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Learning Transferred Weights From Co-Occurrence Data for Heterogeneous Transfer Learning

机译:从同现数据中学习转移权重以进行异构转移学习

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摘要

One of the main research problems in heterogeneous transfer learning is to determine whether a given source domain is effective in transferring knowledge to a target domain, and then to determine how much of the knowledge should be transferred from a source domain to a target domain. The main objective of this paper is to solve this problem by evaluating the relatedness among given domains through transferred weights. We propose a novel method to learn such transferred weights with the aid of co-occurrence data, which contain the same set of instances but in different feature spaces. Because instances with the same category should have similar features, our method is to compute their principal components in each feature space such that co-occurrence data can be rerepresented by these principal components. The principal component coefficients from different feature spaces for the same instance in the co-occurrence data have the same order of significance for describing the category information. By using these principal component coefficients, the Markov Chain Monte Carlo method is employed to construct a directed cyclic network where each node is a domain and each edge weight is the conditional dependence from one domain to another domain. Here, the edge weight of the network can be employed as the transferred weight from a source domain to a target domain. The weight values can be taken as a prior for setting parameters in the existing heterogeneous transfer learning methods to control the amount of knowledge transferred from a source domain to a target domain. The experimental results on synthetic and real-world data sets are reported to illustrate the effectiveness of the proposed method that can capture strong or weak relations among feature spaces, and enhance the learning performance of heterogeneous transfer learning.
机译:异构转移学习中的主要研究问题之一是确定给定的源域是否有效地将知识转移到目标域,然后确定应将多少知识从源域转移到目标域。本文的主要目的是通过转移权重评估给定域之间的相关性来解决这个问题。我们提出了一种新的方法来借助共现数据来学习这种转移的权重,这些数据包含相同的实例集,但是在不同的特征空间中。因为具有相同类别的实例应具有相似的特征,所以我们的方法是在每个特征空间中计算其主成分,以便这些主成分可以表示同现数据。同现数据中来自同一实例的不同特征空间的主成分系数在描述类别信息时具有相同的重要性顺序。通过使用这些主成分系数,马尔可夫链蒙特卡罗方法被用于构造一个有向循环网络,其中每个节点是一个域,每个边缘权重是从一个域到另一个域的条件依赖性。这里,网络的边缘权重可以用作从源域到目标域的转移权重。可以将权重值作为设置现有异构传输学习方法中的参数以控制从源域传输到目标域的知识量的先验。报道了在合成和真实数据集上的实验结果,以说明所提方法的有效性,该方法可以捕获特征空间之间的强弱关系,并提高异构转移学习的学习性能。

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