Asymmetric Multi-task Learning Based on Task Relatedness and Loss
نویسندگان
چکیده
We propose a novel multi-task learning method that minimizes the effect of negative transfer by allowing asymmetric transfer between the tasks based on task relatedness as well as the amount of individual task losses, which we refer to as Asymmetric Multi-task Learning (AMTL). To tackle this problem, we couple multiple tasks via a sparse, directed regularization graph, that enforces each task parameter to be reconstructed as a sparse combination of other tasks selected based on the task-wise loss. We present two different algorithms that jointly learn the task predictors as well as the regularization graph. The first algorithm solves for the original learning objective using alternative optimization, and the second algorithm solves an approximation of it using curriculum learning strategy, that learns one task at a time. We perform experiments on multiple datasets for classification and regression, on which we obtain significant improvements in performance over the single task learning and existing multitask learning models.
منابع مشابه
Multi-task learning with Gaussian processes
Multi-task learning refers to learning multiple tasks simultaneously, in order to avoid tabula rasa learning and to share information between similar tasks during learning. We consider a multi-task Gaussian process regression model that learns related functions by inducing correlations between tasks directly. Using this model as a reference for three other multi-task models, we provide a broad ...
متن کاملHierarchical Multi-Task Learning: a Cascade Approach Based on the Notion of Task Relatedness
Multi-task learning can be shown to improve the generalization performance of single tasks under certain conditions. Typically, the algorithmic and theoretical analysis of multi-task learning deals with a two-level structure, including a group of tasks and a single task. In many situations, however, it is beneficial to consider varying degrees of relatedness among tasks, assuming that some task...
متن کاملFactorial Multi-Task Learning : A Bayesian Nonparametric Approach
Multi-task learning is a paradigm shown to improve the performance of related tasks through their joint learning. However, for real-world data, it is usually difficult to assess the task relatedness and joint learning with unrelated tasks may lead to serious performance degradations. To this end, we propose a framework that groups the tasks based on their relatedness in a subspace and allows a ...
متن کاملA Convex Formulation for Learning Task Relationships in Multi-Task Learning
Multi-task learning is a learning paradigm which seeks to improve the generalization performance of a learning task with the help of some other related tasks. In this paper, we propose a regularization formulation for learning the relationships between tasks in multi-task learning. This formulation can be viewed as a novel generalization of the regularization framework for single-task learning....
متن کاملA Study of Reading Strategies Using Task-Based Strategy Assessment*
In the present study, an exploratory approach (Oxford, Cho, Leung & Kim, 2004) to language learning is adopted which holds that the number and type of strategies used by Iranian learners might vary with respect to the difficulty of task and their L2 proficiency. In this regard, the term task is defined, its leading dimentions and charecteristics are put forward, and the nature of learning start...
متن کامل