I'd like to filter a dataframe for rows with the value "United-States" in the column "nativecountry." This seems like a straightforward thing to do, but the things I've tried have failed. Here's my code for creating the dataframe:
import pandas as pd url = 'https://archive.ics.uci.edu/ml/machine-learning- databases/adult/adult.data' col_names = ['age', 'workclass', 'fnlwgt', 'education', 'educationnum', 'maritalstatus', 'occupation', 'relationship', 'race', 'sex', 'capitalgain', 'capitalloss', 'hoursperweek', 'nativecountry', 'income'] df_adult = pd.read_csv(url, header = None, names = col_names)
I've tried the following things for filtering 'nativecountry' for 'United-States':
#This returns an empty dataframe df_US = df_adult[df_adult["nativecountry"] == 'United-States'] #Code from this source: https://chrisalbon.com/python/pandas_index_select_and_filter.html #This returns the error: name 'United' is not defined df_US = df_adult.query("nativecountry == United-States") #Code from this source: https://pythonspot.com/en/pandas-filter/ #And this doesn't work either, for some reason df_adult.useSQLInstead(SELECT * FROM df_adult WHERE nativecountry=United-States) ...just kidding.
Any thoughts? Thanks.