| # Mutual Information Metrics for Collapse Detection |
|
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| This document provides a comprehensive explanation of the mutual information (MI) based metrics used in RAGEN for detecting training collapse phenomena. |
|
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| ## 1. Overview: Two Core Metrics |
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| We focus on two diagnostic quantities: |
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| | Quantity | Meaning | Diagnostic Metric | |
| |--------------|------------|-------------------| |
| | **Within-input variability** | How much reasoning varies under the same input | $H(Z \mid X)$ | |
| | **Across-input dependence** | How much reasoning still depends on the input | $I(X; Z)$ | |
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| **Key Insight**: We compute MI under the batch's empirical input distribution (uniform over prompts), not the true $p(x)$. This is exactly what's needed for diagnosing whether reasoning remains input-dependent inside a training batch. |
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| --- |
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| ## 2. Design Decision: Partitioning $X$ and $Z$ |
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| The choice of how to partition the sequence into conditioning context $X$ and reasoning $Z$ is crucial for meaningful collapse detection. The partition answers: **"Which segment of generation depends on which segment of input context?"** |
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| ### 2.1 Design Goal |
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| We want to measure whether the reasoning content becomes increasingly input-independent (i.e., ignoring the environment state and producing generic outputs), while also tracking how much variability remains under the same input. |
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| ### 2.2 Recommended Partition |
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| For a typical agent turn with structure: |
| ``` |
| [System Prompt] [User: State] [Assistant:] <think> reasoning content </think> <answer> action </answer> |
| ``` |
|
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| We define: |
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| | Variable | Content | Rationale | |
| |----------|---------|-----------| |
| | **$X$** | System prompt + User turn (state) + Assistant prefix + `<think>` tag | Everything the model sees *before* generating reasoning content | |
| | **$Z$** | Reasoning content tokens (between `<think>` and `</think>`, **excluding both tags**) | The actual reasoning we want to measure dependency for | |
|
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| ### 2.3 Why Include `<think>` in $X$? |
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| The `<think>` tag should be part of $X$ (conditioning context), not $Z$ (reasoning): |
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| 1. **Semantic role**: `<think>` is a control token meaning "start generating reasoning" — it's a boundary marker, not reasoning content itself. |
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| 2. **Near-constant token**: `<think>` appears identically in every sample, so including it in $Z$ would: |
| - Add no discriminative information between prompts |
| - Dilute entropy/MI statistics with high-probability constant tokens |
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| 3. **Clean separation**: With `<think>` in $X$, the partition becomes: "everything before reasoning starts" vs "reasoning content itself" |
|
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| ### 2.4 Why Exclude `</think>` from $Z$? |
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| The `</think>` closing tag should also be excluded from $Z$: |
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| 1. **Structural boundary**: Like `<think>`, it's a format token, not reasoning content. |
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| 2. **Format stability signal**: If `</think>` is included in $Z$, MI/entropy metrics would conflate: |
| - Reasoning content dependency (what we want) |
| - Format stability (whether the model reliably closes tags) |
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| 3. **Cleaner interpretation**: Excluding both tags means $Z$ purely measures "does the reasoning *content* depend on the input state?" |
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| ### 2.5 Implementation Mapping |
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| In the codebase, this corresponds to: |
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| | Field | Content | |
| |-------|---------| |
| | `first_turn_prompt_ids` | Tokens up to and including `<think>` | |
| | `first_turn_reasoning_ids` | Reasoning content tokens only (no `<think>`, no `</think>`) | |
|
|
| --- |
|
|
| ## 3. Notation and Definitions |
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| ### 3.1 Random Variables |
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| | Symbol | Description | |
| |--------|-------------| |
| | $X$ | Input context: system prompt + user turn + assistant prefix + `<think>` | |
| | $Z$ | Reasoning content tokens (between `<think>` and `</think>`, excluding tags) | |
| | $x_j$ | The $j$-th unique prompt in the batch, $j \in \{1, \ldots, N\}$ | |
| | $z_{i,k}$ | The $k$-th reasoning sample for trajectory $i$ | |
| | $N$ | Number of unique prompts in the batch | |
| | $K$ | Number of reasoning samples per prompt (group size) | |
|
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| ### 3.2 Probability Distributions |
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| | Symbol | Definition | Description | |
| |--------|------------|-------------| |
| | $p(z \mid x)$ | $\prod_{t=1}^{T} p_\theta(z_t \mid x, z_{1:t-1})$ | Conditional probability of reasoning $z$ given prompt $x$ under policy $\pi_\theta$ | |
| | $p_{\text{mix}}(z)$ | $\frac{1}{N} \sum_{j=1}^{N} p(z \mid x_j)$ | Marginal probability under uniform prompt mixture | |
| | $\hat{p}(x)$ | $\frac{1}{N}$ | Empirical (uniform) distribution over batch prompts | |
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| --- |
|
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| ## 4. Core Information-Theoretic Quantities |
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| ### 4.1 Conditional Entropy $H(Z \mid X)$ |
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| **Definition**: The expected uncertainty in the reasoning $Z$ given the prompt $X$. |
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| $$H(Z \mid X) = -\mathbb{E}_{x \sim \hat{p}(x)} \mathbb{E}_{z \sim p(z|x)} \left[ \log p(z \mid x) \right]$$ |
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| **Estimation**: Using sampled (prompt, reasoning) pairs: |
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| $$\hat{H}(Z \mid X) = -\frac{1}{NK} \sum_{i,k} \log p(z_{i,k} \mid x_i)$$ |
| |
| **Interpretation**: |
| - **High $H(Z \mid X)$**: Model generates diverse responses for each prompt (stochastic policy) |
| - **Low $H(Z \mid X)$**: Model generates deterministic/repetitive responses for each prompt |
| |
| **Code Reference** (`collapse_metrics.py:675-700`): |
| ```python |
| conditional_entropy = -matched.mean().item() # H(Z|X) estimate |
| ``` |
|
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| ### 4.2 Marginal Entropy $H(Z)$ |
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| **Definition**: The total entropy of reasoning under the marginal distribution. |
|
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| $$H(Z) = -\mathbb{E}_{z \sim p_{\text{mix}}(z)} \left[ \log p_{\text{mix}}(z) \right]$$ |
| |
| **Estimation**: Using the mixture distribution: |
| |
| $$\hat{H}(Z) = -\frac{1}{NK} \sum_{i,k} \log p_{\text{mix}}(z_{i,k})$$ |
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| where: |
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| $$p_{\text{mix}}(z) = \frac{1}{N} \sum_{j=1}^{N} p(z \mid x_j)$$ |
| |
| **Code Reference** (`collapse_metrics.py:675-700`): |
| ```python |
| reasoning_entropy = -marginal.mean().item() # H(Z) estimate |
| ``` |
|
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| ### 4.3 Mutual Information $I(X; Z)$ |
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| **Definition**: The amount of information that the reasoning $Z$ contains about the prompt $X$. |
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| $$I(X; Z) = H(Z) - H(Z \mid X)$$ |
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| Equivalently: |
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| $$I(X; Z) = \mathbb{E}_{x, z} \left[ \log \frac{p(z \mid x)}{p_{\text{mix}}(z)} \right]$$ |
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| **Estimation**: |
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| $$\hat{I}(X; Z) = \frac{1}{NK} \sum_{i,k} \left[ \log p(z_{i,k} \mid x_i) - \log p_{\text{mix}}(z_{i,k}) \right]$$ |
| |
| **Interpretation**: |
| - **High $I(X; Z)$**: Reasoning is input-dependent (healthy) |
| - **Low $I(X; Z)$**: Reasoning has weak input dependence |
| - **Upper Bound**: $I(X; Z) \leq H(X) = \log N$ (when $X$ is uniform) |
| |
| **Practical Note on Negative Values**: |
| - The true mutual information satisfies $I(X; Z) \geq 0$. |
| - Our logged `mi_estimate` and `mi_seq_estimate` are finite-sample Monte Carlo estimates, not exact MI. |
| - Because they average noisy sample terms of the form $\log p(z \mid x) - \log p_{\text{mix}}(z)$, they can temporarily dip below zero when the true MI is near zero or the sampled batch is noisy. |
| - In practice, a small negative value should usually be read as "approximately zero input dependence within estimation noise," not as a violation of information theory. |
| |
| **Code Reference** (`collapse_metrics.py:563-590`): |
| ```python |
| def _compute_mi_estimate(self, matched, marginal, N_prompts): |
| mi = matched.mean().item() - marginal.mean().item() |
| return { |
| "collapse/mi_estimate": mi, |
| "collapse/mi_upper_bound": math.log(N_prompts), |
| } |
| ``` |
|
|
| --- |
|
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| ## 5. Computation Pipeline |
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| ### 5.1 Cross Log-Probability Matrix |
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| For each reasoning $z_{i,k}$ and each prompt $x_j$, we compute the cross log-probability: |
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| $$\ell_j(z_{i,k}) = \log p(z_{i,k} \mid x_j) = \sum_{t=1}^{T} \log p_\theta(z_{i,k,t} \mid x_j, z_{i,k,1:t-1})$$ |
| |
| This forms a matrix $\mathbf{L} \in \mathbb{R}^{NK \times N}$ where: |
| - Rows index (trajectory, sample) pairs |
| - Columns index unique prompts |
| |
| **Code Reference** (`collapse_metrics.py:452-546`): |
| ```python |
| def _compute_cross_log_probs(self, ...): |
| """ |
| For each reasoning z_{i,k} and each prompt x_j: |
| 1. Construct sequence [x_j | z_{i,k}] |
| 2. Compute teacher-forcing log prob |
| 3. Sum over reasoning tokens → ℓ_j(z_{i,k}) |
| """ |
| cross_log_probs = torch.zeros(NK, N, device=device) # per-token mean |
| cross_log_probs_sum = torch.zeros(NK, N, device=device) # per-sequence sum |
| ``` |
|
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| ### 5.2 Matched vs Marginal Log-Probabilities |
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| **Matched**: Log-probability of reasoning under its true prompt: |
| $$\text{matched}_{i,k} = \ell_i(z_{i,k}) = \log p(z_{i,k} \mid x_i)$$ |
| |
| **Marginal**: Log-probability under uniform prompt mixture: |
| $$\text{marginal}_{i,k} = \log p_{\text{mix}}(z_{i,k}) = \log \left( \frac{1}{N} \sum_{j=1}^{N} \exp(\ell_j(z_{i,k})) \right)$$ |
| |
| Using log-sum-exp for numerical stability: |
| $$\text{marginal}_{i,k} = \text{logsumexp}_j(\ell_j(z_{i,k})) - \log N$$ |
| |
| **Code Reference** (`collapse_metrics.py:548-561`): |
| ```python |
| def _compute_log_prob_stats(self, cross_log_probs, col_ids): |
| NK, N = cross_log_probs.shape |
| matched = cross_log_probs[torch.arange(NK), col_ids] # diagonal elements |
| marginal = torch.logsumexp(cross_log_probs, dim=1) - math.log(N) |
| return matched, marginal |
| ``` |
|
|
| --- |
|
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| ## 6. Per-Token vs Per-Sequence Metrics |
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| We compute two variants of each metric: |
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| | Variant | Normalization | Use Case | |
| |---------|--------------|----------| |
| | **Per-token** (`_est`) | Divide by sequence length | Length-invariant comparison | |
| | **Per-sequence** (`_seq_est`) | Sum over tokens | Total information content | |
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| ### 6.1 Per-Token (Length-Normalized) |
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| $$\bar{\ell}_j(z) = \frac{1}{T} \sum_{t=1}^{T} \log p(z_t \mid x_j, z_{1:t-1})$$ |
| |
| This reduces length bias when comparing reasoning of different lengths. |
| |
| ### 6.2 Per-Sequence (Sum) |
| |
| $$\ell_j(z) = \sum_{t=1}^{T} \log p(z_t \mid x_j, z_{1:t-1})$$ |
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| This captures total log-probability without normalization. |
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| **Base Metric Suffixes**: |
| - `collapse/mi_estimate` — Per-token MI |
| - `collapse/mi_seq_estimate` — Per-sequence MI |
| - `collapse/conditional_entropy_est` — Per-token $H(Z|X)$ |
| - `collapse/conditional_entropy_seq_est` — Per-sequence $H(Z|X)$ |
| - `collapse/reasoning_entropy_est` — Per-token $H(Z)$ |
| - `collapse/reasoning_entropy_seq_est` — Per-sequence $H(Z)$ |
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| These are the raw suffixes produced inside `_compute_metrics_for_pairs`. In logged outputs, they are usually namespaced as `collapse_first_turn_sample/<suffix>` or `collapse_trajectory_sample/<suffix>`. |
|
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| --- |
|
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| ## 7. Additional Diagnostic Metrics |
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| ### 7.1 Retrieval Accuracy |
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| **Definition**: Fraction of samples where the highest cross-log-probability matches the true prompt. |
| If multiple prompts are identical (same tokenized prompt text), they are treated as equivalent columns, and any of those columns counts as correct for retrieval accuracy and chance. |
|
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| $$\text{Acc} = \frac{1}{NK} \sum_{i,k} \mathbf{1}\left[ \arg\max_j \ell_j(z_{i,k}) = i \right]$$ |
|
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| **Interpretation**: |
| - **High Accuracy** ($\approx 1$): Reasoning is highly prompt-specific |
| - **Chance Level** ($\approx 1/N$): Reasoning is prompt-independent |
|
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| **Code Reference** (`collapse_metrics.py:592-673`): |
| ```python |
| def _compute_retrieval_accuracy(self, cross_log_probs, col_ids, N_prompts): |
| predicted_cols = torch.argmax(cross_log_probs, dim=1) |
| correct = (predicted_cols == col_ids).float() |
| accuracy = correct.mean().item() |
| chance_level = 1.0 / N_prompts |
| ``` |
|
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| **Base Metric Suffixes**: |
| - `collapse/retrieval_accuracy` — Top-1 accuracy |
| - `collapse/retrieval_accuracy@k` — Top-k accuracy (k ∈ {2, 4, 8}) |
| - `collapse/retrieval_chance_level` — Expected accuracy under random guessing |
| - `collapse/retrieval_above_chance` — Accuracy improvement over chance |
| - `collapse/retrieval_chance_level@k` — Expected top-k accuracy under random guessing |
| - `collapse/retrieval_above_chance@k` — Top-k accuracy improvement over chance |
|
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| ### 7.2 MI Z-Score |
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| **Definition**: Standardized MI using the marginal log-probability standard deviation. |
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| $$\text{MI-ZScore} = \frac{\text{matched} - \text{marginal}}{\sigma_{\text{marginal}} + \epsilon}$$ |
| |
| where $\sigma_{\text{marginal}} = \text{std}(\text{marginal}_{i,k})$ and $\epsilon = 10^{-3}$ for stability. |
| |
| **Interpretation**: Measures how many standard deviations the matched log-prob is above the marginal. More robust to scale changes during training. |
| |
| **Practical Note on Extreme Negative Z-Scores**: |
| - Negative `mi_zscore*` values are normal; they simply mean the matched log-prob is below the marginal baseline on that batch. |
| - Very large-magnitude values, especially for `mi_zscore_seq`, often happen when `marginal_std` or `marginal_std_seq` becomes very small, so the normalization denominator is close to `std_eps`. |
| - When this happens, interpret `mi_zscore*` together with `marginal_std*` and `mi_estimate` rather than in isolation. |
|
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| **Code Reference** (`collapse_metrics.py:302-320`): |
| ```python |
| marginal_std = marginal.std(unbiased=False) |
| metrics["collapse/mi_zscore"] = ((matched - marginal) / (marginal_std + self.std_eps)).mean().item() |
| ``` |
|
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| ### 7.3 EMA-Normalized MI Z-Score |
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| To handle variance drift during training, we track an exponential moving average of the marginal standard deviation: |
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| $$\sigma_{\text{EMA}}^{(t)} = \alpha \cdot \sigma_{\text{EMA}}^{(t-1)} + (1 - \alpha) \cdot \sigma_{\text{marginal}}^{(t)}$$ |
| |
| where $\alpha = 0.9$ (default decay rate). |
| |
| **Base Metric Suffixes**: |
| - `collapse/marginal_std` — Current batch marginal std |
| - `collapse/marginal_std_seq` — Current batch marginal std (per-sequence) |
| - `collapse/marginal_std_ema` — EMA of marginal std |
| - `collapse/mi_zscore_ema` — MI Z-score normalized by EMA std |
| - `collapse/marginal_std_ema_seq` — EMA of marginal std (per-sequence) |
| - `collapse/mi_zscore_seq` — MI Z-score (per-sequence) |
| - `collapse/mi_zscore_ema_seq` — MI Z-score normalized by EMA std (per-sequence) |
|
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| --- |
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| ## 8. Multi-Turn Sampling Strategies |
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| For multi-turn trajectories, we support two sampling strategies: |
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| ### 8.1 Trajectory-Uniform Sampling |
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| **Probability**: $\Pr(m, t) = \frac{1}{M} \cdot \frac{1}{T_m}$ |
| |
| - First sample trajectory $m$ uniformly |
| - Then sample turn $t$ uniformly within trajectory |
| - Each trajectory has equal weight regardless of length |
| |
| **Code Reference** (`collapse_metrics.py:780-813`): |
| ```python |
| def _sample_trajectory_uniform(self, ...): |
| """Each trajectory has equal weight regardless of length.""" |
| for _ in range(num_to_sample): |
| m = np.random.randint(M) # uniform over trajectories |
| t = np.random.randint(turn_counts[m]) # uniform over turns |
| ``` |
|
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| ### 8.2 Turn-Uniform Sampling (Disabled by Default) |
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| **Probability**: $\Pr(m, t) = \frac{1}{\sum_m T_m}$ |
|
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| - Uniform over all (trajectory, turn) pairs |
| - Longer trajectories contribute more samples |
|
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| --- |
|
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| ## 9. Summary of All Logged Metrics |
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| The code logs metrics in two layers: |
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| 1. **Sample-scoped diagnostic metrics**: computed on sampled $(x, z)$ pairs, then namespaced by sampling strategy. |
| 2. **Global coverage / timing metrics**: logged directly without an additional sample prefix. |
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| ### 9.1 W&B Namespace Patterns |
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| | Logged Key Pattern | When It Appears | Meaning | |
| |--------------------|-----------------|---------| |
| | `collapse_first_turn_sample/<suffix>` | `first_turn_enabled=True` and first-turn data exists | Diagnostics computed on first-turn $(x, z)$ pairs | |
| | `collapse_trajectory_sample/<suffix>` | `multi_turn_enabled=True` and multi-turn data exists | Diagnostics computed on trajectory-uniform multi-turn samples | |
| | `collapse_turn_sample/<suffix>` | Code path exists, but currently disabled by default | Diagnostics computed on turn-uniform multi-turn samples | |
| | `collapse/valid_thinking_rate` | `turn_counts_total` and `turn_counts` are available | Fraction of valid reasoning turns among all turns | |
| | `collapse/first_turn_num_total` | First-turn metrics enabled and data exists | Number of first-turn candidates before filtering empty reasoning | |
| | `collapse/first_turn_num_valid` | First-turn metrics enabled and data exists | Number of first-turn samples with non-empty reasoning | |
| | `collapse/first_turn_valid_rate` | First-turn metrics enabled and data exists | Valid first-turn fraction | |
| | `timing_s/collapse_multi_turn_step` | `multi_turn_enabled=True` | Wall-clock time for the multi-turn collapse pass | |
| | `timing_s/collapse_first_turn_step` | `first_turn_enabled=True` | Wall-clock time for the first-turn collapse pass | |
|
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| The suffix tables below describe the metric families that can appear under `collapse_first_turn_sample/`, `collapse_trajectory_sample/`, and, if re-enabled, `collapse_turn_sample/`. |
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| ### 9.2 Core Information Metrics |
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| | Suffix | Formula / Definition | Typical Reading | |
| |--------|----------------------|-----------------| |
| | `mi_estimate` | $\mathbb{E}[\log p(z \mid x) - \log p_{\text{mix}}(z)]$ | Higher means stronger input dependence | |
| | `mi_seq_estimate` | Sequence-sum version of MI | Same as above, but not length-normalized | |
| | `mi_upper_bound` | $\log N$ | Theoretical ceiling given $N$ unique prompts | |
| | `conditional_entropy_est` | $-\mathbb{E}[\log p(z \mid x)]$ | Higher means more within-input variability | |
| | `conditional_entropy_seq_est` | Sequence-sum version of $H(Z \mid X)$ | Total within-input uncertainty per sequence | |
| | `reasoning_entropy_est` | $-\mathbb{E}[\log p_{\text{mix}}(z)]$ | Total marginal diversity across prompts | |
| | `reasoning_entropy_seq_est` | Sequence-sum version of $H(Z)$ | Total marginal uncertainty per sequence | |
| | `matched_log_prob_mean` | $\mathbb{E}[\log p(z \mid x)]$ | Less negative is better fit to the true prompt | |
| | `marginal_log_prob_mean` | $\mathbb{E}[\log p_{\text{mix}}(z)]$ | Less negative means the response is broadly likely under the prompt mixture | |
| |
| Example W&B keys: |
| - `collapse_first_turn_sample/mi_estimate` |
| - `collapse_trajectory_sample/conditional_entropy_est` |
| - `collapse_first_turn_sample/reasoning_entropy_seq_est` |
| |
| ### 9.3 Retrieval Metrics |
| |
| | Suffix | Definition | Typical Reading | |
| |--------|------------|-----------------| |
| | `retrieval_accuracy` | Top-1 prompt retrieval accuracy from cross log-probs | Higher means reasoning is more prompt-specific | |
| | `retrieval_accuracy@2`, `@4`, `@8` | Top-k retrieval accuracy | Higher means prompt identity is easier to recover | |
| | `retrieval_chance_level` | Expected top-1 accuracy under random guessing | Baseline for comparison | |
| | `retrieval_chance_level@2`, `@4`, `@8` | Expected top-k accuracy under random guessing | Top-k baseline | |
| | `retrieval_above_chance` | `retrieval_accuracy - retrieval_chance_level` | Positive margin over chance | |
| | `retrieval_above_chance@2`, `@4`, `@8` | Top-k accuracy minus top-k chance | Positive margin over chance | |
|
|
| Example W&B keys: |
| - `collapse_first_turn_sample/retrieval_accuracy` |
| - `collapse_trajectory_sample/retrieval_accuracy@4` |
| - `collapse_first_turn_sample/retrieval_above_chance@8` |
|
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| ### 9.4 Variance-Normalized Metrics |
|
|
| | Suffix | Definition | Typical Reading | |
| |--------|------------|-----------------| |
| | `marginal_std` | $\text{std}(\text{marginal})$ | Current-batch spread of marginal log-probs | |
| | `marginal_std_seq` | Sequence-sum version of `marginal_std` | Current-batch spread on total log-prob scale | |
| | `marginal_std_ema` | EMA of `marginal_std` | Smoothed normalization scale | |
| | `marginal_std_ema_seq` | EMA of `marginal_std_seq` | Smoothed sequence-scale normalization | |
| | `mi_zscore` | $(\text{matched} - \text{marginal}) / (\text{marginal\_std} + \epsilon)$ | Standardized MI, batch-normalized | |
| | `mi_zscore_seq` | Sequence-sum version of `mi_zscore` | Standardized sequence-scale MI | |
| | `mi_zscore_ema` | MI normalized by `marginal_std_ema` | More stable across training drift | |
| | `mi_zscore_ema_seq` | Sequence-sum version of `mi_zscore_ema` | Stable sequence-scale normalization | |
|
|
| ### 9.5 Directly Logged Coverage and Timing Metrics |
|
|
| | Logged Key | Meaning | |
| |------------|---------| |
| | `collapse/valid_thinking_rate` | Share of valid reasoning turns among all recorded turns | |
| | `collapse/first_turn_num_total` | Count of first-turn entries before removing empty reasoning | |
| | `collapse/first_turn_num_valid` | Count of first-turn entries with non-empty reasoning | |
| | `collapse/first_turn_valid_rate` | `first_turn_num_valid / first_turn_num_total` | |
| | `timing_s/collapse_multi_turn_step` | Time spent computing multi-turn collapse metrics on this step | |
| | `timing_s/collapse_first_turn_step` | Time spent computing first-turn collapse metrics on this step | |
|
|
| --- |
|
|
| ## 10. Configuration Parameters |
|
|
| | Parameter | Default | Description | |
| |-----------|---------|-------------| |
| | `compute_freq` | 5 | Compute metrics every N steps | |
| | `micro_batch_size` | 128 | Batch size for cross-scoring | |
| | `first_turn_enabled` | True | Compute first-turn metrics | |
| | `multi_turn_enabled` | True | Enable multi-turn sampling | |
| | `num_samples` | 64 | Number of $(x, z)$ pairs to sample | |
| | `std_eps` | 1e-3 | Stability constant for std normalization | |
| | `ema_decay` | 0.9 | EMA decay for cross-time std tracking | |
|
|
| **Configuration in `base.yaml`** (`base.yaml:135-139`): |
| ```yaml |
| collapse_detection: |
| compute_freq: 5 |
| micro_batch_size: 128 |
| first_turn_enabled: true |
| multi_turn_enabled: true |
| num_samples: 64 |
| ``` |
|
|
| --- |
|
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| ## 11. Mathematical Derivations |
|
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| ### 11.1 MI Estimation via Importance Sampling |
|
|
| The mutual information is: |
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| $$I(X; Z) = \mathbb{E}_{p(x,z)} \left[ \log \frac{p(z \mid x)}{p(z)} \right]$$ |
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| Under the empirical distribution $\hat{p}(x) = 1/N$ (uniform over batch prompts): |
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| $$I(X; Z) = \mathbb{E}_{x \sim \hat{p}(x)} \mathbb{E}_{z \sim p(z|x)} \left[ \log \frac{p(z \mid x)}{p_{\text{mix}}(z)} \right]$$ |
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| where $p_{\text{mix}}(z) = \sum_j \hat{p}(x_j) p(z \mid x_j) = \frac{1}{N} \sum_j p(z \mid x_j)$. |
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| Monte Carlo estimate with $K$ samples per prompt: |
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| $$\hat{I}(X; Z) = \frac{1}{NK} \sum_{i=1}^{N} \sum_{k=1}^{K} \left[ \log p(z_{i,k} \mid x_i) - \log p_{\text{mix}}(z_{i,k}) \right]$$ |
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| ### 11.2 Information-Theoretic Identity |
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| The fundamental identity relating our metrics: |
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| $$I(X; Z) = H(Z) - H(Z \mid X)$$ |
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| This means: |
| - If $H(Z|X)$ drops but $H(Z)$ stays constant → MI increases (good) |
| - If both $H(Z)$ and $H(Z|X)$ drop equally → MI stays constant |
| - If $H(Z) \to H(Z|X)$ → MI → 0 (input dependence vanishes) |
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