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Decentralised Moderation for Interoperable Social Networks: A Conversation-based Approach for Pleroma and the Fediverse
Agarwal, Vibhor, Raman, Aravindh, Sastry, Nishanth, Abdelmoniem, Ahmed M., Tyson, Gareth, Castro, Ignacio
The recent development of decentralised and interoperable social networks (such as the "fediverse") creates new challenges for content moderators. This is because millions of posts generated on one server can easily "spread" to another, even if the recipient server has very different moderation policies. An obvious solution would be to leverage moderation tools to automatically tag (and filter) posts that contravene moderation policies, e.g. related to toxic speech. Recent work has exploited the conversational context of a post to improve this automatic tagging, e.g. using the replies to a post to help classify if it contains toxic speech. This has shown particular potential in environments with large training sets that contain complete conversations. This, however, creates challenges in a decentralised context, as a single conversation may be fragmented across multiple servers. Thus, each server only has a partial view of an entire conversation because conversations are often federated across servers in a non-synchronized fashion. To address this, we propose a decentralised conversation-aware content moderation approach suitable for the fediverse. Our approach employs a graph deep learning model (GraphNLI) trained locally on each server. The model exploits local data to train a model that combines post and conversational information captured through random walks to detect toxicity. We evaluate our approach with data from Pleroma, a major decentralised and interoperable micro-blogging network containing 2 million conversations. Our model effectively detects toxicity on larger instances, exclusively trained using their local post information (0.8837 macro-F1). Our approach has considerable scope to improve moderation in decentralised and interoperable social networks such as Pleroma or Mastodon.
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Gabe and Aakesh: An AI Enhanced Story
AI is leaps and bounds from where it was years ago. I remember Windows 7 had introduced voice recognition as a feature. It didn't work great, but over time it did get better as it trained on your voice. Speed ahead to now and we have speech to text and voice recognition technologies that are almost perfect in the palms of our hands. If you know me, I've been messing around with Craiyon, an image generating AI and OpenAI's GPT-3 based models that generate text based upon a prompt.
- Information Technology > Artificial Intelligence > Speech > Speech Recognition (0.79)
- Information Technology > Artificial Intelligence > Natural Language > Large Language Model (0.57)
- Information Technology > Artificial Intelligence > Natural Language > Chatbot (0.57)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.57)
Reinforcement Learning for Spoken Dialogue Systems
Singh, Satinder P., Kearns, Michael J., Litman, Diane J., Walker, Marilyn A.
Recently, a number of authors have proposed treating dialogue systems as Markov decision processes (MDPs). However, the practical application ofMDP algorithms to dialogue systems faces a number of severe technical challenges. We have built a general software tool (RLDS, for Reinforcement Learning for Dialogue Systems) based on the MDP framework, and have applied it to dialogue corpora gathered from two dialogue systems built at AT&T Labs. Our experiments demonstrate that RLDS holds promise as a tool for "browsing" and understanding correlations in complex, temporally dependent dialogue corpora.
- Information Technology > Artificial Intelligence > Natural Language > Discourse & Dialogue (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Reinforcement Learning (0.85)
- Information Technology > Artificial Intelligence > Machine Learning > Learning Graphical Models > Undirected Networks > Markov Models (0.66)
Reinforcement Learning for Spoken Dialogue Systems
Singh, Satinder P., Kearns, Michael J., Litman, Diane J., Walker, Marilyn A.
Recently, a number of authors have proposed treating dialogue systems as Markov decision processes (MDPs). However, the practical application ofMDP algorithms to dialogue systems faces a number of severe technical challenges. We have built a general software tool (RLDS, for Reinforcement Learning for Dialogue Systems) based on the MDP framework, and have applied it to dialogue corpora gathered from two dialogue systems built at AT&T Labs. Our experiments demonstrate that RLDS holds promise as a tool for "browsing" and understanding correlations in complex, temporally dependent dialogue corpora.
- Information Technology > Artificial Intelligence > Natural Language > Discourse & Dialogue (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Reinforcement Learning (0.85)
- Information Technology > Artificial Intelligence > Machine Learning > Learning Graphical Models > Undirected Networks > Markov Models (0.66)
Reinforcement Learning for Spoken Dialogue Systems
Singh, Satinder P., Kearns, Michael J., Litman, Diane J., Walker, Marilyn A.
Recently,a number of authorshave proposedtreating dialogue systems as Markov decision processes(MDPs). However,the practicalapplicationofMDP algorithms to dialogue systems faces a numberof severe technicalchallenges.We have built a general software tool (RLDS, for ReinforcementLearning for Dialogue Systems) on the MDP framework, and have applied it to dialogue corpora gatheredbased from two dialoguesystemsbuilt at AT&T Labs. Our experimentsdemonstratethat RLDS holds promise as a tool for "browsing" and understandingcorrelationsin complex, temporallydependentdialogue corpora.
- Information Technology > Artificial Intelligence > Natural Language > Discourse & Dialogue (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Reinforcement Learning (0.85)
- Information Technology > Artificial Intelligence > Machine Learning > Learning Graphical Models > Undirected Networks > Markov Models (0.66)