Code-Mixed Language Detection using XLM-RoBERTa
Description
This model detects languages in a Code-Mixed text with their boundaries by classifying each token. Currently, it supports German (DE), English (EN), Spanish (ES), and French (FR) languages. The model is fine-tuned on xlm-roberta-base.
Training Dataset
The training dataset is based on The Multilingual Amazon Reviews Corpus. The preprocessed dataset that has been used to train, validate, and test this model can be found here.
Results
'DE': {'precision': 0.9870741390453328,
'recall': 0.9883516686696866,
'f1': 0.9877124907612713}
'EN': {'precision': 0.9901617633147289,
'recall': 0.9914748508098892,
'f1': 0.9908178720181748}
'ES': {'precision': 0.9912407007439404,
'recall': 0.9912407007439404,
'f1': 0.9912407007439406}
'FR': {'precision': 0.9872469872469872,
'recall': 0.9871314927468414,
'f1': 0.9871892366188945}
'overall_precision': 0.9888723454274744
'overall_recall': 0.9895702634880803
'overall_f1': 0.9892211813585232
'overall_accuracy': 0.9993651810717168
Codes
The codes associated with the model can be found in this GitHub Repo.
Usage
The model can be used as follows:
import torch
from transformers import AutoTokenizer, AutoModelForTokenClassification
tokenizer = AutoTokenizer.from_pretrained("msislam/code-mixed-language-detection-XLMRoberta")
model = AutoModelForTokenClassification.from_pretrained("msislam/code-mixed-language-detection-XLMRoberta")
text = 'Hala Madrid y nada más. It means Go Madrid and nothing more.'
inputs = tokenizer(text, add_special_tokens= False, return_tensors="pt")
with torch.no_grad():
logits = model(**inputs).logits
labels_predicted = logits.argmax(-1)
lang_tag_predicted = [model.config.id2label[t.item()] for t in labels_predicted[0]]
lang_tag_predicted
Limitations
The model might show some contradictory or conflicting behavior sometimes. Some of the known (till now) issues are:
- The model might not be able to predict a small number (typically 1 or 2) of tokens or tokens in a noun phrase from another language if they are found in the sequence of one language.
- Proper nouns, and some cross-lingual tokens (in, me, etc.) might be wrongly predicted.
- The prediction also depends on punctuation.
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