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Hi guys I need help on a thing, currently I'm working on a project where I have to find the semantic meaning of a word /phrase. For example Hi, hello, good morning should return regards etc... Any suggestion? Thanks in advance

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  • I think you should try to search more on python nltk NLTK- Natural Language Toolkit. I'm sure you'll find it there, I've done this before, I'll update
    – Ice Bear
    Commented Oct 8, 2020 at 13:06
  • This is not semantics, but pragmatics: the function of a phrase in a conversation. In principle, this is a tough problem unless you're working in a restricted domain, and I would say it's not possible, as there is no scheme for coding the meaning of phrases (semantics) or their function (pragmatics). Commented Oct 8, 2020 at 16:05

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Your question is a bit vague, but here are two ideas that might help:

1. WordNet

WordNet is a lexical database that provides synonyms, categorisations and to some extent the 'semantic meaning' of English words. Here is the web interface to explore the database. Here is how to use it via NLTK.

Example:

from nltk.corpus import wordnet as wn

# get all possible meanings of a word. e.g. "welcome" has two possible meanings as a noun, three meanings as a verb and one meaning as an adjective    
wn.synsets('welcome')
# output: [Synset('welcome.n.01'), Synset('welcome.n.02'), Synset('welcome.v.01'), Synset('welcome.v.02'), Synset('welcome.v.03'), Synset('welcome.a.01')]

# get the definition of one of these meanings:
wn.synset('welcome.n.02').definition()
# output: 'a greeting or reception'

# get the hypernym of the specific meaning, i.e. the more abstract category it belongs to
wn.synset('welcome.n.02').hypernyms()
# output: [Synset('greeting.n.01')]

2. Zero-shot-classification

HuggingFace Transformers and zero-shot classification: You can also use a pre-trained deep learning model to classify your text. In this case, you need to manually create labels for all possible different meanings you are looking for in your texts. e.g.: ["greeting", "insult", "congratulation"]. Then you can use the deep learning model to predict which label (broadly speaking 'semantic meaning') is the most adequate for your text.

Example:

# pip install transformers==3.1.0  # pip install in terminal
from transformers import pipeline

classifier = pipeline("zero-shot-classification")

sequence = "Hi, I welcome you to this event"
candidate_labels = ["greeting", "insult", "congratulation"]

classifier(sequence, candidate_labels)

# output: {'sequence': 'Hi, I welcome you to this event',
# 'labels': ['greeting', 'congratulation', 'insult'],
# 'scores': [0.9001138210296631, 0.09858417510986328, 0.001302019809372723]}

=> Each of your labels received a score and the label with the highest score would be the "semantic meaning" of your text.

Here is an interactive web application to see what the library does without coding. Here is a Jupyter notebook which demonstrates how to use it in Python. You can just copy-paste code from the notebook.

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  • Hello, not OP but wanted to comment to say thank you for this. I'm currently trying to implement some sort of semantic analysis to identify when a sentence is analytical, contradictory or synthetic. Both the zero-shot learning and WorldNet are good starting points as well as the PropBank corpus for labelling. Would you have any suggestions on how to identify these sentences @Moritz? Commented Jul 1, 2021 at 4:04
  • What are the classes "analytical, contradictory, synthetic" based on? Is this based on specific literature and/or a training dataset, or categories that you came up with for your use-case?
    – Moritz
    Commented Jul 2, 2021 at 18:35

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