When predict can also explain: few-shot prediction to select better neural latents
Kabir Dabholkar, Omri Barak

TL;DR
This paper introduces a new metric called few-shot co-smoothing to better evaluate neural latent variable models, addressing limitations of existing prediction benchmarks and improving the inference of true neural dynamics.
Contribution
The study reveals limitations of co-smoothing, proposes few-shot co-smoothing as a more reliable metric, and validates its effectiveness across multiple neural datasets.
Findings
High co-smoothing models can have extraneous dynamics.
Few-shot co-smoothing correlates with minimal extraneous dynamics.
The new metric improves latent dynamics inference accuracy.
Abstract
Latent variable models serve as powerful tools to infer underlying dynamics from observed neural activity. Ideally, the inferred dynamics should align with true ones. However, due to the absence of ground truth data, prediction benchmarks are often employed as proxies. One widely-used method, , involves jointly estimating latent variables and predicting observations along held-out channels to assess model performance. In this study, we reveal the limitations of the co-smoothing prediction framework and propose a remedy. Using a student-teacher setup, we demonstrate that models with high co-smoothing can have arbitrary extraneous dynamics in their latent representations. To address this, we introduce a secondary metric -- , performing regression from the latent variables to held-out neurons in the data using fewer trials. Our results…
Peer Reviews
Decision·Submitted to ICLR 2025
1. The paper has a high-level storyline that is easy to follow: from the limitation of co-smooth, proposing new few-shot co-smoothing, reasons for few-shot co-smoothing to work, and how to adapt few-shot co-smoothing to real neural signals. 2. The paper covers both empirical analysis of existing methods, practical improvements based on the existing method, and mathematical interpretations of the proposed improvement. 3. The paper provides an honest discussion of limitations.
1. Writing of limited works is a bit messy: too many paragraphs, mixing related works with the introduction of the work's methodology and contribution. It would be clearer to provide clean related works as a background and only include a short emphasis on the uniqueness of this paper. 2. The writing in other parts is also a bit confusing and the paper seems to be finished in a rush, missing ","s in several positions: L118 after "forward-prediction", L122 after "During evaluation", L125 after "f
* The paper is well organized and each section has a clear and consice statement. * The teacher-student setup provides a convincing example of the problem with co-smoothing scores. * The suggested solution of few-shot co-smoothing is simple and seems to be reasonably effective in the suggested setups.
* Evaluations in section 7 rely on a metric, cross-decoding error, defined by the authors themselves and argued for in the text. No prior work pointing to the validity of the score is provided, see further questions below. * Since correlation in section 7 is not perfect, and due to the above, further empirical verification of the method, with either additional datasets and/or models, is missing.
1. The writing of this paper is good, and the illustration figures are clear. 2. The example provided in Section 4 and corresponding observations are interesting.
Major concerns: 1. The proposed few-shot co-smoothing is based on empirical observations on a simple HMM model. It would be highly beneficial if theoretical results regarding extending this analysis to more generic cases can be provided. In the current manuscript, it is hard to conclude for which family of problems and under what conditions the proposed metric can be effective. It is unknown whether and how few-shot co-smoothing will also help when the relationship between the latent variables
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Cell Image Analysis Techniques
