Litcius/Paper detail

Sampling via the aggregation value for data-driven manufacturing

Xu Liu, Gengxiang Chen, Yingguang Li, Lu Chen, Qinglu Meng, Charyar Mehdi-Souzani

2022National Science Review11 citationsDOIOpen Access PDF

Abstract

Data-driven modelling has shown promising potential in many industrial applications, while the expensive and time-consuming labelling of experimental and simulation data restricts its further development. Preparing a more informative but smaller dataset to reduce labelling efforts has been a vital research problem. Although existing techniques can assess the value of individual data samples, how to represent the value of a sample set remains an open problem. In this research, the aggregation value is defined using a novel representation for the value of a sample set by modelling the invisible redundant information as the overlaps of neighbouring values. The sampling problem is hence converted to the maximisation of the submodular function over the aggregation value. The comprehensive analysis of several manufacturing datasets demonstrates that the proposed method can provide sample sets with superior and stable performance compared with state-of-the-art methods. The research outcome also indicates its appealing potential to reduce labelling efforts for more data-scarcity scenarios.

Topics & Concepts

Computer scienceSubmodular set functionSample (material)ScarcitySampling (signal processing)Data setSet (abstract data type)Representation (politics)LabellingValue (mathematics)Data miningFunction (biology)Data aggregatorArtificial intelligenceMachine learningMathematical optimizationMathematicsChemistryPoliticsChromatographySociologyLawCriminologyProgramming languageMicroeconomicsWireless sensor networkEconomicsComputer networkEvolutionary biologyPolitical scienceBiologyComputer visionFilter (signal processing)Industrial Vision Systems and Defect DetectionManufacturing Process and OptimizationAdvanced Statistical Process Monitoring