Interactive Machine Learning for the Internet of Things: A Case Study on Activity Detection

被引:4
作者
Tegen, Agnes [1 ]
Davidsson, Paul [1 ]
Persson, Jan A. [1 ]
机构
[1] Malmo Univ, Internet Things & People Res Ctr, Malmo, Sweden
来源
PROCEEDINGS OF THE 9TH INTERNATIONAL CONFERENCE ON THE INTERNET OF THINGS ( IOT 2019) | 2019年
关键词
machine learning; internet of things; interactive machine learning; data fusion; active learning; online learning;
D O I
10.1145/3365871.3365881
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
The advances in Internet of Things lead to an increased number of devices generating and streaming data. These devices can be useful data sources for Activity Recognition by using Machine Learning. However, as the set of available sensors may vary over time, e.g. due to mobility of the sensors and technical failures, the feature space might also change over time. Moreover, the labelled data necessary for the training is often costly to acquire. Active Learning is a type of Interactive Machine Learning where the model is given a budget for requesting labels from an oracle, and aims to maximize accuracy by careful selection of what data points to label. It is generally assumed that a query always gets a correct response, but in many real-world scenarios this is not a realistic assumption. In this work we investigate different Proactive Learning strategies, which explore the human factors of the oracle and aspects that might influence a user to provide or withhold labels. We implemented four proactive strategies and hybrid versions of them. They were evaluated on two datasets to examine how a more proactive, or reluctant, user affects performance. The results show that a more proactive user can improve the performance, especially when the user is influenced by the accuracy of earlier predictions. The experiments also highlight challenges related to evaluating performance when the set of classes is changing over time.
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页数:8
相关论文
共 22 条
  • [1] Data Fusion and IoT for Smart Ubiquitous Environments: A Survey
    Alam, Furqan
    Mehmood, Rashid
    Katib, Iyad
    Albogami, Nasser N.
    Albeshri, Aiiad
    [J]. IEEE ACCESS, 2017, 5 : 9533 - 9554
  • [2] Power to the People: The Role of Humans in Interactive Machine Learning
    Amershi, Saleema
    Cakmak, Maya
    Knox, W. Bradley
    Kulesza, Todd
    [J]. AI MAGAZINE, 2014, 35 (04) : 105 - 120
  • [3] Accurate occupancy detection of an office room from light, temperature, humidity and CO2 measurements using statistical learning models
    Candanedo, Luis M.
    Feldheim, Veronique
    [J]. ENERGY AND BUILDINGS, 2016, 112 : 28 - 39
  • [4] The Opportunity challenge: A benchmark database for on-body sensor-based activity recognition
    Chavarriaga, Ricardo
    Sagha, Hesam
    Calatroni, Alberto
    Digumarti, Sundara Tejaswi
    Troester, Gerhard
    Millan, Jose del R.
    Roggen, Daniel
    [J]. PATTERN RECOGNITION LETTERS, 2013, 34 (15) : 2033 - 2042
  • [5] Cheng Y, 2013, PROCEEDINGS OF THE 22ND ACM INTERNATIONAL CONFERENCE ON INFORMATION & KNOWLEDGE MANAGEMENT (CIKM'13), P1311
  • [6] Assessing Activity Recognition Feedback in Long-term Psychology Trials
    Dietrich, Manuel
    Berlin, Eugen
    van Laerhoven, Kristof
    [J]. PROCEEDINGS OF THE 14TH INTERNATIONAL CONFERENCE ON MOBILE AND UBIQUITOUS MULTIMEDIA (MUM 2015), 2015, : 121 - 130
  • [7] Donmez P., 2008, P 17 ACM C INF KNOWL, P619, DOI DOI 10.1145/1458082.1458165
  • [8] Johns E, 2015, PROC CVPR IEEE, P2616, DOI 10.1109/CVPR.2015.7298877
  • [9] Khan Z.A., 2017, Int. J. Comput. Netw. Appl, V4, P105, DOI 10.22247/ijcna/2017/49122
  • [10] Active and adaptive ensemble learning for online activity recognition from data streams
    Krawczyk, Bartosz
    [J]. KNOWLEDGE-BASED SYSTEMS, 2017, 138 : 69 - 78