Collection and resources for Bulgarian Corpus, Datasets and Models used in ASR, TTS or NLP tasks together with the links of corresponding tools/apps.
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Updated
Jun 6, 2020 - Java
Collection and resources for Bulgarian Corpus, Datasets and Models used in ASR, TTS or NLP tasks together with the links of corresponding tools/apps.
Contains some basic primitive implementations of NLP concepts.
Text Tonsorium - a toolbox that automatically arranges NLP tools in workflows and enacts them with user's inputs
Natural language processing is a subfield of linguistics, computer science, information engineering, and artificial intelligence concerned with the interactions between computers and human languages, in particular how to program computers to process and analyze large amounts of natural language data
Classifying a tweet as positive, neutral, or negative sentiment using Natural Language Processing (CBOW approaches) and Traditional Machine Learning Algorithms.
Collection of basic Natural Language Processing examples that cover essential techniques like tokenization, text representation, and text classification.
A sentiment analysis based on the Amazon food reviews dataset.
A NLP app built with streamlit framework using SpaCy for Tokenization,Lemmatization,Parts of Speech (POS) Tagging and Named Entity Extraction(NER),TextBlob for Sentiment Analysis.
This project applies Text Mining techniques using Python (NLTK, spaCy, TextBlob) to analyze a book. It includes text cleaning, tokenization, sentiment analysis, and keyword extraction to uncover insights.
NLP Spam Classifier Model to separate out Spam messages from legitimate messages.
Sentiment mining
Fake News Detection** is a natural language processing task that involves identifying and classifying news articles or other types of text as real or fake.
Text Processing performed on the Apple Macbook for feature extraction
Information retrieval system based on the word embedding technique (word2vec)
Reduce manual effort in HRM Department using NLP
This project performs sentiment analysis on a Twitter dataset, aiming to classify tweets into positive, negative, or neutral sentiments. Sentiment analysis is crucial for understanding public opinion on various topics, brands, or events based on social media data.
Analyzing Of Tweet Sentiments of Covid-19 Dataset Using Supervised Learning Classification Algorithms
This repo is about Natural Language Processing (NLP).
Goal: Discover whether modern NLP tools and predictive algorithms can provide insights into ancient text corpora
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