Frosi Exam: Chapter 4
Вариантов на этом колесе: 39
- What are we focusing on with unsupervised models?
- Introduce clustering and the advantages over classification and regression.
- Describe one of the three algorithms discussed in clustering.
- Name the output of clustering. Where to cut off the dendrogram and the purpose of using the silhouette approach.
- What is one of the most common approach to clustering?
- How would you use top bottom approach? Bottom up?
- What are some issues with k-mean?
- Briefly explain the components on which DBSCAN is built on.
- How would you select for k? What parameters affect k-means?
- Describe the bottom half of class clustering?
- Do you remember the task that is the most time-consuming? Why is it important?
- What are core points? Boundary points? Outliers?
- Describe bottom up clustering.
- Describe what clustering is.
- K-Means. How does the initial selection of the centroid influence the resulting clusters? Do you want them close or far apart?
- What are we focusing on with unsupervised models?
- What are clustering useful for?
- What does a good quality clustering look like?
- What is the goal of clustering?
- What are some applications of clustering?
- What are the 2 main types of clustering methods?
- What are the resulting clusters from hierarchical and partitioning clusters?
- What is bottom up approach? Pros and cons.
- What is top down approach? Pros and cons.
- What are the types of linkages found in hierarchical clustering?
- What is K-means algorithm? Pros and cons.
- What happens when you increase k in k-means?
- What pre-processing tasks must you do before using k-means?
- What post-processing tasks must you do before using k-means?
- What are some tips and tricks when using k-means in the initial assignment of points?
- What is density-based clustering? Name some algorithms?
- What are the parameters of density-based clustering?
- Define directly density-reachable, density-reachable and density-connected?
- What is DBSCAN algorithm? Why does it fail sometimes? Pros and cons
- How do we evaluate clustering?
- What are the metrics to evaluate clustering and to be classified into?
- How can be SSE do used to evaluate clustering?
- What are some of the internal indices?
- What is Silhouette Coefficient. Average silhouette? When and where would we use this?
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