Habiboulaye Amadou-Boubacar

h-index4
2papers

2 Papers

IRNov 7, 2025
QUESTER: Query Specification for Generative Retrieval

Arthur Satouf, Yuxuan Zong, Habiboulaye Amadou-Boubacar et al.

Generative Retrieval (GR) differs from the traditional index-then-retrieve pipeline by storing relevance in model parameters and directly generating document identifiers. However, GR often struggles to generalize and is costly to scale. We introduce QUESTER (QUEry SpecificaTion gEnerative Retrieval), which reframes GR as query specification generation - in this work, a simple keyword query handled by BM25 - using a (small) LLM. The policy is trained using reinforcement learning techniques (GRPO). Across in- and out-of-domain evaluations, we show that our model is more effective than BM25, and competitive with neural IR models, while maintaining a good efficiency

MLJul 23, 2020
Challenging common bolus advisor for self-monitoring type-I diabetes patients using Reinforcement Learning

Frédéric Logé, Erwan Le Pennec, Habiboulaye Amadou-Boubacar

Patients with diabetes who are self-monitoring have to decide right before each meal how much insulin they should take. A standard bolus advisor exists, but has never actually been proven to be optimal in any sense. We challenged this rule applying Reinforcement Learning techniques on data simulated with T1DM, an FDA-approved simulator developed by Kovatchev et al. modeling the gluco-insulin interaction. Results show that the optimal bolus rule is fairly different from the standard bolus advisor, and if followed can actually avoid hypoglycemia episodes.