coarse-To-Fine Few-Shot Learning

Learning fine-grained embeddings is essential for extending the generalizability of models pre-trained on “coarse” labels (e.g., animals). It is crucial to fields for which fine-grained labeling (e.g., breeds of animals) is expensive, but fine-grained prediction is desirable, such as medicine. The dilemma necessitates adaptation of a “coarsely” pre-trained model to new tasks with a few “finer-grained” training labels. However, coarsely supervised pre-training tends to suppress intra-class variation, which is vital for cross-granularity adaptation. In this paper, we develop a training framework underlain by a novel superclass-conditional Gaussian mixture model (SCGM). SCGM imitates the generative process of samples from hierarchies of classes through latent variable modeling of the fine-grained subclasses. The framework is agnostic to the encoders and only adds a few distribution related parameters, thus is efficient, and flexible to different domains. The model parameters are learned end-to-end by maximum-likelihood estimation via a principled Expectation-Maximization algorithm. Extensive experiments on benchmark datasets and a real-life medical dataset indicate the effectiveness of our method.