--- license: mit --- # Amazon Reviews 2023 (7 Categories, Post-processed) ## Overview This dataset is a curated and post-processed subset of Amazon Reviews 2023. We select 7 product categories and apply a standard preprocessing pipeline widely used in sequential recommendation research. We adopt the official absolute-timestamp split provided by the corpus. ## Included Categories 1. CDs_and_Vinyl 2. Video_Games 3. Toys_and_Games 4. Musical_Instruments 5. Grocery_and_Gourmet_Food 6. Arts_Crafts_and_Sewing 7. Office_Products ## Post-processing Pipeline The dataset is processed per category as follows: 1. Positive Sample Selection: We treat user-item interactions with user ratings greater than 3 as positive samples. 2. K-core Filtering: To improve data quality, we remove users with fewer than 10 interactions in CDs and fewer than 5 interactions in the remaining datasets. ## Directory Layout (per category) Each category has its own folder containing: * item.csv: Primarily containing the remapped IDs for the items within that specific category. * train.csv: A file containing the interaction sequences used for training the model. * valid.csv: A dedicated directory containing the validation sequences to tune hyperparameters and prevent overfitting. * test.csv: A directory containing the test sequences. ## Licensing & Attribution This dataset is derived from Amazon Reviews 2023. Please refer to the original dataset page for licensing/usage terms and attribution requirements: * https://amazon-reviews-2023.github.io/ If you use this processed dataset, please cite the original dataset and clearly state that you used a post-processed subset with the pipeline described above. ## Citation If you use this dataset, please cite: ```bibtex @article{mancar2026, title={ManCAR: Manifold-Constrained Latent Reasoning with Adaptive Test-Time Computation for Sequential Recommendation}, author={Kun Yang, Yuxuan Zhu, Yazhe Chen, Siyao Zheng, Bangyang Hong, Kangle Wu, Yabo Ni, Anxiang Zeng, Cong Fu, Hui Li}, journal={arXiv preprint arXiv:2602.20093}, year={2026} }