16
September
Mittwoch,
03:00 - 05:00

Summer Academy Session: Recommender Systems

Recommender Systems

Recommender systems are tools to support users in finding information and guidance in large information spaces. Famous examples of recommender systems are the ones integrated in Netflix (for recommending movies) and Spotify (for recommending movies). In recent years, recommender systems have become an important technology for both industry and academia.

Recommender Systems

16.09.2020 15:00 – 17:00 | Language: English | Register free of charge for session

Target group:

Industry, Researchers

Abstract:

Recommender systems are tools to support users in finding information and guidance in large information spaces. Famous examples of recommender systems are the ones integrated in Netflix (for recommending movies) and Spotify (for recommending movies). In recent years, recommender systems have become an important technology for both industry and academia. In the Social Computing research area of the Know-Center, we aim to bridge both sides by providing our in-house scalable recommender system ScaR and by constantly improving it with newest research insights. Therefore, in this edition of the Know-Center’s summer academy, we do not only want to give you a general overview of recommender systems and our ScaR framework but also about current research problems in the area of recommender systems such as the identification and mitigation of biases,fairness and data sparsity issues. Apart from that, we would also like to hear about your individual industry- and research-related problems and to discuss how recommender systems could be used to address them.

After the event you will know:

    • What a recommender system is and what benefits it can offer
    • What Know-Center’s ScaR framework can offer and how it was used in a specific industry use case
    • Novel research topics in the area of recommender systems
        • Biases and fairness in recommender systems
        • Deep learning for session-based recommender systems
        • Node embeddings and trust in recommender systems
    • How recommender systems could be used to address your actual problems

Speaker

Elisabeth Lex

Elisabeth Lex

Research Area Manager Social Computing

Dominik Kowald

Dominik Kowald

Deputy Research Area Manager – Social Computing

Emanuel Lacić

Emanuel Lacić

Technical Lead – Social Computing

Tomislav Đuričić

Tomislav Đuričić

Researcher – Social Computing

Recommender Systems

16.09.2020 15:00 – 17:00 | Language: English | Register free of charge for session

Target group:

Industry, Researchers

Abstract:

Recommender systems are tools to support users in finding information and guidance in large information spaces. Famous examples of recommender systems are the ones integrated in Netflix (for recommending movies) and Spotify (for recommending movies). In recent years, recommender systems have become an important technology for both industry and academia. In the Social Computing research area of the Know-Center, we aim to bridge both sides by providing our in-house scalable recommender system ScaR and by constantly improving it with newest research insights. Therefore, in this edition of the Know-Center’s summer academy, we do not only want to give you a general overview of recommender systems and our ScaR framework but also about current research problems in the area of recommender systems such as the identification and mitigation of biases,fairness and data sparsity issues. Apart from that, we would also like to hear about your individual industry- and research-related problems and to discuss how recommender systems could be used to address them.

After the event you will know:

    • What a recommender system is and what benefits it can offer
    • What Know-Center’s ScaR framework can offer and how it was used in a specific industry use case
    • Novel research topics in the area of recommender systems
        • Biases and fairness in recommender systems
        • Deep learning for session-based recommender systems
        • Node embeddings and trust in recommender systems
    • How recommender systems could be used to address your actual problems

Speaker

Elisabeth Lex

Elisabeth Lex

Research Area Manager Social Computing

Dominik Kowald

Dominik Kowald

Deputy Research Area Manager – Social Computing

Emanuel Lacić

Emanuel Lacić

Technical Lead – Social Computing

Tomislav Đuričić

Tomislav Đuričić

Researcher – Social Computing