L3Cube-MahaSTS: A Marathi Sentence Similarity Dataset and Models
By: Aishwarya Mirashi, Ananya Joshi, Raviraj Joshi
Potential Business Impact:
Helps computers understand Marathi sentences better.
We present MahaSTS, a human-annotated Sentence Textual Similarity (STS) dataset for Marathi, along with MahaSBERT-STS-v2, a fine-tuned Sentence-BERT model optimized for regression-based similarity scoring. The MahaSTS dataset consists of 16,860 Marathi sentence pairs labeled with continuous similarity scores in the range of 0-5. To ensure balanced supervision, the dataset is uniformly distributed across six score-based buckets spanning the full 0-5 range, thus reducing label bias and enhancing model stability. We fine-tune the MahaSBERT model on this dataset and benchmark its performance against other alternatives like MahaBERT, MuRIL, IndicBERT, and IndicSBERT. Our experiments demonstrate that MahaSTS enables effective training for sentence similarity tasks in Marathi, highlighting the impact of human-curated annotations, targeted fine-tuning, and structured supervision in low-resource settings. The dataset and model are publicly shared at https://github.com/l3cube-pune/MarathiNLP
Similar Papers
L3Cube-MahaEmotions: A Marathi Emotion Recognition Dataset with Synthetic Annotations using CoTR prompting and Large Language Models
Computation and Language
Helps computers understand feelings in Marathi.
MahaParaphrase: A Marathi Paraphrase Detection Corpus and BERT-based Models
Computation and Language
Helps computers understand Marathi sentences better.
Annotating Training Data for Conditional Semantic Textual Similarity Measurement using Large Language Models
Computation and Language
Makes computers understand sentences better, even when tricky.