Select the desired Level or Schedule Type to find available classes for the course. |
DS 4400 - Machine Learning and Data Mining 1 |
Introduces supervised and unsupervised predictive modeling, data mining, and machine-learning concepts. Uses tools and libraries to analyze data sets, build predictive models, and evaluate the fit of the models. Covers common learning algorithms, including dimensionality reduction, classification, principal-component analysis, k-NN, k-means clustering, gradient descent, regression, logistic regression, regularization, multiclass data and algorithms, boosting, and decision trees. Studies computational aspects of probability, statistics, and linear algebra that support algorithms, including sampling theory and computational learning. Requires programming in R and Python. Applies concepts to common problem domains, including recommendation systems, fraud detection, or advertising.
4.000 Credit hours 4.000 Lecture hours Levels: Undergraduate Schedule Types: Lecture Data Science Department Course Attributes: NUpath Analyzing/Using Data, NUpath Capstone Experience, NUpath Writing Intensive, Computer&Info Sci Restrictions: Must be enrolled in one of the following Levels: Undergraduate Prerequisites: (Undergraduate level DS 3000 Minimum Grade of D- or Undergraduate level CS 2810 Minimum Grade of D-) and (Undergraduate level DS 3500 Minimum Grade of D- or Undergraduate level CS 3500 Minimum Grade of D-) |
Return to Previous | New Search |