Dialect identification using Siamese network
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Updated
Dec 12, 2017 - Jupyter Notebook
Dialect identification using Siamese network
A tool that predicts the dialect of English of an SMS message using recurrent neural networks supplemented with data from Google Trends.
Twitter Dialect Datasets and Classifiers (EG + GULF Arabic Corpus)
Twitter Dialect Datasets and Classifiers (GULF Arabic Corpus)
VarDial19 shared task: Discriminating between Mainland and Taiwan Variation of Mandarin Chinese (DMT)
log MFSC based classification of British English dialects from the IViE(Intonational Variation in English) corpus dataset
This shared task will be the first to target a large set of dialect labels at the city and country levels. The data for the shared task is created or collected under the Multi-Arabic Dialect Applications and Resources (MADAR) project.
Web interface for far-speech demo to be present in INTERSPEECH 2019
[Interspeech19] Computational Paralinguistics ChallengE (ComParE)
Twitter Dialect Datasets and Classifiers (EG Arabic Corpus)
Ríomhchlár a dhéanann aicmiú staitistiúil ar théacsanna Gaeilge de réir a gcanúint
This repository contains the Arabic sarcasm dataset (ArSarcasm)
using AraBert to classify different Arabic dialects. ranked fourth in WANLP2020 workshop.
Arabic Dialects Identification
ArSarcasm-v2 is an extension to the original ArSarcasm dataset. It was used for the shared task on sarcasm detection and sentiment analysis, which is a part of WANLP 2021.
An Arabic Tweet Dialect Classifier
Arabic_Dialect_Identification_NLP-AIM-Task
The first Dialectal Arabic Code Switching - DACS corpus from broadcast speech. Annotated at the token-level, considering both the linguistic and the acoustic cues. This dataset is a potential benchmark for DCS in spontaneous speech.
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