官术网_书友最值得收藏!

One-vs-all

This is probably the most common strategy and is widely adopted by scikit-learn for most of its algorithms. If there are n output classes, n classifiers will be trained in parallel considering there is always a separation between an actual class and the remaining ones. This approach is relatively lightweight (at most, n-1 checks are needed to find the right class, so it has an O(n) complexity) and, for this reason, it's normally the default choice and there's no need for further actions.

主站蜘蛛池模板: 西充县| 维西| 炎陵县| 武平县| 大名县| 托里县| 金沙县| 南宁市| 招远市| 大洼县| 水城县| 珲春市| 吴忠市| 越西县| 宝应县| 祥云县| 杨浦区| 秀山| 新蔡县| 新民市| 罗定市| 冷水江市| 五原县| 光山县| 西峡县| 札达县| 和林格尔县| 乐亭县| 上饶县| 博爱县| 兴业县| 思南县| 肇源县| 日照市| 邵阳县| 苍梧县| 大渡口区| 吉隆县| 文成县| 宝坻区| 太白县|