官术网_书友最值得收藏!

Regression versus classification

Amazon ML does two types of predictive analytics: classification and regression.

As discussed in the preceding paragraph, classification is about predicting a finite set of labels or categories for a given set of samples.

  • In the case of two classes, the problem is called Binary classification
  • When there are more than two classes and the classes are mutually exclusive, the problem is a multiclass classification problem
  • If the samples can belong to several classes at once, we talk about a multilabel classification problem

In short, classification is the prediction of a finite set of classes, labels, categories.

  • Examples of Binary classification are: buying outcome (yes/no), survival outcome (yes/no), anomaly detection (spam, bots), and so on
  • Examples of multiclass classification are: classifying object in images (fruits, cars, and so on), identifying a music genre, or a movement based on smartphone sensors, document classification and so on

In regression problems, the outcome has continuous values. Predicting age, weight, stock prices, salaries, rainfall, temperature, and so forth are all regression problems. We talk about multiple regression when there are several predictors and multivariate regression when the predictions predict several values for each sample. Amazon ML does univariate regression and classification, both binary and multiclass, but not multilabel.

主站蜘蛛池模板: 定陶县| 武山县| 兴隆县| 梁平县| 菏泽市| 江源县| 清河县| 肥西县| 天祝| 临武县| 南京市| 宣化县| 萨嘎县| 揭阳市| 甘孜| 甘德县| 丰顺县| 邮箱| 正蓝旗| 健康| 石家庄市| 辰溪县| 青阳县| 汨罗市| 乌鲁木齐市| 武陟县| 九江市| 宁明县| 莱州市| 双牌县| 嵊泗县| 瓦房店市| 阳朔县| 衡山县| 新巴尔虎左旗| 淅川县| 响水县| 潜山县| 田东县| 思南县| 庆云县|