Effect of missing data on multitask prediction methods

被引:26
|
作者
de Leon, Antonio de la Vega [1 ]
Chen, Beining [2 ]
Gillet, Valerie J. [1 ]
机构
[1] Univ Sheffield, Informat Sch, Regent Court, 211 Portobello, Sheffield S1 4DP, S Yorkshire, England
[2] Univ Sheffield, Dept Chem, Dainton Bldg,Brook Hill, Sheffield S3 7HF, S Yorkshire, England
来源
关键词
Multitask prediction; Sparse data sets; Missing data; Deep neural networks; Macau; DEEP; OPPORTUNITIES; CHALLENGES;
D O I
10.1186/s13321-018-0281-z
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
There has been a growing interest in multitask prediction in chemoinformatics, helped by the increasing use of deep neural networks in this field. This technique is applied to multitarget data sets, where compounds have been tested against different targets, with the aim of developing models to predict a profile of biological activities for a given compound. However, multitarget data sets tend to be sparse; i.e., not all compound-target combinations have experimental values. There has been little research on the effect of missing data on the performance of multitask methods. We have used two complete data sets to simulate sparseness by removing data from the training set. Different models to remove the data were compared. These sparse sets were used to train two different multitask methods, deep neural networks and Macau, which is a Bayesian probabilistic matrix factorization technique. Results from both methods were remarkably similar and showed that the performance decrease because of missing data is at first small before accelerating after large amounts of data are removed. This work provides a first approximation to assess how much data is required to produce good performance in multitask prediction exercises.
引用
收藏
页数:12
相关论文
共 50 条
  • [1] Effect of missing data on multitask prediction methods
    Antonio de la Vega de León
    Beining Chen
    Valerie J. Gillet
    Journal of Cheminformatics, 10
  • [2] Phenotypic screening aided by multitask prediction methods
    de Leon, Antonio de la Vega
    Gillet, Val
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2018, 256
  • [3] Prediction of missing temperature data using different machine learning methods
    Okan Mert Katipoğlu
    Arabian Journal of Geosciences, 2022, 15 (1)
  • [4] Load-Adjusted Video Quality Prediction Methods for Missing Data
    de Frein, Ruairi
    2015 10TH INTERNATIONAL CONFERENCE FOR INTERNET TECHNOLOGY AND SECURED TRANSACTIONS (ICITST), 2015, : 314 - 319
  • [5] Traffic Flow Prediction With Missing Data Imputed by Tensor Completion Methods
    Li, Qin
    Tan, Huachun
    Wu, Yuankai
    Ye, Linhui
    Ding, Fan
    IEEE ACCESS, 2020, 8 : 63188 - 63201
  • [6] Evaluation of Missing Data Imputation Methods for an Enhanced Distributed PV Generation Prediction
    Sundararajan, Aditya
    Sarwat, Arif I.
    PROCEEDINGS OF THE FUTURE TECHNOLOGIES CONFERENCE (FTC) 2019, VOL 1, 2020, 1069 : 590 - 609
  • [7] Infilling of missing data in groundwater pollution prediction models using statistical methods
    Pal, Jayashree
    Chakrabarty, Dibakar
    HYDROLOGICAL SCIENCES JOURNAL, 2023, 68 (15) : 2208 - 2222
  • [8] Missing Data and Imputation Methods
    Schober, Patrick
    Vetter, Thomas R.
    ANESTHESIA AND ANALGESIA, 2020, 131 (05): : 1419 - 1420
  • [9] Parametric and Non-parametric Methods to Enhance Prediction Performance in the Presence of Missing Data
    Bashir, Faraj
    Wei, Hua-Liang
    2015 19TH INTERNATIONAL CONFERENCE ON SYSTEM THEORY, CONTROL AND COMPUTING (ICSTCC), 2015, : 337 - 342
  • [10] Inconsistencies in handling missing data across stages of prediction modelling: a review of methods used
    Tsvetanova, Antonia
    Sperrin, Matthew
    Peek, Niels
    Buchan, Iain
    Hyland, Stephanie
    Martin, Glen
    2021 IEEE 9TH INTERNATIONAL CONFERENCE ON HEALTHCARE INFORMATICS (ICHI 2021), 2021, : 443 - 444