## Model Description We present a large classification model trained on a manually curated real-world dataset that can be used as a new benchmark for advancing research in toxicity detection and classification. Our model is fine-tuned on the [WavLM base plus](https://arxiv.org/abs/2110.13900) with 2,374 hours of audio clips from voice chat for multilabel classification. The audio clips are automatically labeled using a synthetic data pipeline described in [our blog post](link to blog post here). A single output can have multiple labels. The model outputs a n by 6 output tensor where the inferred labels are `Profanity`, `DatingAndSexting`, `Racist`, `Bullying`, `Other`, `NoViolation`. `Other` consists of policy violation categories with low prevalence such as drugs and alcohol or self-harm that are combined into a single category. We evaluated this model on a data set with human annotated labels that contained a total of 9,795 samples with the class distribution shown below. Note that we did not include the "other" category in this evaluation data set. |Class|Number of examples| Duration (hours)|% of dataset| |---|---|---|---| |Profanity | 4893| 15.38 | 49.95%| |DatingAndSexting | 688 | 2.52 | 7.02% | |Racist | 889 | 3.10 | 9.08% | |Bullying | 1256 | 4.25 | 12.82% | |NoViolation | 4185 | 9.93 | 42.73% | If we set the same threshold across all classes and treat the model as a binary classifier across all 4 toxicity classes (`Profanity`, `DatingAndSexting`, `Racist`, `Bullying`), we get a binarized average precision of 94.48%. The precision recall curve is as shown below.
## Usage The dependencies for the inference file can be installed as follows: ``` pip install -r requirements.txt ``` The inference file contains useful helper functions to preprocess the audio file for proper inference. To run the inference file, please run the following command: ``` python inference.py --audio_file