--- dataset_info: features: - name: potential_typosquat dtype: string - name: legitimate dtype: string - name: label dtype: bool splits: - name: train num_bytes: 1408438 num_examples: 38000 - name: test num_bytes: 75004 num_examples: 2000 download_size: 639859 dataset_size: 1483442 configs: - config_name: default data_files: - split: train path: data/train-* - split: test path: data/test-* --- # Typosquat Dataset ## Dataset Summary This dataset is intended for typosquatting detection within a domain corpus. It contains 40,000 labeled pairs, categorized as either typosquatted or non-typosquatted. The data is divided into training and test splits, each maintaining a balanced distribution of positive and negative examples. ## Supported Tasks and Leaderboards **CE training**: The primary task is binary classification, specifically detecting typosquatting domains. The dataset can be used to train a cross-encoder or other model types for binary classification. ## Languages The dataset is multilingual, reflecting the diversity of domain names. ## Dataset Structure ### Data Instances Each data instance in the dataset consists of two domains and a label indicating if the second domain is a typosquatted version of the first. An example from the training set: ```json { "domain": "example.com", "sim_domain": "exarnple.com", "label": 1 } ``` **domain**: A string representing the legitimate domain. **sim_domain**: A string representing a potentially typosquatted domain. **label**: An integer (0 or 1) where 1 indicates a typosquatted domain and 0 indicates no typosquatting. ### Data Splits The dataset is divided as follows: | Split | Number of Instances |Positive|Negative| |----------|---------------------|--------|--------| | Train | 38000 | 50% | 50% | | Test | 2000 | 50% | 50% | ## Dataset Creation ### Data Generation The domain pairs were generated using [ail-typo-squatting](https://github.com/typosquatter/ail-typo-squatting) Data processing includes balancing positive and negative samples to ensure even representation. ### Dataset usage This dataset was developed to facilitate large-scale typosquatting detection for cybersecurity applications. It supports training and evaluating binary classifiers designed to identify domains that may have been intentionally misspelled for malicious purposes.