covariation的音標是[?k?v???re??n],翻譯為“共變;相關性”。
速記技巧:可以記為“co-vary(共變)”。
Covariation這個詞的英文詞源可以追溯到拉丁語中的“co”表示共同或一起,“variatio”表示變化或變異。這個詞在英語中用來表示兩個變量之間隨著時間或條件的變化而變化的關系。
變化形式:名詞形式為covariance,動詞形式為covariate。
相關單詞:
1. Correlation:這個詞也是用來描述兩個變量之間的關系,但是它更強調的是數值上的關系,即它們之間的線性關系。
2. Regression:回歸這個詞用來描述當兩個或更多個變量之間存在相關性時,我們試圖找到一種數學模型來描述它們之間的關系的過程。
3. Coefficient:在回歸分析中,我們經常使用一個系數來描述兩個變量之間的線性關系,如R-squared,Pearsons coefficient等。
4. Covariate:如上文所述,這是一個名詞形式,用來表示一個變量,它在分析兩個或更多個變量之間的關系時,被視為一個可能影響結果的因素。
5. Covariance:這是動詞covariate的名詞形式,用來表示兩個變量之間的協方差,這是衡量兩個變量相關程度的一個統計量。
6. Conformity:這個詞在某些語境下也可以用來描述兩個變量之間的關系,但它更強調的是它們之間的相似性或一致性。
7. Mutualism:這個詞用來描述兩個或更多個因素之間相互促進的關系。
8. Dependence:這個詞用來描述兩個或更多個因素之間的一種關系,其中一個因素的變化會影響另一個因素的變化。
9. Alliance:聯盟這個詞也可以用來描述兩個或更多個因素之間的一種關系,它們共同行動以實現共同的目標。
10. Coherence:一致性這個詞也可以用來描述兩個或更多個因素之間的某種關系,它們在某種程度上是相互關聯的,形成一個整體。
常用短語:
1. correlation coefficient
2. covariation rate
3. covariation analysis
4. covariation pattern
5. covariation relationship
6. covariation matrix
7. covariation factor
例句:
1. The correlation coefficient between the two variables is 0.9, indicating strong covariation.
2. Over time, we observed a strong covariation between the price of oil and the exchange rate.
3. The covariation rate between the two countries" economic indicators has increased significantly over the past decade.
4. The covariation pattern between these two variables is complex and requires further investigation.
5. The covariation relationship between climate change and biodiversity is becoming increasingly apparent.
6. The covariation matrix shows that these variables are strongly correlated with each other.
7. Covariation factors such as technology and demographics are influencing the way businesses operate.
英文小作文:
The concept of covariation is crucial in understanding the interrelationships between variables in a system. When two or more variables are found to be consistently related over time or in different contexts, it indicates that they are influenced by common factors or are subject to similar forces. This concept is particularly important in fields such as ecology, where the relationship between species and their environment is studied, and economics, where the impact of factors such as technology and demographics on economic performance is investigated.
In many real-world systems, covariation can be used to identify patterns and trends that would otherwise be difficult to detect using other methods. For example, in the financial industry, the analysis of covariance can help identify trends in asset prices that are influenced by common factors such as interest rates or economic conditions. Similarly, in the field of medicine, the analysis of covariance can help identify patterns in disease incidence that are influenced by common environmental factors or shared risk factors among patients.
However, it is important to note that covariation does not necessarily imply causality. While covariation can indicate relationships between variables, it does not necessarily prove that one variable causes changes in another. Therefore, it is essential to use other methods, such as experiments or observations, to establish causal relationships between variables. Nevertheless, the concept of covariation remains an essential tool in understanding the interrelationships between variables in a system and can provide valuable insights into how systems function and evolve.
名師輔導
環球網校
建工網校
會計網校
新東方
醫學教育
中小學學歷