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Performs Classification using Regex for social media user's profile categorization and NER tasks

Project description

NLP Classification Python Package For Profile Category and NER

Functionality of the Package

Performs Classification using Regex for social media user's profile categorization and NER tasks

  1. If profile:
    • Categories: Politician, Information Vehicule, Health Professional, Science, Education Professional, Artist, Organization and Journalist;
  2. NER:
    • Vaccines, Products, Drugs, Diseases, Symptoms, Science, Part of the body; returns a dataframe that has information of the entity id, name and it's occurence frequency on the input text.

The package takes the following parameters as input:

  1. Profile:
    • Text containing informations about the user's biography or channel description in the context of communication reaseach porpuses
  2. NER:
    • Text

Usage

pip install ProfileNER-classifier

Example

from nlpclassifier_profilener import NLPClassifier

#Instatiate the classifier

#If profile classification is the task of choice
nlpc = NLPClassifier('profile')

#Preprocess the text. Its's important to lowercase and remove accents
yt['channelDesc'] = yt['channelDesc'].apply(lambda x: pipeline.preprocess(x, lower = True)).apply(lambda x: pipeline.strip_accents(x))

#Classify channelCategory
yt['channelCategory'] = yt['channelDesc'].apply(lambda x: tpc.classifier(str(x)))

#See the distribution of profile categories if Profile task
yt['channelCategory'].value_counts()


#If NER classification, there's two options
#The first is to get the entities name as you would get with Spacy, for example. For this purpose, use the classifier function with 'ner' use.
nlpc = NLPClassifier('ner')
yt['ner'] = yt['videoTranscription'].apply(lambda x: nlpc.classifier(str(x))) #already preprocessed

#The second is to get the entities occurence frequency in the text. For this purpose, use the ner_classifier function with 'ner' use. Remember that it returns the input dataframe updated with the ner entities as new columns and their frequency as their rows.
nlpc = NLPClassifier('ner')
yt = yt['videoTranscription'].apply(lambda x: nlpc.ner_classifier(str(x))) #already preprocessed

Note

The package is still a work is in progress. In case of error, feel free to contact me.

Change Log

0.0.6.4 (04/09/2022)

  • First Release

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