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fit-hidden-markov-model

pjt222
업데이트됨 2 days ago
6 조회
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정보

이 스킬은 순차 데이터에 은닉 마르코프 모델(HMM)을 적합시키며, 학습에는 Baum-Welch 알고리즘을, 상태 추론에는 Viterbi 디코딩을 사용합니다. 시계열을 시장 상태나 음소와 같은 잠재 체계로 분할하고, 서로 다른 수의 은닉 상태를 가진 모델을 비교하도록 설계되었습니다. 개발자는 이를 통해 시퀀스 확률을 계산하고 관측값으로부터 가장 가능성 높은 은닉 상태 경로를 디코딩할 수 있습니다.

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Claude Code

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기본
npx skills add pjt222/agent-almanac -a claude-code
플러그인 명령대체
/plugin add https://github.com/pjt222/agent-almanac
Git 클론대체
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/fit-hidden-markov-model

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문서

Fit Hidden Markov Model

Fit a hidden Markov model (HMM) to sequential observation data using the Baum-Welch expectation-maximization algorithm, decode the most likely hidden state sequence via Viterbi, and select the optimal number of hidden states through information criteria.

When to Use

  • You observe a sequence of emissions but the underlying generative states are not directly observable
  • You suspect your data is generated by a system that switches between a finite number of regimes
  • You need to segment a time series into latent phases (e.g., market regimes, speech phonemes, biological sequence annotation)
  • You want to compute the probability of an observed sequence under a generative model
  • You need the most likely sequence of hidden states given observations (decoding)
  • You are comparing models with different numbers of hidden states for the best complexity-fit trade-off

Inputs

Required

InputTypeDescription
observationssequence/matrixObserved data sequence (univariate or multivariate)
n_hidden_statesintegerNumber of hidden states to fit (or a range for model selection)
emission_typestringDistribution family for emissions: "gaussian", "discrete", "poisson", "multinomial"

Optional

InputTypeDefaultDescription
initial_paramsdictrandom/heuristicInitial transition matrix, emission parameters, and start probabilities
n_restartsinteger10Number of random restarts to mitigate local optima
max_iterationsinteger500Maximum EM iterations per restart
convergence_tolfloat1e-6Log-likelihood convergence threshold for EM
state_rangelist of ints[n_hidden_states]Range of state counts for model selection
covariance_typestring"full"For Gaussian emissions: "full", "diagonal", "spherical"
regularizationfloat1e-6Small constant added to diagonal of covariance matrices to prevent singularity

Procedure

Step 1: Define Hidden States and Observation Model

1.1. Specify the number of hidden states K (or a candidate range for model selection in Step 5).

1.2. Choose the emission distribution family based on the data type:

  • Continuous data: Gaussian (univariate or multivariate)
  • Count data: Poisson or negative binomial
  • Categorical data: discrete/multinomial

1.3. Define the model components:

  • Transition matrix A of size K x K: A[i,j] = P(z_t = j | z_{t-1} = i)
  • Emission parameters theta_k for each state k: distribution-specific (e.g., mean and covariance for Gaussian)
  • Initial state distribution pi: pi[k] = P(z_1 = k)

1.4. Verify observation data is properly formatted: no missing values in the sequence, consistent dimensionality, and sufficient length relative to the number of parameters.

Got: A clearly specified HMM architecture with K states, a chosen emission family, and clean observation data of length T >> K^2.

If fail: If data contains missing values, impute or remove affected segments. If T is too small relative to K, reduce K or acquire more data.

Step 2: Initialize Parameters

2.1. Generate initial parameters for each of the n_restarts restarts:

  • Transition matrix: Random stochastic matrix (each row drawn from a Dirichlet distribution) or a slightly perturbed uniform matrix.
  • Emission parameters: Use K-means clustering on the observations to initialize means; compute cluster variances for Gaussian emissions.
  • Initial distribution: Uniform or proportional to cluster sizes from K-means.

2.2. For the first restart, use the K-means-informed initialization (generally the strongest start). For subsequent restarts, use random perturbations.

2.3. Verify all initial parameters are valid:

  • Transition matrix rows sum to 1 with all entries positive.
  • Emission parameters are in the valid domain (e.g., covariance matrices are positive definite).
  • Initial distribution sums to 1.

Got: n_restarts sets of valid initial parameters, with at least one data-driven initialization.

If fail: If K-means fails to converge, use purely random initialization with more restarts. If covariance matrices are singular, add the regularization constant to the diagonal.

Step 3: Run Baum-Welch EM for Parameter Estimation

3.1. E-step (Forward-Backward algorithm):

  • Compute forward probabilities alpha[t,k] = P(o_1,...,o_t, z_t=k | model) using the recursion:
    • alpha[1,k] = pi[k] * b_k(o_1)
    • alpha[t,k] = sum_j(alpha[t-1,j] * A[j,k]) * b_k(o_t)
  • Compute backward probabilities beta[t,k] = P(o_{t+1},...,o_T | z_t=k, model):
    • beta[T,k] = 1
    • beta[t,k] = sum_j(A[k,j] * b_j(o_{t+1}) * beta[t+1,j])
  • Compute state posterior gamma[t,k] = P(z_t=k | O, model):
    • gamma[t,k] = alpha[t,k] * beta[t,k] / P(O | model)
  • Compute transition posterior xi[t,i,j] = P(z_t=i, z_{t+1}=j | O, model).

3.2. M-step (Parameter re-estimation):

  • Update transition matrix: A[i,j] = sum_t(xi[t,i,j]) / sum_t(gamma[t,i])
  • Update emission parameters using weighted sufficient statistics:
    • Gaussian mean: mu_k = sum_t(gamma[t,k] * o_t) / sum_t(gamma[t,k])
    • Gaussian covariance: weighted scatter matrix plus regularization
    • Discrete: b_k(v) = sum_t(gamma[t,k] * I(o_t=v)) / sum_t(gamma[t,k])
  • Update initial distribution: pi[k] = gamma[1,k]

3.3. Compute log-likelihood: log P(O | model) = log sum_k(alpha[T,k]). Use the log-sum-exp trick to prevent underflow.

3.4. Scaling: Use scaled forward-backward variables to prevent numerical underflow for long sequences. Normalize alpha at each time step and accumulate log scaling factors.

3.5. Repeat E-step and M-step until log-likelihood change is below convergence_tol or max_iterations is reached.

3.6. Across all restarts, keep the parameter set with the highest final log-likelihood.

Got: Monotonically non-decreasing log-likelihood across iterations, converging within max_iterations. Final parameters are valid (stochastic matrices, positive-definite covariances).

If fail: If log-likelihood decreases, there is a bug in the E-step or M-step -- verify formulas. If convergence is very slow, try better initialization or increase max_iterations. If covariance becomes singular, increase regularization.

Step 4: Apply Viterbi Decoding for Most Likely State Sequence

4.1. Initialize Viterbi variables:

  • delta[1,k] = log(pi[k]) + log(b_k(o_1))
  • psi[1,k] = 0 (no predecessor)

4.2. Recurse forward for t = 2,...,T:

  • delta[t,k] = max_j(delta[t-1,j] + log(A[j,k])) + log(b_k(o_t))
  • psi[t,k] = argmax_j(delta[t-1,j] + log(A[j,k]))

4.3. Terminate:

  • z*_T = argmax_k(delta[T,k])
  • Best path log-probability: max_k(delta[T,k])

4.4. Backtrace for t = T-1,...,1:

  • z*_t = psi[t+1, z*_{t+1}]

4.5. Output the decoded state sequence z* = (z*_1, ..., z*_T) and its log-probability.

4.6. Compare the Viterbi path probability to the total sequence probability from the forward algorithm to assess how dominant the best path is.

Got: A single most-likely state sequence of length T with each entry in {1,...,K}. The Viterbi log-probability should be less than or equal to the total log-likelihood.

If fail: If the Viterbi path has log-probability of negative infinity, some transition or emission probability is zero where it should not be. Add floor values to prevent log(0).

Step 5: Perform Model Selection (BIC/AIC Across Model Orders)

5.1. For each candidate number of hidden states K in state_range, fit the full HMM (Steps 2-4).

5.2. Compute the number of free parameters p:

  • Transition matrix: K * (K - 1) (each row is a simplex)
  • Emission parameters: depends on family (e.g., Gaussian with full covariance in d dimensions: K * (d + d*(d+1)/2))
  • Initial distribution: K - 1

5.3. Compute information criteria:

  • BIC = -2 * log_likelihood + p * log(T)
  • AIC = -2 * log_likelihood + 2 * p
  • AICc = AIC + 2*p*(p+1) / (T - p - 1) (small-sample correction)

5.4. Select the model with the lowest BIC (preferred for consistency) or AIC (preferred for prediction). Report both.

5.5. Tabulate results: for each K, show log-likelihood, number of parameters, BIC, AIC, and convergence status.

5.6. If the optimal K is at the boundary of state_range, extend the range and re-fit.

Got: A clear minimum in BIC/AIC identifying the optimal number of hidden states. The selected model should have converged and have interpretable state meanings.

If fail: If no clear minimum exists (monotonically decreasing BIC), the model may be misspecified -- consider a different emission family. If all models have poor log-likelihood, the data may not follow an HMM structure.

Step 6: Validate with Held-Out Data and Posterior Decoding

6.1. Split data into training and validation sets (e.g., 80/20 or use multiple sequences if available).

6.2. Fit the model on training data. Compute log-likelihood on held-out data using the forward algorithm (do not re-fit parameters).

6.3. Posterior decoding (alternative to Viterbi):

  • For each time step, assign the state with highest posterior probability: z^_t = argmax_k(gamma[t,k])
  • This maximizes the expected number of correctly decoded states (vs. Viterbi which maximizes the joint path probability).

6.4. Compare Viterbi and posterior decoding:

  • Compute agreement rate between the two decoded sequences.
  • Regions of disagreement indicate ambiguous state assignments.

6.5. Assess state interpretability:

  • Examine emission parameters for each state (means, variances, discrete distributions).
  • Verify states correspond to meaningful regimes in the domain context.
  • Check that state dwell times (implied by diagonal of A) are reasonable.

6.6. Compute held-out log-likelihood per observation and compare across model orders to confirm the training-set model selection.

Got: Held-out log-likelihood is reasonably close to training log-likelihood (no severe overfitting). Viterbi and posterior decoding agree on 90%+ of time steps. States have distinct, interpretable emission distributions.

If fail: If held-out likelihood is much worse than training, the model is overfitting -- reduce K or increase regularization. If states are not interpretable, try different initializations or a different emission family.

Validation

  • Log-likelihood is monotonically non-decreasing across Baum-Welch iterations for each restart
  • The transition matrix is row-stochastic (rows sum to 1, all entries non-negative)
  • Emission parameters are in the valid domain (positive-definite covariances, valid probability distributions)
  • The Viterbi path log-probability does not exceed the total sequence log-probability
  • BIC/AIC curves show a clear minimum at the selected model order
  • Held-out log-likelihood confirms the model generalizes beyond the training set
  • Forward and backward probability computations agree: P(O) = sum_k(alpha[T,k]) = sum_k(pi[k] * b_k(o_1) * beta[1,k])

Pitfalls

  • Local optima in EM: The Baum-Welch algorithm converges to a local maximum, not necessarily the global one. Always use multiple random restarts and pick the best.
  • Numerical underflow: Forward-backward probabilities shrink exponentially with sequence length. Use log-space computation or scaled variables to prevent underflow to zero.
  • Overfitting with too many states: Each additional hidden state adds O(K + d^2) parameters. Use BIC (not just likelihood) for model selection and validate on held-out data.
  • Label switching: Hidden states are identifiable only up to permutation. When comparing models across restarts, match states by emission parameters, not by index.
  • Degenerate states: A state may collapse to explain a single observation (Gaussian with near-zero variance). Regularization on covariance matrices prevents this.
  • Confusing Viterbi and posterior decoding: Viterbi gives the single best joint path; posterior decoding gives the best marginal state at each time step. They answer different questions and can disagree significantly.
  • Ignoring state dwell times: The geometric dwell-time distribution implicit in standard HMMs may be a poor fit for data with long regime durations. Consider hidden semi-Markov models if dwell times are non-geometric.

Related Skills

  • Model Markov Chain -- prerequisite for understanding the transition structure that underlies the hidden layer
  • Simulate Stochastic Process -- can be used to generate synthetic HMM data for testing and to simulate from a fitted model for posterior predictive checks

GitHub 저장소

pjt222/agent-almanac
경로: i18n/caveman-lite/skills/fit-hidden-markov-model
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agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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