Generate synthetic labeled data for extremely low-resource languages using bilingual lexicons.
-
Updated
Jul 1, 2024 - Python
Generate synthetic labeled data for extremely low-resource languages using bilingual lexicons.
Final Year Project: Sentiment Analysis Approach for Reputation Evaluation
Simple lexicon-based persian sentiment analysis
The purpose of creating this application is to help the government, especially the Directorate General of Taxes (DJP) in improving and fixing the problems that exist in the M - Tax application. This application is built using Flask as its framework and uses the Long Short - Term Memory (LSTM) and Lexicon Based algorithms in conducting sentiment …
This repository about implementation of sentiment analysis using Lexicon Based method.
Lexicon based segmentation of cursive handwritten images, and recognizing the characters using deep learning model.
sentiment analysis with Lexicon, Machine Learning and Deep learning methods
Lexicon-based sentiment analysis on Malay tweets that pulled from Twitter. My final year project in 2020.
A benchmarking script for comparing machine learning (traditional machine learning, deep learning, transformers) and lexicon approaches.
Source code of paper "Incorporating prior knowledge into word embedding for Chinese word similarity measurement", accepted by ACM Transactions on Asian and Low-Resource Language Information Processing (TALLIP).
A cloud-based tool for sentiment analysis in reviews about restaurants on TripAdvisor
Topic: Opinion Mining and Summarization of Hotel Reviews
Sentiment Analysis using a Lexicon Approach with python
PhD Anastasios Liapakis
Analysing Usability, User Experience, and Perceived Health Impacts related to Quality of Life based on Users' Opinion Mining: a case study with Just Dance on YouTube
Add a description, image, and links to the lexicon-based topic page so that developers can more easily learn about it.
To associate your repository with the lexicon-based topic, visit your repo's landing page and select "manage topics."