Publications by authors named "Guibing Guo"

Article Synopsis
  • Continual learning (CL) focuses on learning new tasks while retaining knowledge from previous tasks, but traditional methods often struggle due to the lack of available raw data because of copyright and privacy issues.
  • This paper introduces two innovative settings for CL: data-efficient CL (DECL-APIs) and data-free CL (DFCL-APIs), which utilize machine learning APIs to train models with little or no raw data, facing unique challenges like incomplete data and model variability.
  • A new cooperative continual distillation learning framework is proposed, using adversarial training with generators to create synthetic data from APIs, enabling effective knowledge transfer to a CL model while implementing a regularization term to prevent forgetting previous knowledge; results show that this approach can perform compar
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High-throughput DNA sequencing technologies decode tremendous amounts of microbial protein-coding gene sequences. However, accurately assigning protein functions to novel gene sequences remain a challenge. To this end, we developed FunGeneTyper, an extensible framework with two new deep learning models (i.

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Negative sampling plays an important role in ranking-based recommender models. However, most existing sampling methods cannot generate informative item pairs with positive and negative instances due to two limitations: 1) they merely treat observed items as positive instances, ignoring the existence of potential positive items (i.e.

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Nowadays, providing high-quality recommendation services to users is an essential component in web applications, including shopping, making friends, and healthcare. This can be regarded either as a problem of estimating users' preference by exploiting explicit feedbacks (numerical ratings), or as a problem of collaborative ranking with implicit feedback (e.g.

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