A Layered Quality Framework for Machine Learning-driven Data and Information Models

被引:5
|
作者
Azimi, Shelernaz [1 ]
Pahl, Claus [1 ]
机构
[1] Free Univ Bozen Bolzano, Bolzano, Italy
关键词
Data Quality; Information Value; Machine Learning; Big Data; Data Quality Improvement; Data Analysis; INTERNET; THINGS;
D O I
10.5220/0009472305790587
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Data quality is an important factor that determines the value of information in organisations. Data, when given meaning, results in information. This then creates financial value that can be monetised or provides value by supporting strategic and operational decision processes in organisations. In recent times, data is not directly accessed by the consumers, but is provided 'as-a-service'. Moreover, machine-learning techniques are now widely applied to data, helping to convert raw, monitored source data into valuable information. In this context, we introduce a framework that presents a range of quality factors for data and resulting machine-learning generated information models. Our specific aim is to link the quality of these machine-learned information models to the quality of the underlying source data. This takes into account the different types of machine learning information models as well as the value types that these model provide. We will look at this specifically in the context of numeric data, where we use an IoT application that exhibits a range of typical machine learning functions to validate our framework.
引用
收藏
页码:579 / 587
页数:9
相关论文
共 50 条
  • [1] TCLPI: Machine Learning-Driven Framework for Hybrid Learning Mode Identification
    Verma, Chaman
    Illes, Zoltan
    Kumar, Deepak
    IEEE ACCESS, 2024, 12 : 98029 - 98045
  • [2] KUALA: a machine learning-driven framework for kinase inhibitors repositioning
    De Simone, Giada
    Sardina, Davide Stefano
    Gulotta, Maria Rita
    Perricone, Ugo
    SCIENTIFIC REPORTS, 2022, 12 (01)
  • [3] KUALA: a machine learning-driven framework for kinase inhibitors repositioning
    Giada De Simone
    Davide Stefano Sardina
    Maria Rita Gulotta
    Ugo Perricone
    Scientific Reports, 12
  • [4] A framework proposal for machine learning-driven agent-based models through a case study analysis
    Turgut, Yakup
    Bozdag, Cafer Erhan
    SIMULATION MODELLING PRACTICE AND THEORY, 2023, 123
  • [5] Machine Learning-Driven Biomaterials Evolution
    Suwardi, Ady
    Wang, FuKe
    Xue, Kun
    Han, Ming-Yong
    Teo, Peili
    Wang, Pei
    Wang, Shijie
    Liu, Ye
    Ye, Enyi
    Li, Zibiao
    Loh, Xian Jun
    ADVANCED MATERIALS, 2022, 34 (01)
  • [6] Machine Learning-Driven Language Assessment
    Settles, Burr
    LaFlair, Geoffrey T.
    Hagiwara, Masato
    TRANSACTIONS OF THE ASSOCIATION FOR COMPUTATIONAL LINGUISTICS, 2020, 8 : 247 - 263
  • [7] Machine learning-driven QSAR models for predicting the mixture toxicity of nanoparticles
    Zhang, Fan
    Wang, Zhuang
    Peijnenburg, Willie J. G. M.
    Vijver, Martina G.
    ENVIRONMENT INTERNATIONAL, 2023, 177
  • [8] Machine Learning Made Easy (MLme): a comprehensive toolkit for machine learning-driven data analysis
    Akshay, Akshay
    Katoch, Mitali
    Shekarchizadeh, Navid
    Abedi, Masoud
    Sharma, Ankush
    Burkhard, Fiona C.
    Adam, Rosalyn M.
    Monastyrskaya, Katia
    Gheinani, Ali Hashemi
    GIGASCIENCE, 2024, 13
  • [9] An Improved Machine Learning-Driven Framework for Cryptocurrencies Price Prediction With Sentimental Cautioning
    Zubair, Muhammad
    Ali, Jaffar
    Alhussein, Musaed
    Hassan, Shoaib
    Aurangzeb, Khursheed
    Umair, Muhammad
    IEEE ACCESS, 2024, 12 : 51395 - 51418
  • [10] Machine learning-driven QSAR models for predicting the cytotoxicity of five common microplastics
    Liu, Chengzhi
    Zong, Cheng
    Chen, Shuang
    Chu, Jiangliang
    Yang, Yifan
    Pan, Yong
    Yuan, Beilei
    Zhang, Huazhong
    TOXICOLOGY, 2024, 508