Search Results for author: Jibril Frej

Found 10 papers, 7 papers with code

Course Recommender Systems Need to Consider the Job Market

1 code implementation16 Apr 2024 Jibril Frej, Anna Dai, Syrielle Montariol, Antoine Bosselut, Tanja Käser

In light of the job market's rapid changes and the current state of research in course recommender systems, we outline essential properties for course recommender systems to address these demands effectively, including explainable, sequential, unsupervised, and aligned with the job market and user's goals.

Recommendation Systems Reinforcement Learning (RL)

InterpretCC: Intrinsic User-Centric Interpretability through Global Mixture of Experts

1 code implementation5 Feb 2024 Vinitra Swamy, Syrielle Montariol, Julian Blackwell, Jibril Frej, Martin Jaggi, Tanja Käser

Interpretability for neural networks is a trade-off between three key requirements: 1) faithfulness of the explanation (i. e., how perfectly it explains the prediction), 2) understandability of the explanation by humans, and 3) model performance.

News Classification

MultiModN- Multimodal, Multi-Task, Interpretable Modular Networks

1 code implementation25 Sep 2023 Vinitra Swamy, Malika Satayeva, Jibril Frej, Thierry Bossy, Thijs Vogels, Martin Jaggi, Tanja Käser, Mary-Anne Hartley

Predicting multiple real-world tasks in a single model often requires a particularly diverse feature space.

WIKIR: A Python toolkit for building a large-scale Wikipedia-based English Information Retrieval Dataset

1 code implementation LREC 2020 Jibril Frej, Didier Schwab, Jean-Pierre Chevallet

Since most standard ad-hoc information retrieval datasets publicly available for academic research (e. g. Robust04, ClueWeb09) have at most 250 annotated queries, the recent deep learning models for information retrieval perform poorly on these datasets.

Ad-Hoc Information Retrieval Information Retrieval +1

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