{ "model_name": "TFM-Token", "paper": "Tokenizing Single-Channel EEG with Time-Frequency Motif Learning (ICLR 2026)", "paper_url": "https://openreview.net/forum?id=2sPmWHZ8Ir", "tokenizer": { "architecture": "TFM_VQVAE2_deep", "variant": "2x2x8", "in_channels": 1, "n_freq": 100, "n_freq_patch": 5, "emb_size": 64, "code_book_size": 8192, "trans_freq_encoder_depth": 2, "trans_temporal_encoder_depth": 2, "trans_decoder_depth": 8, "beta": 1.0, "resampling_rate": 200 }, "encoder": { "architecture": "TFM_TOKEN_Classifier", "variant": "64x4", "emb_size": 64, "code_book_size": 8192, "num_heads": 8, "depth": 4, "max_seq_len": 2048 }, "pretraining_datasets": [ "TUAB", "TUEV", "CHBMIT" ], "finetuned_datasets": { "TUEV": { "num_classes": 6, "classification_task": "multi_class", "description": "Temple University EEG Event Detection (6-class)", "eval_metrics": [ "accuracy", "balanced_accuracy", "cohen_kappa", "f1_weighted" ] }, "TUAB": { "num_classes": 1, "classification_task": "binary", "description": "Temple University Abnormal EEG Detection (binary)", "eval_metrics": [ "accuracy", "balanced_accuracy", "roc_auc", "pr_auc" ] } }, "seeds": [ 1, 2, 3, 4, 5 ] }