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--- |
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configs: |
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- config_name: default |
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data_files: |
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- split: train |
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path: multitab_stats_logs.csv |
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--- |
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# Multitab: A Comprehensive Benchmark Suite for Multi-Dimensional Evaluation in Tabular Domains |
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This repository hosts the core benchmark **data** from the MULTITAB benchmark suite, a large-scale, structured evaluation of tabular learning algorithms. |
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The full benchmark includes: |
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- ๐ Preprocessed `.npz` datasets (optional, for fast loading) |
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- ๐ A single **summary CSV file** (`multitab_stats_logs.csv`) with: |
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- Model performance across datasets |
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- Dataset-level statistical properties |
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- ๐ Additional Log Archives |
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- ๐ฆ `optimization_logs.zip`: Contains raw optimization outputs for all modelโdataset combinations. |
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- Each file includes: |
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- Validation performance per trial |
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- Best hyperparameter configurations |
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- Metadata such as time, seed, and trial count |
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- ๐ฆ `reproduction_logs.zip`: Logs from reproduction runs under fixed hyperparameter settings. |
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- Useful for verifying benchmark consistency and computing final ranks. |
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- Includes: |
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- Full prediction outputs |
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- Final evaluation metrics per split |
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> To use these files, download and extract locally. |
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> Refer to the GitHub repository for code that parses and processes the logs. |
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**โ ๏ธ This dataset page only contains the data artifacts. |
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For full implementation code, training pipelines, and model optimization scripts, please refer to our GitHub repository: |
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๐ [https://github.com/kyungeun-lee/multitab](https://github.com/kyungeun-lee/multitab)** |
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--- |
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## Overview |
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MULTITAB is designed to facilitate data-aware benchmarking by evaluating 13 diverse tabular models across 196 datasets from OpenML. |
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Instead of relying on aggregate scores, this benchmark focuses on how model performance varies with dataset characteristics such as: |
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- Task types |
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- Sample size |
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- Feature heterogeneity |
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- Feature-to-sample ratio |
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- Label imbalance |
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- Function irregularity |
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- Feature interaction |
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Each model is optimized with a consistent hyperparameter tuning budget and evaluated via stratified cross-validation. |
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Results are normalized per dataset to enable fair comparisons. |
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--- |
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## Data Files |
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### ๐น `multitab_stats_logs.csv` |
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This file is the **main table** for comparative and statistical analysis. Each row corresponds to one dataset and includes: |
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- **Model performance columns**: |
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- `{MODEL}_{METRIC}_{RAW METRIC FOR CLASSIFICATION}_{RAW METRIC FOR REGERSSION}`: e.g., `FTT_error_logloss_rmse`, `XGBoost_rank_acc_rmse` |
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- METRIC includes average **normalized predictive error** (as described in the main text), and average **ranks**. |
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- RAW METRIC FOR CLASSIFICATION includes **log loss** (as the main metric in the suite), and **accuracy**. |
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- RAW METRIC FOR REGRESSION includes **RMSE** only. |
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- **Dataset statistical properties**: |
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- `stats_task_type`, `stats_sample_size`, `stats_num_features`, `stats_imbalance_factor`, etc. |
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## Column Description |
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| Column Category | Description | |
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|------------------------|-------------| |
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| `data_id`, `data_name` | OpenML identifier and dataset name | |
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| `Model_*` columns | Performance metrics for each model. Includes RMSE/log loss and rank-based metrics (e.g., `MLP_rank_logloss_rmse`) | |
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| `stats_*` columns | Dataset-level statistical properties (e.g., `stats_num_features`, `stats_entropy_ratio`, `stats_skewness`, etc.) | |
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| `subcategory_*` columns | Data regime classification based on specific criteria (see Table 1 in the paper). | |
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A complete list of all 80+ columns is available in the paper and can also be printed via: |
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```python |
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import pandas as pd |
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df = pd.read_csv("multitab_stats_logs.csv") |
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print(df.columns.tolist()) |
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``` |
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### ๐ `.npz` files (optional) |
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Each dataset is also available in compressed numpy format for quick loading in research workflows. |
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Contents of each `.npz` file: |
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- `X`: Feature matrix |
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- `y`: Target |
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- `X_cat`, `X_cat_cardinality`, `X_num`: Column indices and metadata |
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--- |
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