- Implemented target construction in `targets.py` for next-token and unique-time set supervision. - Added validation functions and utility methods for target building. - Created a comprehensive training script in `train.py` that includes data loading, model building, optimizer setup, and training loop with early stopping and logging. - Integrated loss functions and readout mechanisms based on target modes. - Established dataset splitting and DataLoader configurations for training, validation, and testing.
281 lines
5.8 KiB
Markdown
281 lines
5.8 KiB
Markdown
# DeepHealthNew
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这个目录包含 DeepHealth 的数据准备、数据集、模型、readout 和 loss 代码。当前版本的核心设计是:
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```text
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疾病序列 stream + 统一的额外信息 token stream
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```
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疾病、死亡、checkup 事件仍然保存在事件序列里;性别单独保存在 `basic_info`;其他体检、暴露、生活方式等信息统一整理成 `(type, value, value_kind, time)` token。
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## 数据准备
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运行:
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```bash
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python prepare_data.py
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```
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输入文件:
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- `ukb_data.csv`
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- `field_ids_enriched.csv`
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- `icd10_codes_mod.tsv`
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- `labels.csv`
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输出文件:
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- `ukb_event_data.npy`
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- 形状为 `(N, 3)`
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- 每行是 `(eid, days, label)`
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- 包含疾病、死亡、checkup 事件
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- `ukb_basic_info.csv`
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- index 为 `eid`
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- 当前只保留 `sex`
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- `ukb_other_info.npy`
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- 形状为 `(M, 5)`
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- 每行是:
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```text
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(eid, type, value, value_kind, time)
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```
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- `type=0` 预留给 padding
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- `value_kind=1` 表示连续变量
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- `value_kind=2` 表示分类变量
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- 缺失值不会生成 token
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- 当前 UKB 额外信息只有一个时间点,所以 `time` 暂时都是 `date_of_assessment`
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- `cate_types.csv`
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- 分类变量元信息
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- 字段:
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```text
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type,name,n_categories
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```
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- `ukb_other_info.npy` 里的分类 value 是变量内部的局部 id;global category id 在 dataset 中根据实验选择的变量动态计算。
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## Dataset
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`dataset.py` 提供两个 dataset:
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- `NextStepHealthDataset`
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- 用于 next-token / next-time-point 监督
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- 对应 `Delphi2MLoss` 和 `UniqueTimeSetExponentialLoss`
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- `AllFutureHealthDataset`
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- 用于 query-conditioned all-future 监督
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- 对应 `ExponentialLoss`、`WeibullLoss`、`MixedLoss`
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为了兼容旧训练入口:
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```python
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HealthDataset = NextStepHealthDataset
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collate_fn = next_step_collate_fn
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```
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dataset 会输出:
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```python
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event_seq
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time_seq
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padding_mask
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sex
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other_type
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other_value
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other_value_kind
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other_time
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```
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其中 `other_type=0` 表示 padding,不额外传 other-token mask。
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可以通过 `extra_info_types` 选择纳入哪些额外信息变量:
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```python
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dataset = NextStepHealthDataset(extra_info_types=[1, 3, 7])
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```
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如果不传,则使用全部可用 other-info type。
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dataset 会暴露模型初始化需要的元信息:
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```python
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dataset.n_types
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dataset.n_cont_types
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dataset.n_categories
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dataset.cont_type_ids
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dataset.vocab_size
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```
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## 模型
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模型主体定义在 `models.py`,通用网络模块定义在 `backbones.py`。
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### BaselineEncoder
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`BaselineEncoder` 编码统一的 other-info token:
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```python
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other_type # (B, K)
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other_value # (B, K)
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other_value_kind # (B, K)
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```
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它暂时不直接使用 `other_time`。时间信息保留给后续 `CrossAttention`,用于建模疾病/query 与 other-info token 的相对时间关系。
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连续值使用 `TokenAutoDiscretization`:
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```text
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type_id -> continuous type index -> soft bin embedding
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```
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分类值使用 dataset 动态计算后的 global category id:
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```text
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selected type offsets + local category id
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```
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### CrossAttention
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`CrossAttention` 让 disease-side hidden state 注意到 other-info token:
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```python
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h_disease # (B, L, D)
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t_disease # (B, L)
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h_token # (B, K, D)
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t_token # (B, K)
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```
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时间信息通过两种方式进入注意力:
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- `TimeRoPE`
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- 使用 query time 和 key time 旋转 q/k
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- 让 q-k 相似度带有时间位置信息
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- `GaussianRBFTimeBasis`
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- 对 `t_disease - t_token` 做 RBF 编码
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- 投影成每个 attention head 的时间 bias
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注意力是时间因果的:
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```text
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other_info_time <= disease_or_query_time
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```
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如果某个 disease/query 位置没有任何可见 other-info token,则该位置保持原 hidden 不变。
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### DeepHealth
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`DeepHealth` 的统一路径是:
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```text
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disease-side sequence
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-> disease temporal backbone
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-> CrossAttention 到 other-info tokens
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-> risk head
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```
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两种目标模式共用同一套语义:
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- `next_token`
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- `h_disease` 长度为 `L`
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- 输出 `(B, L, D)`
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- `all_future`
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- 在 disease-side 序列末尾拼接一个 query token
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- query token 的时间是 `t_query`
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- `h_disease` 长度为 `L + 1`
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- 输出最后一个 query hidden,形状为 `(B, D)`
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模型初始化示例:
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```python
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model = DeepHealth(
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vocab_size=dataset.vocab_size,
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n_embd=120,
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n_head=10,
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n_hist_layer=12,
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n_tab_layer=4,
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n_types=dataset.n_types,
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n_cont_types=dataset.n_cont_types,
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n_categories=dataset.n_categories,
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cont_type_ids=dataset.cont_type_ids,
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)
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```
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## Loss
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`losses.py` 中保留:
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next-token 监督:
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- `Delphi2MLoss`
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- `UniqueTimeSetExponentialLoss`
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all-future / query-conditioned 监督:
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- `ExponentialLoss`
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- `WeibullLoss`
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- `MixedLoss`
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`UniqueTimeSetExponentialLoss` 的 observed term 固定使用 sum reduction,不再暴露旧的 `observed_reduction` 参数。
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## 训练
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当前 `train.py` 是 next-step 训练入口,使用:
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```python
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HealthDataset = NextStepHealthDataset
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```
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示例:
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```bash
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python train.py \
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--data_prefix ukb \
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--labels_file labels.csv \
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--target_mode uts \
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--n_embd 120 \
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--n_head 10 \
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--n_hist_layer 12 \
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--n_tab_layer 4
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```
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选择额外信息变量:
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```bash
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python train.py --extra_info_types 1 3 7
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```
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如果不传 `--extra_info_types`,默认使用全部 other-info type。
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## 主要文件
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- `prepare_data.py`
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- UKB 原始数据到模型输入文件的 ETL
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- `dataset.py`
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- next-step 和 all-future dataset
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- 动态选择 other-info type
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- 动态计算 categorical global id
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- `models.py`
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- `DeepHealth`
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- `backbones.py`
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- `TimeRoPE`
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- `GaussianRBFTimeBasis`
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- `TemporalAttention`
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- `GPTBlock`
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- `TokenAutoDiscretization`
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- `BaselineEncoder`
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- `CrossAttention`
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- `AgeSinusoidalEncoding`
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- `losses.py`
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- next-token 和 all-future losses
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- `readouts.py`
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- token readout
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- same-time group readout
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- last-valid readout
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