完整後設資料紀錄
DC 欄位語言
dc.contributor.authorChriswanto, Adrianen_US
dc.contributor.authorPao, Hsing-Kuoen_US
dc.contributor.authorLeet, Yuh-Jyeen_US
dc.date.accessioned2020-07-01T05:21:49Z-
dc.date.available2020-07-01T05:21:49Z-
dc.date.issued2019-01-01en_US
dc.identifier.isbn978-1-7281-1985-4en_US
dc.identifier.issn2161-4393en_US
dc.identifier.urihttp://hdl.handle.net/11536/154486-
dc.description.abstractActive Learning (AL) is a machine learning framework that aims to efficiently select a limited labeled data to construct an effective model given huge amount of unlabeled data on the side. Most studies in AL focus on how to select the unlabeled data to be labeled by a human oracle in order to maximize the performance gain of the model with as little labeling effort as possible. In this work, however, we focus not only on how to select appropriate data instances but also how to select informative features, more specifically, categorical features to be labeled by the oracle in a unified manner. The unification means that we select the best choice of item to label where the item can be either a feature or an instance on each iteration given a unified scoring function to make the decision. The method that we propose is by synthesizing new instances that represent a set of features. By utilizing synthesized instances, we can treat this set of features as if they are regular instances. Therefore they could be compared on an equal ground when the model tries to select which instances to be labeled by the oracle. The features used to build the synthesized instances need to be carefully selected so the resulting synthesized instances could improve the model and not introducing any contradicting information. We utilize hierarchical clustering in order to group features that own similar content. This is done first by picking clusters whose label purity are estimated to be high. Then we score a feature based on how common the feature is in the cluster and how related the feature is to the estimated majority label. The top scoring features will then be used to synthesize instances. We demonstrate the effectiveness of the proposed method through a few data sets that consist of only categorical features where the feature labeling makes more sense to labeling oracles. The experiment results show that adopting the unified approach creates clear benefit to model construction, especially in the early stage where we can efficiently obtain an effective model through only a few iterations, compared to the one using only instance labeling for model construction.en_US
dc.language.isoen_USen_US
dc.subjectactive learningen_US
dc.subjectcategorical featuresen_US
dc.subjectfeature labelingen_US
dc.subjecthierarchical clusteringen_US
dc.titleA Unified Approach on Active Learning Dual Supervisionen_US
dc.typeProceedings Paperen_US
dc.identifier.journal2019 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN)en_US
dc.citation.spage0en_US
dc.citation.epage0en_US
dc.contributor.department應用數學系zh_TW
dc.contributor.departmentDepartment of Applied Mathematicsen_US
dc.identifier.wosnumberWOS:000530893800025en_US
dc.citation.woscount0en_US
顯示於類別:會議論文