官术网_书友最值得收藏!

Summary

In this chapter, we discussed how hierarchical clustering works and where it may be best employed. In particular, we discussed various aspects of how clusters can be subjectively chosen through the evaluation of a dendrogram plot. This is a huge advantage compared to k-means clustering if you have absolutely no idea of what you're looking for in the data. Two key parameters that drive the success of hierarchical clustering were also discussed: the agglomerative versus divisive approach and linkage criteria. Agglomerative clustering takes a bottom-up approach by recursively grouping nearby data together until it results in one large cluster. Divisive clustering takes a top-down approach by starting with the one large cluster and recursively breaking it down until each data point falls into its own cluster. Divisive clustering has the potential to be more accurate since it has a complete view of the data from the start; however, it adds a layer of complexity that can decrease the stability and increase the runtime.

Linkage criteria grapples with the concept of how distance is calculated between candidate clusters. We have explored how centroids can make an appearance again beyond k-means clustering, as well as single and complete linkage criteria. Single linkage finds cluster distances by comparing the closest points in each cluster, while complete linkage finds cluster distances by comparing more distant points in each cluster. From the understanding that you have gained in this chapter, you are now able to evaluate how both k-means and hierarchical clustering can best fit the challenge that you are working on. In the next chapter, we will cover a clustering approach that will serve us best in the highly complex data: DBSCAN (Density-Based Spatial Clustering of Applications with Noise).

主站蜘蛛池模板: 丹江口市| 文水县| 泰来县| 浦江县| 无极县| 红原县| 夏津县| 景泰县| 绵阳市| 义乌市| 长武县| 文水县| 赤峰市| 象山县| 宁城县| 和龙市| 韶关市| 五家渠市| 化隆| 临城县| 浙江省| 洪泽县| 邵阳县| 监利县| 兴义市| 石河子市| 陇川县| 玉林市| 新乡市| 亳州市| 集贤县| 祁连县| 湟源县| 霍城县| 灵山县| 嫩江县| 独山县| 浦城县| 行唐县| 仁化县| 尖扎县|