Interpretable Semantic Gradients in SSD: A PCA Sweep Approach and a Case Study on AI Discourse
arXiv cs.CL / 3/16/2026
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Key Points
- The paper proposes a PCA sweep procedure to select the number of retained components in SSD, treating dimensionality as a joint criterion over representation capacity, gradient interpretability, and stability.
- It applies the method to AI-related short posts and narcissism scales, yielding a stable Admiration-related gradient that contrasts optimistic/collaborative AI framings with distrustful and derisive discourse.
- A counterfactual using a high-PCA-dimension solution heuristic yields diffuse, weakly structured clusters, reinforcing the value of the sweep-based K selection.
- The case study shows that the PCA sweep constrains researcher degrees of freedom while preserving SSD's interpretive aims and supports transparent, psychologically meaningful analyses of connotative meaning.
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