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I have an unlabeled training dataset that I am trying to label using Snorkel to ultimately get scores per each data row and perform regression classification (or get labels for multilabel classification). It's biological data with rows of genes and columns of numeric data. With Snorkel I'm doing something wrong so that my label_function isn't right and I'm not sure how to get it working for my type of data.

Here's the code I'm trying to use:

import numpy as np
import pandas as pd

import snorkel
from snorkel.labeling import labeling_function
from snorkel.labeling.model import LabelModel
from snorkel.labeling import LFAnalysis
from snorkel.labeling import PandasLFApplier

dataset = pd.read_csv("training_data.txt", header=0, sep='\t')
data = dataset.fillna(0) #removing the few NAs just to get Snorkel working

@labeling_function()
def lf1(df_row):

    m = df_row.col1 >= 3
    
    return 1 if m else 0

@labeling_function()
def lf2(df_row):

    m = df_row.col2 >= 1
    
    return 1 if m else 0

@labeling_function()
def lf3(df_row):

    m = df_row.col3 < 3
    
    return 0.75 if m else 0

@labeling_function()
def lf4(df_row):

    m = df_row.col4 >= 1
    
    return 0.75 if m else 0



@labeling_function()
def lf5(df_row):

    m = df_row.col5 < 1
    
    return 0.75 if m else 0


@labeling_function()
def lf6(df_row):

    m = df_row.col6 == 1
    
    return 0.1 if m else 0


lfs = [lfl, lf2, lf3, lf4, lf5, lf6]

applier = PandasLFApplier(lfs=lfs)
L_train = applier.apply(df=data)

This runs without errors but L_trainseems to only provide labels for my first 2 labeling functions, but I know there are rows in my dataset that do actually meet any/all of my 6 label function requirements - what am I missing?

For example the output from this code is:

L_train

#output:
array([[0, 1, 0, 0, 0, 0],
       [1, 0, 0, 0, 0, 0],
       [1, 1, 0, 0, 0, 0],
       ...,
       [0, 0, 0, 0, 0, 0],
       [0, 0, 0, 0, 0, 0],
       [0, 0, 0, 0, 0, 0]])

LFAnalysis(L=L_train, lfs=lfs).lf_summary()

#output:
    j   Polarity    Coverage      Overlaps     Conflicts
lf1 0   [0, 1]       1.0              1.0       0.173333
lf2 1   [0, 1]       1.0              1.0       0.173333
lf3 2   [0]          1.0              1.0       0.173333
lf4 3   [0]          1.0              1.0       0.173333
lf5 4   [0]          1.0              1.0       0.173333
lf6 5   [0]          1.0              1.0       0.173333

I can't share my actual dataset but it's essentially just a 100 columns of purely numeric data and my domain knowledge involves using a couple of the columns to make the label functions above. In theory I could also add text columns with string data and use those to make labels but I'm also not sure if I can make rules with Snorkel that involve both numeric rules and text rules? Just trying to get any label working first.

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