Interactive user intent modeling for eliciting priors of a normal linear model
Research output: Contribution to conference › Paper
|State||Published - 2016|
|MoE publication type||Not Eligible|
|Event||Future of Interactive Learning Machines - Barcelona, Spain|
Duration: 5 Dec 2016 → 10 Dec 2016
|Conference||Future of Interactive Learning Machines|
|Period||05/12/2016 → 10/12/2016|
- University of Helsinki
prior knowledge of an expert user for improving the accuracy of prediction models.
The main component of our method is an interactive user intent model that models
the domain expert’s knowledge on the relevance of different features for a prediction task. The user intent model selects the features on which to elicit user’s knowledge sequentially, based on the earlier user input. The results of a feasibility study show that our method improves prediction accuracy, when predicting the relative citation counts of scientific documents in a specific domain.