Adding Gaussian Noise To A Dataset Of Floating Points And Save It (python)
I'm working on classification problem where i need to add different levels of gaussian noise to my dataset and do classification experiments until my ML algorithms can't classify t
Solution 1:
You can follow these steps:
- Load the data into a pandas dataframe
clean_signal = pd.read_csv("data_file_name")
- Use numpy to generate Gaussian noise with the same dimension as the dataset.
- Add gaussian noise to the clean signal with
signal = clean_signal + noise
Here's a reproducible example:
import pandas as pd
# create a sample dataset with dimension (2,2)# in your case you need to replace this with # clean_signal = pd.read_csv("your_data.csv")
clean_signal = pd.DataFrame([[1,2],[3,4]], columns=list('AB'), dtype=float)
print(clean_signal)
"""
print output:
A B
0 1.0 2.0
1 3.0 4.0
"""import numpy as np
mu, sigma = 0, 0.1# creating a noise with the same dimension as the dataset (2,2)
noise = np.random.normal(mu, sigma, [2,2])
print(noise)
"""
print output:
array([[-0.11114313, 0.25927152],
[ 0.06701506, -0.09364186]])
"""
signal = clean_signal + noise
print(signal)
"""
print output:
A B
0 0.888857 2.259272
1 3.067015 3.906358
"""
Overall code without the comments and print statements:
import pandas as pd
# clean_signal = pd.read_csv("your_data.csv")
clean_signal = pd.DataFrame([[1,2],[3,4]], columns=list('AB'), dtype=float)
import numpy as np
mu, sigma = 0, 0.1
noise = np.random.normal(mu, sigma, [2,2])
signal = clean_signal + noise
To save the file back to csv
signal.to_csv("output_filename.csv", index=False)
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