楼主: zhangyiyiw
11127 9

[学习资料] 分类变量是否可做皮尔森相关分析 [推广有奖]

  • 7关注
  • 8粉丝

已卖:92份资源

副教授

26%

还不是VIP/贵宾

-

威望
0
论坛币
2835 个
通用积分
1.7378
学术水平
8 点
热心指数
18 点
信用等级
9 点
经验
29330 点
帖子
366
精华
0
在线时间
1017 小时
注册时间
2009-12-9
最后登录
2021-12-30

楼主
zhangyiyiw 发表于 2012-5-21 19:50:15 |AI写论文

+2 论坛币
k人 参与回答

经管之家送您一份

应届毕业生专属福利!

求职就业群
赵安豆老师微信:zhaoandou666

经管之家联合CDA

送您一个全额奖学金名额~ !

感谢您参与论坛问题回答

经管之家送您两个论坛币!

+2 论坛币
分类变量是否适合做皮尔森相或者斯皮尔曼关分析? 相关分析与logit分析的区别在哪里?
二维码

扫码加我 拉你入群

请注明:姓名-公司-职位

以便审核进群资格,未注明则拒绝

关键词:相关分析 分类变量 皮尔森 logit分析 logit

沙发
coffeesnow811 在职认证  发表于 2012-5-21 20:10:29
不适合。PEARSON是用来测度两定距型变量的线性相关性的,SPEARMAN是用来测度定序变量间的线性相关关系的。
逆风的方向更适合飞翔,不怕千万人阻挡只怕自己投降。

藤椅
zhangyiyiw 发表于 2012-5-21 20:18:06
分类变量是定序的,可以用斯皮尔曼相关分析吗?

板凳
coffeesnow811 在职认证  发表于 2012-5-21 20:23:23
可以用
逆风的方向更适合飞翔,不怕千万人阻挡只怕自己投降。

报纸
mark8865 发表于 2014-3-23 15:59:17
zhangyiyiw 发表于 2012-5-21 20:18
分类变量是定序的,可以用斯皮尔曼相关分析吗?
你好!能否麻烦您帮我解释一下,什么是定矩型分类变量,什么是定序型分类变量呀?

地板
zhangyiyiw 发表于 2014-3-25 16:34:13
mark8865 发表于 2014-3-23 15:59
你好!能否麻烦您帮我解释一下,什么是定矩型分类变量,什么是定序型分类变量呀?
百度一下,或者看书,很容易就知道了。

7
mark8865 发表于 2014-3-25 18:01:13
zhangyiyiw 发表于 2014-3-25 16:34
百度一下,或者看书,很容易就知道了。
就是因为没百度到才问的呀!书的话哪类书里会有这类定义呢?

8
zhangyiyiw 发表于 2014-3-25 18:25:04
mark8865 发表于 2014-3-25 18:01
就是因为没百度到才问的呀!书的话哪类书里会有这类定义呢?
定距变量_百度百科
http://baike.baidu.com/link?url= ... CsG9uHUn2_ZnN5KA-8_

9
mark8865 发表于 2014-3-26 15:42:51
谢谢!

10
ReneeBK 发表于 2014-3-27 07:33:49
Correlation
Correlation is a statistical technique that can show whether and how strongly pairs of variables are related. For example, height and weight are related; taller people tend to be heavier than shorter people. The relationship isn't perfect. People of the same height vary in weight, and you can easily think of two people you know where the shorter one is heavier than the taller one. Nonetheless, the average weight of people 5'5'' is less than the average weight of people 5'6'', and their average weight is less than that of people 5'7'', etc. Correlation can tell you just how much of the variation in peoples' weights is related to their heights.

Although this correlation is fairly obvious your data may contain unsuspected correlations. You may also suspect there are correlations, but don't know which are the strongest. An intelligent correlation analysis can lead to a greater understanding of your data.

Techniques in Determining Correlation

There are several different correlation techniques. The Survey System's optional Statistics Module includes the most common type, called the Pearson or product-moment correlation. The module also includes a variation on this type called partial correlation. The latter is useful when you want to look at the relationship between two variables while removing the effect of one or two other variables.

Like all statistical techniques, correlation is only appropriate for certain kinds of data. Correlation works for quantifiable data in which numbers are meaningful, usually quantities of some sort. It cannot be used for purely categorical data, such as gender, brands purchased, or favorite color.

Rating Scales

Rating scales are a controversial middle case. The numbers in rating scales have meaning, but that meaning isn't very precise. They are not like quantities. With a quantity (such as dollars), the difference between 1 and 2 is exactly the same as between 2 and 3. With a rating scale, that isn't really the case. You can be sure that your respondents think a rating of 2 is between a rating of 1 and a rating of 3, but you cannot be sure they think it is exactly halfway between. This is especially true if you labeled the mid-points of your scale (you cannot assume "good" is exactly half way between "excellent" and "fair").

Most statisticians say you cannot use correlations with rating scales, because the mathematics of the technique assume the differences between numbers are exactly equal. Nevertheless, many survey researchers do use correlations with rating scales, because the results usually reflect the real world. Our own position is that you can use correlations with rating scales, but you should do so with care. When working with quantities, correlations provide precise measurements. When working with rating scales, correlations provide general indications.

Correlation Coefficient

The main result of a correlation is called the correlation coefficient (or "r"). It ranges from -1.0 to +1.0. The closer r is to +1 or -1, the more closely the two variables are related.

  • If r is close to 0, it means there is no relationship between the variables. If r is positive, it means that as one variable gets larger the other gets larger. If r is negative it means that as one gets larger, the other gets smaller (often called an "inverse" correlation).

  • While correlation coefficients are normally reported as r = (a value between -1 and +1), squaring them makes then easier to understand. The square of the coefficient (or r square) is equal to the percent of the variation in one variable that is related to the variation in the other. After squaring r, ignore the decimal point. An r of .5 means 25% of the variation is related (.5 squared =.25). An r value of .7 means 49% of the variance is related (.7 squared = .49).

  • A correlation report can also show a second result of each test - statistical significance. In this case, the significance level will tell you how likely it is that the correlations reported may be due to chance in the form of random sampling error. If you are working with small sample sizes, choose a report format that includes the significance level. This format also reports the sample size.

  • Never to assume a correlation means that a change in one variable causes a change in another. Sales of personal computers and athletic shoes have both risen strongly in the last several years and there is a high correlation between them, but you cannot assume that buying computers causes people to buy athletic shoes (or vice versa).

  • The Pearson correlation technique works best with linear relationships but not work well with curvilinear relationships. An example of a curvilinear relationship is age and health care. They are related, but the relationship doesn't follow a straight line. Young children and older people both tend to use much more health care than teenagers or young adults.

您需要登录后才可以回帖 登录 | 我要注册

本版微信群
加好友,备注cda
拉您进交流群
GMT+8, 2025-12-31 08:56