--- license: mit tags: - NLP datasets: - Yaxin/SemEval2014Task4Raw metrics: - f1 - precision - recall pipeline_tag: text2text-generation --- # ate_tk-instruct-base-def-pos-combined This model is finetuned for the Aspect Term Extraction (ATE) subtask. The finetuning was carried out by adding prompts of the form: - definition + 2 positive examples + 2 negative examples + 2 neutral examples. The prompt is prepended onto each input review. It is important to note that **this model output was finetuned on samples from both laptops and restaurants domains.** The code for the official implementation of the paper [**InstructABSA: Instruction Learning for Aspect Based Sentiment Analysis**](https://arxiv.org/abs/2302.08624) can be found [here](https://github.com/kevinscaria/InstructABSA). For the ATE subtask, this model is the current SOTA. ## Training data InstructABSA models are trained on the benchmark dataset for Aspect Based Sentiment Analysis tasks viz. SemEval 2014. This [dataset](https://alt.qcri.org/semeval2014/task4/index.php?id=data-and-tools) consists of reviews from laptops and restaurant domains and their corresponding aspect term and polarity labels. ### BibTeX entry and citation info If you use this model in your work, please cite the following paper: ```bibtex @inproceedings{Scaria2023InstructABSAIL, title={InstructABSA: Instruction Learning for Aspect Based Sentiment Analysis}, author={Kevin Scaria and Himanshu Gupta and Saurabh Arjun Sawant and Swaroop Mishra and Chitta Baral}, year={2023} } ```