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A collection of Machine Learning techniques for data management, engineering and augmentation.

Project description

DeepCoreML is a collection of Machine Learning techniques for data management, engineering, and augmentation. More specifically, DeepCoreML includes modules for:

  • Dataset management
  • Text data preprocessing
  • Text representation, vectorization, embeddings
  • Dimensionality reduction
  • Generative modeling
  • Imbalanced datasets

Licence: Apache License, 2.0 (Apache-2.0)

Dependencies: scikit-learn, imblearn, pytorch, numpy, pandas, transformers, nltk, matplotlib

GitHub repository: https://github.com/lakritidis/DeepCoreML

Publications:

  • L. Akritidis, A. Fevgas, M. Alamaniotis, P. Bozanis, "Conditional Data Synthesis with Deep Generative Models for Imbalanced Dataset Oversampling", In Proceedings of the 35th IEEE International Conference on Tools with Artificial Intelligence (ICTAI), to appear, 2023.
  • L. Akritidis, P. Bozanis, "A Multi-Dimensional Survey on Learning from Imbalanced Data", Chapter in Machine Learning Paradigms - Advances in Theory and Applications of Learning from Imbalanced Data, to appear, 2023.
  • L. Akritidis, P. Bozanis, "Low Dimensional Text Representations for Sentiment Analysis NLP Tasks", Springer Nature (SN) Computer Science, vol. 4, no. 5, 474, 2023.

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