Clustering for Data Mining - A Data Recovery Approach
Rather than the traditional set of ad hoc techniques, Clustering for Data Mining: A Data Recovery Approach presents a theory that not only closes gaps in K-Means and Ward methods, but also extends them into areas of current interest, such as clustering mixed scale data and incomplete clustering. The author suggests original methods for both cluster finding and cluster description, addresses related topics such as principal component analysis, contingency measures, and data visualization, and includes nearly 60 computational examples covering all stages of clustering, from data pre-processing to cluster validation and results interpretation.
Tilaustuote | Arvioimme, että tuote lähetetään meiltä noin 5-8 arkipäivässä |
Tilaa jouluksi viimeistään 27.11.2024