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Machine learning is a field of computer science that uses statistical techniques to build models from data. The ability to understand the principles of probability, hypothesistesting, and confidence intervals enables data scientists to validate their findings and ascertain the reliability of their analyses.
Statistical Concepts A strong understanding of statistical concepts, including probability, hypothesistesting, regression analysis, and experimental design, is paramount in Data Science roles. Examples include linear regression, logistic regression, and supportvectormachines.
HypothesisTesting : Statistical Models help test hypotheses by analysing relationships between variables. These models help in hypothesistesting and determining the relationships between variables. Bayesian models and hypothesistests (like t-tests or chi-square tests) are examples of inferential models.
Concepts such as probability distributions, hypothesistesting , and Bayesian inference enable ML engineers to interpret results, quantify uncertainty, and improve model predictions. SupportVectorMachines (SVM) SVMs are powerful classifiers that separate data into distinct categories by finding an optimal hyperplane.
Some of the most notable technologies include: Hadoop An open-source framework that allows for distributed storage and processing of large datasets across clusters of computers. Statistical Analysis Introducing statistical methods and techniques for analysing data, including hypothesistesting, regression analysis, and descriptive statistics.
Explore Machine Learning with Python: Become familiar with prominent Python artificial intelligence libraries such as sci-kit-learn and TensorFlow. Begin by employing algorithms for supervised learning such as linear regression , logistic regression, decision trees, and supportvectormachines.
C Classification: A supervised Machine Learning task that assigns data points to predefined categories or classes based on their characteristics. Clustering: An unsupervised Machine Learning technique that groups similar data points based on their inherent similarities.
Hypothesistesting and regression analysis are crucial for making predictions and understanding data relationships. Machine Learning Supervised Learning includes algorithms like linear regression, decision trees, and supportvectormachines.
There are majorly two categories of sampling techniques based on the usage of statistics, they are: Probability Sampling techniques: Clustered sampling, Simple random sampling, and Stratified sampling. Another example can be the algorithm of a supportvectormachine. These are called supportvectors.
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