Data Science
he 40 data science techniques
- Linear Regression
- Logistic Regression
- Jackknife Regression *
- Density Estimation
- Confidence Interval
- Test of Hypotheses
- Pattern Recognition
- Clustering – (aka Unsupervised Learning)
- Supervised Learning
- Time Series
- Decision Trees
- Random Numbers
- Monte-Carlo Simulation
- Bayesian Statistics
- Naive Bayes
- Principal Component Analysis – (PCA)
- Ensembles
- Neural Networks
- Support Vector Machine – (SVM)
- Nearest Neighbors – (k-NN)
- Feature Selection – (aka Variable Reduction)
- Indexation / Cataloguing *
- (Geo-) Spatial Modeling
- Recommendation Engine *
- Search Engine *
- Attribution Modeling *
- Collaborative Filtering *
- Rule System
- Linkage Analysis
- Association Rules
- Scoring Engine
- Segmentation
- Predictive Modeling
- Graphs
- Deep Learning
- Game Theory
- Imputation
- Survival Analysis
- Arbitrage
- Lift Modeling
- Yield Optimization
- Cross-Validation
- Model Fitting
- Relevancy Algorithm *
- Experimental Design
No announcements at this moment.
Be the first to add a review.
Please, login to leave a review