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U.S. Consumer Product Safety Recalls Dataset

A structured and refined version of official recall data from the U.S.

    • Labeling Type: InjuryCount
    • Data Format: Tabular
    • Data Type: Synthetic Data

Main Product

Data Quantity (Samples)

Total Price

$ 8,200

(VAT Included)

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About Dataset

1) Data Introduction

• The U.S. Consumer Product Safety Recalls Dataset is a structured and refined version of official recall data from the U.S. Consumer Product Safety Commission (CPSC), including the name, date, type of risk, manufacturer, number of injuries, and URL of the product recalled for safety concerns.

2) Data Utilization

(1) U.S. Consumer Product Safety Recalls Dataset has characteristics that: • This dataset reflects actual product safety incidents, and is a mixture of categorical data such as product name, manufacturer, risk type, and numerical/time series data such as number and date of injury. • Each row represents a single recall case and is optimized for various analysis tasks such as NLP, time series prediction, and risk classification. (2) U.S. Consumer Product Safety Recalls Dataset can be used to: • Risk Type Classification Model: It can be applied to the development of NLP models that automatically classify risk types (fire, food, etc.) by BERT/Random Forest, etc., using product name and explanatory text. • High-risk product pattern analysis: By analyzing monthly recall frequency trends, repeat recall status by manufacturer, and injury rate correlation, it can contribute to quality supervision policy establishment.

Meta Data

DomainetcZoodata formatsTabular
Zoodata volume1000 itemsRegistration Date2025.07.09
Zoodata typeSynthetic dataExistence of labelingExist
Labeling typeInjuryCountLabeling formatsJSON

Normal

Performance 1
0

Outstanding

Performance 2
100

Data Samples

Sample Data

Utility

Downstream Classification (▲)Entropy (▲)MMD (▼)2D Correlation Similarity (▼)One Class Classification (▼)Duplication Rate (▼)
Total000000
SuitabilityOKOKOKOKOKOK

The higher the value, the better (▲)

Model Performance

Downstream classification accuracy is an indicator used to evaluate the usefulness of synthetic data. It measures whether synthetic data performs similarly to real data. The method involves training the same model separately on real data and synthetic data, and then comparing the accuracies of the two models. Interpretation: A high accuracy rate means that the model trained on synthetic data performs similarly to the one trained on real data, indicating that the synthetic data is of high quality and well represents the real data.

The closer the value is to 0 or 1, or the lower the number, the better (▼)

Quality

MMD (Maximum Mean Discrepancy) is a metric used to assess the similarity between two probability distributions. It is commonly used to compare generated data with real data. High MMD score: A score above 0.05 indicates that the two distributions may differ. Low MMD score: Indicates that the generated data is similar to the real data. A score close to 0 is preferable, and a score below 0.01 suggests that the two data distributions are nearly indistinguishable.

Quality

2D Relationship Similarity measures the similarity in correlation structures between two datasets by comparing the correlation coefficients of columns in the original and generated data. High value (0.05 or above): Suggests differences in correlation structures, indicating the generated data may differ from the original. Low value: Indicates that the correlation structure of the generated data is similar to the original data. For instance, a 2D Relationship Similarity below 0.01 suggests the datasets are very similar.

Duplication Rate

Duplication Rate represents the proportion of identical or nearly identical items within a dataset. It is calculated by dividing the number of duplicate items by the total number of items. High Duplication Rate: Indicates lower data diversity and potential quality issues, which can reduce the reliability of analysis and models. Low Duplication Rate: Suggests higher data diversity and better quality.


Privacy

Identification Risk (▼)Linkage Risk (▼)Inference Risk (▼)
(Adjust by subtracting 0.5)
Total000
SuitabilityOKOKOK

The closer to zero or the lower the value, the better (▼)

Structural Similarity

Identification risk assesses how well synthetic data protects the privacy of the original data. It measures the likelihood that synthetic data can match records from the original data, thereby evaluating the potential for identifying specific individuals. Interpretation: A value closer to 0 indicates that the synthetic data is effectively protecting personal information. The level of risk considered safe can vary depending on the nature and sensitivity of the information contained in the data.

Perceptual Similarity

Linkage risk assesses the risk of inferring sensitive information from the original data using synthetic data. It measures the proportion of quasi-identifier values in the synthetic data that match those in the original data when an attacker knows quasi-identifier information from the original data. High Duplication Rate: Indicates lower data diversity and potential quality issues, which can reduce the reliability of analysis and models. Interpretation: A lower risk indicates that the data is safer, meaning there is a reduced likelihood of inferring sensitive information.

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