Exemple #1
0
        /// <summary>
        /// Sequential Model-based optimization (SMBO). SMBO learns a model based on the initial parameter sets and scores.
        /// This model is used to sample new promising parameter candiates which are evaluated and added to the existing paramter sets.
        /// This process iterates several times. The method is computational expensive so is most relevant for expensive problems,
        /// where each evaluation of the function to minimize takes a long time, like hyper parameter tuning a machine learning method.
        /// But in that case it can usually reduce the number of iterations required to reach a good solution compared to less sophisticated methods.
        /// Implementation loosely based on:
        /// http://www.cs.ubc.ca/~hutter/papers/10-TR-SMAC.pdf
        /// https://papers.nips.cc/paper/4522-practical-bayesian-optimization-of-machine-learning-algorithms.pdf
        /// https://papers.nips.cc/paper/4443-algorithms-for-hyper-parameter-optimization.pdf
        /// </summary>
        /// <param name="parameters">Each row is a series of values for a specific parameter</param>
        /// <param name="maxIterations">Maximum number of iterations. MaxIteration * numberOfCandidatesEvaluatedPrIteration = totalFunctionEvaluations</param>
        /// <param name="numberOfStartingPoints">Number of randomly created starting points to use for the initial model in the first iteration (default is 10)</param>
        /// <param name="numberOfCandidatesEvaluatedPrIteration">How many candiate parameter set should by sampled from the model in each iteration.
        /// The parameter sets are inlcuded in order of most promissing outcome (default is 3)</param>
        /// <param name="seed">Seed for the random initialization</param>
        public SequentialModelBasedOptimizer(double[][] parameters, int maxIterations, int numberOfStartingPoints = 10, int numberOfCandidatesEvaluatedPrIteration = 3, int seed = 42)
        {
            if (parameters == null)
            {
                throw new ArgumentNullException("parameters");
            }
            if (maxIterations <= 0)
            {
                throw new ArgumentNullException("maxIterations must be at least 1");
            }
            if (numberOfStartingPoints < 1)
            {
                throw new ArgumentNullException("numberOfParticles must be at least 1");
            }

            m_parameters             = parameters;
            m_maxIterations          = maxIterations;
            m_numberOfStartingPoints = numberOfStartingPoints;
            m_numberOfCandidatesEvaluatedPrIteration = numberOfCandidatesEvaluatedPrIteration;

            m_random = new Random(seed);
            // hyper parameters for regression random forest learner
            m_learner = new RegressionRandomForestLearner(20, 1, 2000, parameters.Length, 1e-6, 1.0, 42, false);
            // optimizer for finding maximum expectation (most promissing hyper parameters) from random forest model
            m_optimizer = new ParticleSwarmOptimizer(m_parameters, 100, 40);
        }
Exemple #2
0
        /// <summary>
        /// Sequential Model-based optimization (SMBO). SMBO learns a model based on the initial parameter sets and scores.
        /// This model is used to sample new promising parameter candiates which are evaluated and added to the existing paramter sets.
        /// This process iterates several times. The method is computational expensive so is most relevant for expensive problems,
        /// where each evaluation of the function to minimize takes a long time, like hyper parameter tuning a machine learning method.
        /// But in that case it can usually reduce the number of iterations required to reach a good solution compared to less sophisticated methods.
        /// Implementation loosely based on:
        /// http://www.cs.ubc.ca/~hutter/papers/10-TR-SMAC.pdf
        /// https://papers.nips.cc/paper/4522-practical-bayesian-optimization-of-machine-learning-algorithms.pdf
        /// https://papers.nips.cc/paper/4443-algorithms-for-hyper-parameter-optimization.pdf
        /// </summary>
        /// <param name="parameters">Each row is a series of values for a specific parameter</param>
        /// <param name="maxIterations">Maximum number of iterations. MaxIteration * numberOfCandidatesEvaluatedPrIteration = totalFunctionEvaluations</param>
        /// <param name="previousParameterSets">Parameter sets from previous run</param>
        /// <param name="previousParameterSetScores">Scores from from previous run corresponding to each parameter set</param>
        /// <param name="numberOfCandidatesEvaluatedPrIteration">How many candiate parameter set should by sampled from the model in each iteration.
        /// The parameter sets are inlcuded in order of most promissing outcome (default is 3)</param>
        /// <param name="seed">Seed for the random initialization</param>
        public SequentialModelBasedOptimizer(double[][] parameters, int maxIterations, List <double[]> previousParameterSets, List <double> previousParameterSetScores,
                                             int numberOfCandidatesEvaluatedPrIteration = 3, int seed = 42)
        {
            if (parameters == null)
            {
                throw new ArgumentNullException("parameters");
            }
            if (maxIterations <= 0)
            {
                throw new ArgumentNullException("maxIterations must be at least 1");
            }
            if (previousParameterSets == null)
            {
                throw new ArgumentNullException("previousParameterSets");
            }
            if (previousParameterSetScores == null)
            {
                throw new ArgumentNullException("previousResults");
            }
            if (previousParameterSets.Count != previousParameterSetScores.Count)
            {
                throw new ArgumentException("previousParameterSets length: "
                                            + previousParameterSets.Count + " does not correspond with previousResults length: " + previousParameterSetScores.Count);
            }
            if (previousParameterSetScores.Count < 2 || previousParameterSets.Count < 2)
            {
                throw new ArgumentException("previousParameterSets length and previousResults length must be at least 2 and was: " + previousParameterSetScores.Count);
            }


            m_parameters    = parameters;
            m_maxIterations = maxIterations;
            m_numberOfCandidatesEvaluatedPrIteration = numberOfCandidatesEvaluatedPrIteration;

            m_random = new Random(seed);
            // hyper parameters for regression random forest learner
            m_learner = new RegressionRandomForestLearner(20, 1, 2000, parameters.Length, 1e-6, 1.0, 42, false);
            // optimizer for finding maximum expectation (most promissing hyper parameters) from random forest model
            m_optimizer = new ParticleSwarmOptimizer(m_parameters, 100, 40);

            m_previousParameterSets      = previousParameterSets;
            m_previousParameterSetScores = previousParameterSetScores;
        }