Machine Learning

Description

A mindmap for Machine Learning
Vinh Phạm
Mind Map by Vinh Phạm, updated more than 1 year ago
Vinh Phạm
Created by Vinh Phạm almost 6 years ago
103
0

Resource summary

Machine Learning

Annotations:

  • https://www.kdnuggets.com/2017/10/top-10-machine-learning-algorithms-beginners.html Home made ML (Github) https://github.com/vinhpq/homemade-machine-learning
  1. Supervised Learning

    Annotations:

    • Use labeled training data to learn the mapping function from the input variable (X) to the output variable (Y): Y = f(X)
    1. Regression

      Annotations:

      • To predict the outcome of a given sample where the output variable is in the form of real values. Examples include real-valued labels denoting the amount of rainfall, the height of a person.
      1. Linear Regression

        Annotations:

        • The relationship between the input variables (x) and output variable (y) is expressed as an equation of the form y = a + bx. Thus, the goal of linear regression is to find out the values of coefficients a and b. Here, a is the intercept and b is the slope of the line. https://www.kdnuggets.com/wp-content/uploads/Linearreg1-300x150.gif
        1. Classification

          Annotations:

          • To predict the outcome of a given sample where the output variable is in the form of categories. Examples include labels such as male and female, sick and healthy.
          1. Logistic Regression

            Annotations:

            • Linear regression predictions are continuous values (rainfall in cm),logistic regression predictions are discrete values (whether a student passed/failed) after applying a transformation function.
            1. Decision Trees

              Annotations:

              • The model is used as follows to make predictions: walk the splits of the tree to arrive at a leaf node and output the value present at the leaf node.
              1. Naive Bayes

                Annotations:

                • To calculate the probability that an event will occur, given that another event has already occurred, we use Bayes’ Theorem. 
                1. KNN

                  Annotations:

                  • The k-nearest neighbours algorithm uses the entire dataset as the training set, rather than splitting the dataset into a trainingset and testset. When an outcome is required for a new data instance, the KNN algorithm goes through the entire dataset to find the k-nearest instances to the new instance, or the k number of instances most similar to the new record, and then outputs the mean of the outcomes (for a regression problem) or the mode (most frequent class) for a classification problem. The value of k is user-specified. The similarity between instances is calculated using measures such as Euclidean distance and Hamming distance.
              2. Unsupervised Learning

                Annotations:

                • Unsupervised learning problems possess only the input variables (X) but no corresponding output variables. It uses unlabeled training data to model the underlying structure of the data.
                1. Association Rule Learning

                  Annotations:

                  • To discover the probability of the co-occurrence of items in a collection. It is extensively used in market-basket analysis. Example: If a customer purchases bread, he is 80% likely to also purchase eggs.
                  1. Clustering

                    Annotations:

                    • To group samples such that objects within the same cluster are more similar to each other than to the objects from another cluster.
                    1. Dimensionality Reduction

                      Annotations:

                      • True to its name, Dimensionality Reduction means reducing the number of variables of a dataset while ensuring that important information is still conveyed. Dimensionality Reduction can be done using Feature Extraction methods and Feature Selection methods. Feature Selection selects a subset of the original variables. Feature Extraction performs data transformation from a high-dimensional space to a low-dimensional space.
                    2. Reinforcement Learning

                      Annotations:

                      • Reinforcement learning is a type of machine learning algorithm that allows the agent to decide the best next action based on its current state, by learning behaviours that will maximize the reward. Reinforcement algorithms usually learn optimal actions through trial and error. They are typically used in robotics – where a robot can learn to avoid collisions by receiving negative feedback after bumping into obstacles, and in video games – where trial and error reveals specific movements that can shoot up a player’s rewards. The agent can then use these rewards to understand the optimal state of game play and choose the next action.
                      Show full summary Hide full summary

                      Similar

                      Machine Learning
                      Abhijay Gupta
                      Python
                      Jay Prakash
                      Machine Learning
                      Luan Pessoa Rocha
                      Terminology
                      hvrd1
                      Artificial Intellegence
                      nicky elin
                      Machine learning: Supervision
                      Domhnall Murphy
                      Should You Adopt Cognitive Technology for Your Business or Not?
                      Cred Force
                      Relation extraction
                      François Plesse
                      Machine Learning
                      Alberto Ochoa
                      Técnicas
                      Lina Ochoa
                      Neural networks
                      Alexander Kozlovsky