Home >Technology peripherals >AI >Symbolic algorithm for returning to the origin
The symbolic regression algorithm is a machine learning algorithm that automatically builds mathematical models. Its main goal is to predict the value of the output variable by analyzing the functional relationship between the variables in the input data. This algorithm combines the ideas of genetic algorithms and evolutionary strategies to gradually improve the accuracy of the model by randomly generating and combining mathematical expressions. By continuously optimizing the model, symbolic regression algorithms can help us better understand and predict complex data relationships.
The process of symbolic regression algorithm is as follows:
1. Define the problem: determine the input variables and output variables.
2. Initialize the population: Randomly generate a set of mathematical expressions as the population.
Evaluate fitness: Use the mathematical expression of each individual to predict the data in the training set, and calculate the error between the predicted value and the actual value as the fitness.
4. Selection: Based on the fitness, select a part of individuals as the parents of the next generation.
5. Crossover: Randomly combine the mathematical expressions of parent individuals to generate offspring individuals.
6. Mutation: Randomly modify the mathematical expressions of offspring individuals and introduce some new elements.
Evaluate fitness: Use mathematical expressions of a new generation of individuals to predict the data in the training set, and calculate the error between the predicted value and the actual value as fitness.
8. Judgment termination: If the preset termination condition is reached, the algorithm ends; otherwise, return to step 4.
9. Output results: Select the individual with the best fitness as the final model to predict the data in the test set.
The advantage of the symbolic regression algorithm is that it can handle nonlinear and high-dimensional data, does not require manual selection of features and functional forms, and has high automation and generalization capabilities.
Through the above process, you can know that the symbolic regression algorithm is an algorithm that uses symbolic-based derivation methods to automatically discover mathematical models. The basic principle is to gradually optimize the accuracy of the model through continuous random generation, crossover and mutation of mathematical expressions. By iterating over time, the symbolic regression algorithm can discover an expression that best fits the training data and can be used to predict the test data.
The symbolic regression algorithm is mainly divided into the following types:
Symbolic regression algorithm based on genetic algorithm
Genetic algorithm It is one of the most commonly used optimization algorithms for symbolic regression algorithms. It generates new individuals through crossover and mutation operations, and selects excellent individuals for evolution by evaluating fitness. This algorithm can automatically discover non-linear relationships between data.
Symbolic regression algorithm based on evolutionary strategy
Evolutionary strategy is an algorithm that optimizes mathematical functions through iterative search. It randomly selects some solutions and generates new solutions through mutation and selection operations. This algorithm can automatically discover relationships in high-dimensional, non-linear and noisy data.
Symbolic regression algorithm based on genetic programming
Genetic programming is an algorithm that optimizes mathematical functions through genetic algorithms. It treats a mathematical function as a planning problem and uses genetic algorithms to search for optimal solutions. This algorithm can automatically discover complex relationships between data.
Symbolic regression algorithm based on simulated annealing
Simulated annealing is an algorithm that searches for the optimal solution by simulating the physical annealing process. It avoids falling into local optimal solutions by randomly selecting new solutions and accepting inferior solutions with a certain probability. This algorithm can automatically discover relationships in nonlinear and noisy data.
Symbolic regression algorithm based on particle swarm optimization
Particle swarm optimization is an algorithm that searches for the optimal solution by simulating the foraging process of a flock of birds. It avoids falling into local optima by randomly selecting new solutions and adjusting the search direction based on past experience. This algorithm can automatically discover relationships in high-dimensional data, but requires appropriate selection of parameters to achieve optimal results.
Symbolic regression algorithm based on artificial immune algorithm
The artificial immune algorithm is an algorithm that searches for the optimal solution by simulating the human immune system. It avoids falling into local optima by randomly selecting new solutions and adjusting the search direction based on past experience and immune memory. This algorithm can automatically discover relationships in nonlinear and noisy data.
These algorithms can all be used to solve symbolic regression problems. Each algorithm has its advantages and scope of application. Depending on the characteristics and requirements of the problem, an appropriate symbolic regression algorithm can be selected to solve it.
The above is the detailed content of Symbolic algorithm for returning to the origin. For more information, please follow other related articles on the PHP Chinese website!