kohdeCn
KohdeCn is a theoretical framework in machine learning and data representation designed to improve the encoding of contextual targets in neural models. It describes a modular approach intended to separate target-specific information from broader contextual signals, enabling models to adapt predictions to varying contexts without retraining.
Etymology: The name combines “kohde,” a term meaning target in Finnish, with “Cn,” commonly used as an
Architecture: The proposed architecture comprises a Target Encoder, a Context Integrator, and an Output Mapper. The
Training and methods: KohdeCn can be trained with supervised objectives, contrastive learning, or self-supervised pretraining. It
Applications: In theory, kohdeCn is applicable to natural language processing, time-series forecasting, and multimodal learning where
Limitations and reception: As a conceptual model, kohdeCn faces practical challenges including increased computational overhead and