--- license: cc-by-nc-sa-4.0 language: - ctn pretty_name: LingReason Chintang Data task_categories: - translation tags: - low-resource-machine-translation - linguistic-reasoning - universal-dependencies - chintang configs: - config_name: default data_files: - split: train path: data/ctn_train.json - split: validation path: data/ctn_eval.json - split: test path: data/ctn_test.json - split: train_no_thinking path: data/ctn_no_thinking_train.json - split: validation_no_thinking path: data/ctn_no_thinking_eval.json - split: test_icl path: data/ctn_test_icl.json --- ## Dataset Description This dataset contains Chintang data for the LingReason project, which is generated from using the code released in the [LingReason GitHub repository](https://github.com/OLAResearch/LingReason). This dataset accompanies the paper [Reasoning over Grammar: Can Synthetic Linguistic Reasoning Traces Enhance Low-Resource Machine Translation?](https://arxiv.org/abs/2606.03782). ## Data Splits | Split | File | Examples | Description | |---|---:|---:|---| | `test_icl` | `ctn_test_icl.json` | 344 | Test set with linguistic reasoning guides (with placeholders) in the prompt, used for in-context learning experiment. | | `train` | `ctn_train.json` | 1,831 | SFT/RFT train set with completed linguistic reasoning traces in the block. | | `validation` | `ctn_eval.json` | 114 | Evaluation/Validation set with completed linguistic reasoning traces in the block. | | `train_no_thinking` | `ctn_no_thinking_train.json` | 1,831 | SFT Train set without linguistic reasoning traces. | | `validation_no_thinking` | `ctn_no_thinking_eval.json` | 114 | Evaluation/Validation set without linguistic reasoning traces. | | `test` | `ctn_test.json` | 344 | Test set with completed linguistic reasoning traces in the block, used for ICL baseline as well as SFT and RFT experiments. | ## Usage ```python from datasets import load_dataset dataset = load_dataset("OLAResearchX/LingReason") print(dataset) print(dataset["train"][0])