Datasets:
Tasks:
Other
Modalities:
Tabular
Formats:
csv
Languages:
Chinese
Size:
1M - 10M
ArXiv:
Tags:
live-streaming
risk-assessment
fraud-detection
weak-supervision
multiple-instance-learning
behavior-sequence
License:
| license: cc-by-4.0 | |
| task_categories: | |
| - other | |
| language: | |
| - zh | |
| pretty_name: "Live or Lie — Live Streaming Room Risk Assessment (May/June 2025)" | |
| tags: | |
| - live-streaming | |
| - risk-assessment | |
| - fraud-detection | |
| - weak-supervision | |
| - multiple-instance-learning | |
| - behavior-sequence | |
| # Live or Lie — Live Streaming Room Risk Assessment (May/June 2025) | |
| This dataset contains live-streaming room interaction logs for room-level risk assessment under weak supervision. It is the official dataset for the research presented in the papers: | |
| - **Outsmarting the Chameleon: Counterfactual Decoupling for Tactical OOD Shifts in Live Streaming Risk Assessment** ([Hugging Face Papers](https://huggingface.co/papers/2606.02946)) | |
| - **Live or Lie: Action-Aware Capsule Multiple Instance Learning for Risk Assessment in Live Streaming Platforms** ([arXiv](https://arxiv.org/abs/2602.03520)) | |
| **Project Page:** [https://qiaoyran.github.io/LiveStreamingRiskAssessment/](https://qiaoyran.github.io/LiveStreamingRiskAssessment/) | |
| **GitHub:** [https://github.com/bytedance/AC-MIL](https://github.com/bytedance/AC-MIL) | |
| ## Dataset Summary | |
| Each example corresponds to a single live-streaming room and is labeled as **risky (> 0)** or **normal (= 0)**. | |
| The task is designed for early detection: each room’s action sequence is **truncated to the first 30 minutes**, and can be structured into **user–timeslot capsules** for models such as AC-MIL or LPCD. | |
| ## File Structure | |
| The dataset is organized into two time-indexed subsets (May and June). Large LMDB data files are provided in multiple `.part` chunks to comply with storage limits. | |
| ```text | |
| . | |
| ├── final_May_hard1_masked_encoded.lmdb/ | |
| │ ├── data.mdb.00.part | |
| │ ├── data.mdb.01.part | |
| │ ├── data.mdb.02.part | |
| │ ├── data.mdb.03.part | |
| │ └── lock.mdb | |
| ├── final_June_hard1_masked_encoded.lmdb/ | |
| │ ├── data.mdb.00.part | |
| │ ├── data.mdb.01.part | |
| │ └── lock.mdb | |
| ├── May_train.csv | |
| ├── May_val.csv | |
| ├── May_test.csv | |
| ├── June_train.csv | |
| ├── June_val.csv | |
| └── June_test.csv | |
| ``` | |
| ## Languages | |
| - Predominantly **Chinese (zh)**: user behaviors are presented in Chinese, e.g., "主播口播:...". These action descriptions are encoded as action vectors via a **Chinese-BERT** model. | |
| ## Data Structure | |
| Each room has a label and a sequence of **actions**: | |
| - `room_id` (`string`) | |
| - `label` (`int32`, {0,1,2,3})) | |
| - `patch_list` (`list` of tuples): | |
| - `u_idx` (`string`): user identifier within a room | |
| - `t` (`int32`): time index along the room timeline | |
| - `l` (`int32`): capsule index | |
| - `action_id` (`int32`): action type ID | |
| - `action_vec` (`list<float16>` or `null`): action features encoded from masked action descriptions | |
| - `timestamp` (`string`): action timestamp | |
| - `action_desc` (`string`): textual action descriptions | |
| - `user_id` (`string`): user identifier across rooms | |
| ## Action Space | |
| The setup includes both viewer interactions (e.g., room entry, comments, likes, gifts, shares, etc.) and streamer activities (e.g., start stream, speech transcripts via voice-to-text, OCR-based visual content monitoring). Text-like fields are discretized as part of platform inspection/sampling. | |
| ## Data Splits | |
| | Split | #Rooms | Avg. actions | Avg. users | Avg. time (min) | | |
| |------:|------:|-------------:|-----------:|----------------:| | |
| | May train | 176,354 | 709 | 35 | 30.0 | | |
| | May val | 23,859 | 704 | 36 | 29.6 | | |
| | May test | 22,804 | 740 | 37 | 29.7 | | |
| | June train| 80,472 | 700 | 36 | 30.0 | | |
| | June val | 10,934 | 767 | 40 | 29.1 | | |
| | June test | 11,116 | 725 | 37 | 29.1 | | |
| ## Quickstart | |
| ### 1. Reconstruct the LMDB files | |
| Before loading the data, you must merge the split parts back into a single `data.mdb` file for each subset. | |
| ```bash | |
| # Reconstruct May Dataset | |
| cd final_May_hard1_masked_encoded.lmdb | |
| cat data.mdb.*.part > data.mdb | |
| cd .. | |
| # Reconstruct June Dataset | |
| cd final_June_hard1_masked_encoded.lmdb | |
| cat data.mdb.*.part > data.mdb | |
| cd .. | |
| ``` | |
| ### 2. Loading Data | |
| Install the Python package: `pip install lmdb` | |
| ```python | |
| import lmdb | |
| import pickle | |
| # Example: read a specific room | |
| room_id = 0 | |
| lmdb_path = "final_May_hard1_masked_encoded.lmdb" | |
| env = lmdb.open( | |
| lmdb_path, | |
| readonly=True, | |
| lock=False, | |
| map_size=240 * 1024 * 1024 * 1024, | |
| readahead=False, | |
| ) | |
| with env.begin() as txn: | |
| value = txn.get(str(room_id).encode()) | |
| if value is not None: | |
| data = pickle.loads(value) | |
| patch_list = data["patch_list"] # list of tuples | |
| room_label = data["label"] | |
| env.close() | |
| ``` | |
| ## Security and Privacy | |
| To ensure the security and privacy of users, all data collected from live rooms has been anonymized and masked, preventing any content from being linked to a specific individual. In addition, action vectors are re-encoded from the masked action descriptions. | |
| ## Considerations for Using the Data | |
| ### Intended Use | |
| - Research on weakly-supervised risk detection / MIL in live streaming. | |
| - Early-warning room-level moderation signals. | |
| - Interpretability over localized behavior segments. | |
| ### Out-of-scope / Misuse | |
| - Do not use this dataset to identify, profile, or target individuals. | |
| - Do not treat predictions as definitive enforcement decisions without human review. | |
| ### Bias and Limitations | |
| - Sampling bias: negatives are downsampled (1:10); reported metrics and thresholds should account for this. | |
| - Domain specificity: behavior patterns are platform- and policy-specific; transfer to other platforms may be limited. | |
| ## License | |
| This dataset is licensed under [CC BY 4.0](https://creativecommons.org/licenses/by/4.0/). | |
| ## Citation | |
| ```bibtex | |
| @article{qiao2026live, | |
| title={Live or Lie: Action-Aware Capsule Multiple Instance Learning for Risk Assessment in Live Streaming Platforms}, | |
| author={Qiao, Yiran and Chen, Jing and Ao, Xiang and Zhong, Qiwei and Liu, Yang and He, Qing}, | |
| journal={arXiv preprint arXiv:2602.03520}, | |
| year={2026} | |
| } | |
| ``` |