官术网_书友最值得收藏!

  • R Programming By Example
  • Omar Trejo Navarro
  • 267字
  • 2021-07-02 21:30:43

Setting up the data

As it's usual with data analysis, the first step is to understand the data we will be working with. In this case, the data is the same as in Chapter 2, Understanding Votes with Descriptive Statistics, and we have already understood some of its main characteristics. Mainly, we've understood that age, education, and race have considerable effects over the propensity to vote in favor of the UK leaving or remaining in the EU.

The focus of this chapter will be on using linear models to predict the Proportion and Vote variables, which contain the percentage of votes in favor of leaving the EU and whether the ward had more votes for "Leave" or "Remain", respectively. Both variables have similar information, the difference being that one is a numerical continuous variable with values between 0 and 1 (Proportion) and the other is a categorical variable with two categories (Vote with Leave and Remain categories).

We'll keep observations that contain complete cases in the data object, and observations that have missing values for the Proportion and Vote variables in the data_incomplete object (we'll make predictions over these in the latter part of this chapter). The functions prepare_data(), adjust_data(), and get_numerical_variables() come from Chapter 2, Understanding Votes with Descriptive Statistics, so you may want to take a look if you're not clear about what they do. Basically, they load the data with the adjusted version that we created by compressing the data spread among various variables regarding age, education, and race:

data <- adjust_data(prepare_data("./data_brexit_referendum.csv"))

data_incomplete     <- data[!complete.cases(data), ]
data                <- data[ complete.cases(data), ]
numerical_variables <- get_numerical_variable_names(data)
主站蜘蛛池模板: 文登市| 乌什县| 义乌市| 那坡县| 鄂伦春自治旗| 新余市| 佳木斯市| 邢台县| 九龙县| 兰溪市| 米脂县| 焉耆| 秀山| 大姚县| 景宁| 惠安县| 荣昌县| 镇巴县| 东城区| 静乐县| 新化县| 黄陵县| 离岛区| 鄂托克旗| 金华市| 金乡县| 讷河市| 无锡市| 克东县| 凉山| 绵竹市| 青海省| 宜君县| 德令哈市| 临夏市| 菏泽市| 秀山| 册亨县| 新建县| 鲜城| 桂林市|