Multiple Choice

A machine learning engineer is adapting a large, pre-trained language model for a new text classification task. They have a labeled dataset D containing pairs of text inputs (x) and their correct labels (y_gold). The engineer formulates the following objective for the adaptation process, where θ represents the model parameters which are initialized randomly:

θ~=argminθ(x,ygold)DLoss(yθ,ygold)\tilde{\theta} = \arg \min_{\theta} \sum_{(\mathbf{x}, \mathbf{y}_{\text{gold}}) \in \mathcal{D}} \text{Loss}(\mathbf{y}_{\theta}, \mathbf{y}_{\text{gold}})

What is the primary conceptual error in this formulation for the specific goal of adapting the pre-trained model?

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Updated 2025-09-26

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