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The dropna() function in Pandas is a powerful tool that allows users to remove missing or null values from a dataset. This function can be used with a threshold value, which specifies the minimum number of non-null values required for a row or column to be kept. This means that any rows or columns with a number of missing values above the threshold will be dropped. By setting a threshold value, users can effectively filter out incomplete or irrelevant data from their dataset, resulting in a more accurate and reliable analysis. The dropna() function with a threshold value is a valuable feature in Pandas that helps users clean and manipulate their data efficiently.
Pandas: Use dropna() with thresh
You can use the dropna() function to drops rows from a pandas DataFrame that contain missing values.
You can also use the thresh argument to specify the minimum number of non-NaN values that a row or column must have in order to be kept in the DataFrame.
Here are the most common ways to use the thresh argument in practice:
Method 1: Only Keep Rows with Minimum Number of non-NaN Values
#only keep rows with at least 2 non-NaN values df.dropna(thresh=2)
Method 2: Only Keep Rows with Minimum % of non-NaN Values
#only keep rows with at least 70% non-NaN values df.dropna(thresh=0.7*len(df.columns))
Method 3: Only Keep Columns with Minimum Number of non-NaN Values
#only keep columns with at least 6 non-NaN values df.dropna(thresh=6, axis=1)
Method 4: Only Keep Columns with Minimum % of non-NaN Values
#only keep columns with at least 70% non-NaN values df.dropna(thresh=0.7*len(df), axis=1)
The following examples show how to use each method in practice with the following pandas DataFrame:
import pandas as pd import numpy as np #create DataFrame df = pd.DataFrame({'team': ['A', 'B', 'C', 'D', 'E', 'F', 'G', 'H'], 'points': [18, np.nan, 19, 14, 14, 11, 20, np.nan], 'assists': [5, np.nan, np.nan, 9, np.nan, 9, 9, 4], 'rebounds': [11, np.nan, 10, 6, 6, 5, 9, np.nan]}) #view DataFrame print(df) team points assists rebounds 0 A 18.0 5.0 11.0 1 B NaN NaN NaN 2 C 19.0 NaN 10.0 3 D 14.0 9.0 6.0 4 E 14.0 NaN 6.0 5 F 11.0 9.0 5.0 6 G 20.0 9.0 9.0 7 H NaN 4.0 NaN
Example 1: Only Keep Rows with Minimum Number of non-NaN Values
We can use the following syntax to only keep the rows in the DataFrame that have at least 2 non-NaN values:
#only keep rows with at least 2 non-NaN values df.dropna(thresh=2) team points assists rebounds 0 A 18.0 5.0 11.0 2 C 19.0 NaN 10.0 3 D 14.0 9.0 6.0 4 E 14.0 NaN 6.0 5 F 11.0 9.0 5.0 6 G 20.0 9.0 9.0 7 H NaN 4.0 NaN
Notice that the row in index position 1 has been dropped since it only had 1 non-NaN value in the entire row.
Example 2: Only Keep Rows with Minimum % of non-NaN Values
We can use the following syntax to only keep the rows in the DataFrame that have at least 70% non-NaN values:
#only keep rows with at least 70% non-NaN values df.dropna(thresh=0.7*len(df.columns)) team points assists rebounds 0 A 18.0 5.0 11.0 2 C 19.0 NaN 10.0 3 D 14.0 9.0 6.0 4 E 14.0 NaN 6.0 5 F 11.0 9.0 5.0 6 G 20.0 9.0 9.0
Notice that the rows in index positions 1 and 7 have been dropped since those rows did not have at least 70% of the values as non-NaN values.
Example 3: Only Keep Columns with Minimum Number of non-NaN Values
We can use the following syntax to only keep the columns in the DataFrame that have at least 6 non-NaN values:
#only keep columns with at least 6 non-NaN values df.dropna(thresh=6, axis=1) team points rebounds 0 A 18.0 11.0 1 B NaN NaN 2 C 19.0 10.0 3 D 14.0 6.0 4 E 14.0 6.0 5 F 11.0 5.0 6 G 20.0 9.0 7 H NaN NaN
Notice that the ‘assists’ column has been dropped because that column did not have at least 6 non-NaN values in the column.
Example 4: Only Keep Columns with Minimum % of non-NaN Values
We can use the following syntax to only keep the columns in the DataFrame that have at least 70% non-NaN values:
#only keep columns with at least 70% non-NaN values df.dropna(thresh=0.7*len(df), axis=1) team points rebounds 0 A 18.0 11.0 1 B NaN NaN 2 C 19.0 10.0 3 D 14.0 6.0 4 E 14.0 6.0 5 F 11.0 5.0 6 G 20.0 9.0 7 H NaN NaN
Notice that the ‘assists’ column has been dropped because that column did not have at least 70% non-NaN values in the column.
Note: You can find the complete documentation for the pandas dropna() function .
The following tutorials explain how to perform other common tasks in pandas:
Cite this article
stats writer (2024). How can I use the dropna() function in Pandas with a threshold value?. PSYCHOLOGICAL SCALES. Retrieved from https://scales.arabpsychology.com/stats/how-can-i-use-the-dropna-function-in-pandas-with-a-threshold-value/
stats writer. "How can I use the dropna() function in Pandas with a threshold value?." PSYCHOLOGICAL SCALES, 24 Jun. 2024, https://scales.arabpsychology.com/stats/how-can-i-use-the-dropna-function-in-pandas-with-a-threshold-value/.
stats writer. "How can I use the dropna() function in Pandas with a threshold value?." PSYCHOLOGICAL SCALES, 2024. https://scales.arabpsychology.com/stats/how-can-i-use-the-dropna-function-in-pandas-with-a-threshold-value/.
stats writer (2024) 'How can I use the dropna() function in Pandas with a threshold value?', PSYCHOLOGICAL SCALES. Available at: https://scales.arabpsychology.com/stats/how-can-i-use-the-dropna-function-in-pandas-with-a-threshold-value/.
[1] stats writer, "How can I use the dropna() function in Pandas with a threshold value?," PSYCHOLOGICAL SCALES, vol. X, no. Y, ص Z-Z, June, 2024.
stats writer. How can I use the dropna() function in Pandas with a threshold value?. PSYCHOLOGICAL SCALES. 2024;vol(issue):pages.
