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Snapping back at hate speech with automated content moderation for memes, speech, and text.

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Modergator

Snapping back at hate speech

Key FeaturesHow To UseInstallationComponentsContributorsLicense

🐊 Modergator - Hate Detection for Text, Speech and Memes

Modergator is a Telegram bot able to moderate Telegram groups for hateful content.

Text messages are checked for whether they contain offensive and hateful speech, as well as the target groups that the speech is directed against (if there are any). Voice messages are transcribed and then handled the same way as text messages.

Memes are checked for hate which arises due to the combination of text and image.

Currently, the bot can only understand the English language.

🎯 Key Features

The bot will:

  • check texts, voice messages and memes for hate
  • intervene if necessary

Group members can:

  • dispute wrong classifications in a /poll
  • optionally /optout of data processing (GDPR-compliant)

💡 How To Use

In order to interact with the bot, a Telegram account is needed. For instructions on how to create an account see: https://telegram.org/. To find the bot, search for @modergator_bot in the search bar. You can then either interact directly with the bot by writing a message or add the bot to a group. Every message you or members of the group send are analyzed anonymously for potential hate speech or offensive language. If this case occurs you will get a message from the bot. A score is calculated for the messages indicating how certain the classification is. The score is between 0 (not sure at all) and 1 (very, very sure). In case you disagree with the classification, you can type /poll and you and the other group members can vote and discuss their classification.

You don't want the bot to process your messages? Just type /optout and your messages will be ignored. You changed your mind? With /optin you can give access to the processing again.

As of now, the bot provides the following commands:

  • /help to get an overview of the commands
  • /howto to get an in-depth explanation of how to use the bot
  • /optout to optout of the processing of your messages
  • /optin to opt-in again to the processing of your messages
  • /poll to dispute the classification
  • /debug to see Modergators internal workings
  • /joke to make Modergator tell a joke

The bot can not just handle images, but also links that end with '.png', '.jpg', '.jpeg', '.gif', '.JPG' or '.JPEG'!

⚙️ Installation

To host an instance of the bot on your own, you will need run both the bot itself as well as multiple APIs handling the different kinds of messages. We have developed the bot to be hosted on an Ubuntu server, other systems might need an adaption.

As the dependency torch 1.4.0 (needed for the meme API) does not work with python versions later than 3.8, you have to use python 3.8. This guide assumes you already have python 3.8 set up.

First, you need to install the following dependencies (This is the only step for which you need sudo rights):

sudo apt-get -y install screen net-tools tesseract-ocr virtualenv ffmpeg

Next, go to Modergator/meme-model-api/vilio/py-bottom-up-attention/data and create the folder "img".

Next, you need to download the bigger models, unzip them, and place them in the right folders as described below:

Next, run the provided install script:

source install.sh

This might take a few minutes. It does the following:

  • create several virtual environments
  • create user-specific configs
  • install all Python dependencies

To run the bot you need to download the models and place them in the right folders as described below:

Finally, you have to create a bot in the Telegram interface using the Botfather bot. You will get a message containing your Telegram bot credentials. Please paste your access token into a file named telegram_bot_token.txt inside the telegram-bot directory. Make sure that you disable the privacy mode when creating the bot, otherwise your bot won't be able to read other people's messages. You also need to make sure that /setjoingroups is enabled for your bot such that it can also be used in groups as well.

You are ready to run the bot!

▶ Running the Telegram Bot

Important: executing run.sh will kill all other screen sessions you have currently active. If you don't want that, you have to comment it out. You have to then make sure to kill all the screens concerning the bot if you want to run run.sh again.

Start the bot:

source run.sh

This will start the virtual environments and start each API as well as the bot inside a screen session. You should now see the following sessions running:

  • telegram-bot
  • meme-detection-api
  • target-api
  • asr-api
  • ocr-api
  • text-api
  • meme-model-api

Error handling

in case not all screen sessions could start, you can activate the virtual environment again by typing

source /venv/bin/activate

and then starting the corresponding python script in the modergator folder. In case the text-api did not start correctly, you would enter

python3 text-api/main.py

to start the API manually. For the meme-model-api you type

source /memeenv/bin/activate
python3 meme-model-api/main.py

In case you run into errors concerning the torch version, make sure that you are really using Python 3.8 in the memeenv as python 3.9 cannot access torch 1.4. You can even try to run the following line in memeenv:

pip install torch==1.4.0 -f https://download.pytorch.org/whl/torch_stable.html

🧱 Components

Modergator consists of 6 APIs that the Telegram bot communicates with:

📝 Text API

In this API, the text message is used as an input for the HateXplain model (https://github.com/hate-alert/HateXplain). This model calculates a classification score indicating how likely the text messages consists of normal, offensive or hate speech. The scores are returned such that the bot can process the message further.

📢 ASR API

The purpose of the voice API is to transcribe Telegrams voice messages to text. They are then forwarded to the Text API.

To achieve this, Telegrams .oga files are first converted to .wav files. They are then transcribed by Facebooks small Speech To Text Transformer (S2T) trained on the librispeech dataset. Facebook provides models for multiple languages, but since all of our other components only support English we limited ourselves to the English model.

🔡 OCR API

The OCR has been developed by Niklas von Boguszewski, we have included the code into an API such that the bot can send an image to this API. The models analyzes the text which is on the image and returns it to the bot.

🖼 Meme API

The detection of hatespeech for memes has been developed by Niklas Muennighoff (https://github.com/Muennighoff/vilio). This model has been trained on the Facebook dataset for multimodal natural language processing (data set). We kept the model, but added the capability to give a prediction for a single meme as input.

Hint: Images that don't contain text won't be forwarded to this api. Also, image links need to end in 'png', 'jpg', 'jpeg', 'gif', 'JPG' or 'JPEG'!

🧍‍♂️ Target API

How the Target Detection works

The target detection is based on the HateXplain data set. The dataset contains annotated tweets which have been labeled by three annotators each as hate speech, offensive or normal language. The detection is trained on the dataset and returns a list of possibly discriminated target groups which are for example women, Christians or LGBTQ+ people.

The telegram bot runs the target detection for all texts.

Target Detection Model

The target detection model uses the post id and token as well as the annotated target to train the dataset. The model is build upon the pretrained model bert-base-uncased; a dropout and a target classification layer are added. The model could achieve the following evaluation parameters for the classification of 24 target groups: F1: 0.058, Precision: 0.3, Recall: 0.032.

The best model is then used to predict the target groups of incoming telegram messages if they achieve a classification higher than the threshold 0.4 on the sigmoid of the output of the model prediction.

API Documentation

We have documented our code with Swagger. The Swagger links will displayed in the terminal after running source run.sh.

‎‍💻 Contributors

This project is maintained by Katrin (@katrinc), Korbinian (@Epistoteles) and Skadi (@julchen98). It has been created as part of a seminar at University of Hamburg under the supervision of Prof. Dr. Chris Biemann, Dr. Özge Alaçam and Dr. Seid Muhie Yimam. The OCR and the meme detection components have been contributed by Niklas von Boguszewski. Fabian Rausch has helped us immensely building the target group detection model. For the Meme API, we have used VILIO by Niklas Muennighoff. Thank you!

⚠️ License

This repository has been published under the MIT license (see the file LICENSE.txt).

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Snapping back at hate speech with automated content moderation for memes, speech, and text.

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