--- license: cc-by-4.0 viewer: false --- # Dataset summary This dataset is designed to assist in predicting a customer's propensity to purchase various products within a month following the reporting date. The dataset includes anonymized historical data on transaction activity, dialog embeddings, and geo-activity for some bank clients over 12 months. The mini MBD dataset contains a reduced subset of the data, making it easier and faster to work with during the development and testing phases. It includes a smaller number of clients and a shorter time span but maintains the same structure and features as the full dataset [MBD](https://huggingface.co/datasets/ai-lab/MBD). MBD-mini has data based on 10% of unique clients listed in MBD. # Data The dataset consists of anonymized historical data, which contains the following information for some of the Bank's clients over 12 months: - transaction activity (transactions) Details about past transactions including amounts, types, and dates; - dialog embeddings (dialogs) Embeddings from customer interactions, which capture semantic information from dialogues; - geo-activity (geostream) Location-based data representing clients' geographic activity patterns. Objective: To predict for each user the taking/not taking of each of the four products within a month after the reporting date, historical data for them is in targets The dataset is divided into 5 folds based on client_split (which consist of an equal number of unique clients) for cross-validation purposes. ``` client_split Desc: Splitting clients into folds |-- client_id: str Desc: Client id |-- fold: int detail |-- dialog Desc: Dialogue embeddings |-- client_id: str Desc: Client id |-- event_time: timestamp Desc: Dialog's date |--embedding: array float Desc: Dialog's embeddings |-- fold: int |-- geo Desc: Geo activity |-- client_id: str Desc: Client id |-- event_time: timestamp Desc: Event datetime |-- fold: int |-- geohash_4: int Desc: Geohash level 4 |-- geohash_5: int Desc: Geohash level 5 |-- geohash_6: int Desc: Geohash level 6 |-- trx Desc: Transactional activity |-- client_id: str Desc: Client id |-- event_time: timestamp Desc: Transaction's date |-- amount: float Desc: Transaction's amount |-- fold: int |-- event_type: int Desc: Transaction's type |-- event_subtype: int Desc: Clarifying the transaction type |-- currency: int Desc: Currency |-- src_type11: int Desc: Feature 1 for sender |-- src_type12: int Desc: Clarifying feature 1 for sender |-- dst_type11: int Desc: Feature 1 for contractor |-- dst_type12: int Desc: Clarifying feature 1 for contractor |-- src_type21: int Desc: Feature 2 for sender |-- src_type22: int Desc: Clarifying feature 2 for sender |-- src_type31: int Desc: Feature 3 for sender |-- src_type32: int Desc: Clarifying feature 3 for sender ptls Desc: Data is similar with detail but in pytorch-lifestream format https://github.com/dllllb/pytorch-lifestream |-- dialog Desc: Dialogue embeddings |-- client_id: str Desc: Client id |-- event_time: Array[timestamp] Desc: Dialog's date |-- embedding: Array[float] Desc: Dialog's embedding |-- fold: int |-- geo Desc: Geo activity |-- client_id: str Desc: Client id |-- event_time: Array[timestamp] Desc: Event datetime |-- fold: int |-- geohash_4: Array[int] Desc: Geohash level 4 |-- geohash_5: Array[int] Desc: Geohash level 5 |-- geohash_6: Array[int] Desc: Geohash level 6 |-- trx Desc: Transactional activity |-- client_id: str Desc: Client id |-- event_time: Array[timestamp] Desc: Transaction's date |-- amount: Array[float] Desc: Transaction's amount |-- fold: int |-- event_type: Array[int] Desc: Transaction's type |-- event_subtype: Array[int] Desc: Clarifying the transaction type |-- currency: Array[int] Desc: Currency |-- src_type11: Array[int] Desc: Feature 1 for sender |-- src_type12: Array[int] Desc: Clarifying feature 1 for sender |-- dst_type11: Array[int] Desc: Feature 1 for contractor |-- dst_type12: Array[int] Desc: Clarifying feature 1 for contractor |-- src_type21: Array[int] Desc: Feature 2 for sender |-- src_type22: Array[int] Desc: Clarifying feature 2 for sender |-- src_type31: Array[int] Desc: Feature 3 for sender |-- src_type32: Array[int] Desc: Clarifying feature 3 for sender targets |-- mon: str Desc: Reporting month |-- target_1: int Desc: Mark of product issuance in the first reporting month |-- target_2: int Desc: Mark of product issuance in the second reporting month |-- target_3: int Desc: Mark of product issuance in the third reporting month |-- target_4: int Desc: Mark of product issuance in the fourth reporting month |-- trans_count: int Desc: Number of transactions |-- diff_trans_date: int Desc: Time difference between transactions |-- client_id: str Desc: Client id |-- fold: int ``` # Load dataset ## Download a single file Download a single file with datasets ```python from datasets import load_dataset dataset = load_dataset("ai-lab/MBD-mini", data_files='client_split.tar.gz') ``` Download a single file with huggingface_hub ```python from huggingface_hub import hf_hub_download hf_hub_download(repo_id="ai-lab/MBD-mini", filename="client_split.tar.gz", repo_type="dataset") # By default dataset is saved in '~/.cache/huggingface/hub/datasets--ai-lab--MBD/snapshots//' # To overwrite this behavior try to use local_dir ``` ## Download entire repository Download entire repository with datasets ```python from datasets import load_dataset dataset = load_dataset("ai-lab/MBD-mini") ``` Download entire repository with huggingface_hub ```python from huggingface_hub import snapshot_download snapshot_download(repo_id="ai-lab/MBD-mini") # By default dataset is saved in '~/.cache/huggingface/hub/datasets--ai-lab--MBD/snapshots//' # To overwrite this behavior try to use local_dir ``` # Citation Cite as https://doi.org/10.48550/arXiv.2409.17587 (arXiv:2409.17587)