Обзор

vST for Multi‑Model Alignment#

References#

This appendix lists references relevant to cross‑model alignment, multimodal representation learning, scaling laws, latent‑space geometry, and validation frameworks. Citations are grouped by category for clarity and presented in a substrate‑agnostic, architecture‑neutral format consistent with the RSM and vST canon.


1. Cross‑Model & Multimodal Alignment#

  • Radford, A., Kim, J. W., Hallacy, C., et al.
    Learning Transferable Visual Models From Natural Language Supervision (CLIP).
    arXiv:2103.00020 (2021).

  • Jia, C., Yang, Y., Xia, Y., et al.
    Scaling Up Visual and Vision‑Language Representation Learning With Noisy Text Supervision.
    ICML (2021).

  • Alayrac, J.‑B., Donahue, J., Luc, P., et al.
    Flamingo: A Visual Language Model for Few‑Shot Learning.
    arXiv:2204.14198 (2022).


2. Latent‑Space Geometry & Representation Learning#

  • Tenenbaum, J. B., de Silva, V., & Langford, J. C.
    A Global Geometric Framework for Nonlinear Dimensionality Reduction.
    Science (2000).

  • Coifman, R. R., & Lafon, S.
    Diffusion Maps.
    Applied and Computational Harmonic Analysis (2006).

  • von Luxburg, U.
    A Tutorial on Spectral Clustering.
    Statistics and Computing (2007).


3. Scaling Laws Across Architectures#

  • Kaplan, J., McCandlish, S., Henighan, T., et al.
    Scaling Laws for Neural Language Models.
    arXiv:2001.08361 (2020).

  • Zhai, X., Puigcerver, J., Mustafa, B., et al.
    Scaling Vision Transformers.
    CVPR (2022).

  • Hoffmann, J., Borgeaud, S., Mensch, A., et al.
    Training Compute‑Optimal Large Language Models.
    arXiv:2203.15556 (2022).


4. Multimodal & Cross‑Architecture Systems#

  • Ramesh, A., Dhariwal, P., Nichol, A., et al.
    Zero‑Shot Text‑to‑Image Generation.
    ICML (2021).

  • Karras, T., Aittala, M., Laine, S., et al.
    Elucidating the Design Space of Diffusion‑Based Generative Models.
    NeurIPS (2022).

  • Kingma, D. P., & Welling, M.
    Auto‑Encoding Variational Bayes.
    ICLR (2014).


5. Validation, Verification & Drift Detection#

  • Breck, E., Cai, S., Nielsen, E., et al.
    The ML Test Score: A Rubric for ML Production Readiness.
    Google Research (2017).

  • Amodei, D., Olah, C., Steinhardt, J., et al.
    Concrete Problems in AI Safety.
    arXiv:1606.06565 (2016).

  • Oberkampf, W. L., & Roy, C. J.
    Verification and Validation in Scientific Computing.
    Cambridge University Press (2010).


6. Substrate‑Level and Triadic‑Frameworks Canon#

  • Loswin, N.
    Resonance Substrate Model (RSM): Structural Foundations for High‑Dimensional Inference.
    TriadicFrameworks (2025).

  • Loswin, N.
    Triadic Dimensional Cores: A 3D–9D Substrate for Structural and Inference‑Level Alignment.
    TriadicFrameworks (2025).

  • Loswin, N.
    Validation‑Space‑Time (vST): A Substrate‑Level Framework for Reproducibility and Drift Detection.
    TriadicFrameworks (2025).

  • Loswin, N.
    Dimensional Substrate Structures: Scaling Laws and High‑Dimensional Regimes.
    TriadicFrameworks (2026).

  • Loswin, N.
    vST for Multi‑Model Alignment.
    TriadicFrameworks (2026).

Updated

References — TriadicFrameworks