formatting and background anomaly detection chapter work
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@article{anomaly_detection_survey,
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author = {Chandola, Varun and Banerjee, Arindam and Kumar, Vipin},
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title = {Anomaly detection: A survey},
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author = {Varun Chandola and Arindam Banerjee and Vipin Kumar},
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journal = {ACM Comput. Surv.},
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year = {2009},
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issue_date = {July 2009},
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publisher = {Association for Computing Machinery},
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address = {New York, NY, USA},
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volume = {41},
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pages = {15:1-15:58},
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url = {https://api.semanticscholar.org/CorpusID:207172599},
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number = {3},
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issn = {0360-0300},
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url = {https://doi.org/10.1145/1541880.1541882},
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doi = {10.1145/1541880.1541882},
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abstract = {Anomaly detection is an important problem that has been researched
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within diverse research areas and application domains. Many anomaly
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detection techniques have been specifically developed for certain
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application domains, while others are more generic. This survey
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tries to provide a structured and comprehensive overview of the
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research on anomaly detection. We have grouped existing techniques
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into different categories based on the underlying approach adopted
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by each technique. For each category we have identified key
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assumptions, which are used by the techniques to differentiate
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between normal and anomalous behavior. When applying a given
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technique to a particular domain, these assumptions can be used as
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guidelines to assess the effectiveness of the technique in that
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domain. For each category, we provide a basic anomaly detection
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technique, and then show how the different existing techniques in
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that category are variants of the basic technique. This template
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provides an easier and more succinct understanding of the
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techniques belonging to each category. Further, for each category,
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we identify the advantages and disadvantages of the techniques in
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that category. We also provide a discussion on the computational
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complexity of the techniques since it is an important issue in real
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application domains. We hope that this survey will provide a better
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understanding of the different directions in which research has
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been done on this topic, and how techniques developed in one area
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can be applied in domains for which they were not intended to begin
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with.},
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journal = {ACM Comput. Surv.},
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month = jul,
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articleno = {15},
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numpages = {58},
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keywords = {outlier detection, Anomaly detection},
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},
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@dataset{alexander_kyuroson_2023_7913307,
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author = {Alexander Kyuroson and Niklas Dahlquist and Nikolaos Stathoulopoulos
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@@ -114,70 +148,144 @@
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detection of adversarial examples of GTSRB stop signs.},
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},
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@inproceedings{anomaly_detection_medical,
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title = {Anomaly detection for medical images based on a one-class
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classification},
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author = {Qi Wei and Yinhao Ren and Rui Hou and Bibo Shi and Joseph Y. Lo and
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Lawrence Carin},
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booktitle = {Medical Imaging},
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year = {2018},
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url = {https://api.semanticscholar.org/CorpusID:3605439},
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author = {{Wei}, Qi and {Ren}, Yinhao and {Hou}, Rui and {Shi}, Bibo and {Lo},
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Joseph Y. and {Carin}, Lawrence},
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title = "{Anomaly detection for medical images based on a one-class
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classification}",
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booktitle = {Medical Imaging 2018: Computer-Aided Diagnosis},
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year = 2018,
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editor = {{Petrick}, Nicholas and {Mori}, Kensaku},
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series = {Society of Photo-Optical Instrumentation Engineers (SPIE) Conference
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Series},
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volume = {10575},
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month = feb,
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eid = {105751M},
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pages = {105751M},
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doi = {10.1117/12.2293408},
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adsurl = {https://ui.adsabs.harvard.edu/abs/2018SPIE10575E..1MW},
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adsnote = {Provided by the SAO/NASA Astrophysics Data System},
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},
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@article{anomaly_detection_defi,
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author = {Ul Hassan, Muneeb and Rehmani, Mubashir Husain and Chen, Jinjun},
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journal = {IEEE Communications Surveys & Tutorials},
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title = {Anomaly Detection in Blockchain Networks: A Comprehensive Survey},
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author = {Muneeb Ul Hassan and Mubashir Husain Rehmani and Jinjun Chen},
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journal = {IEEE Communications Surveys \& Tutorials},
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year = {2021},
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year = {2023},
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volume = {25},
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number = {1},
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pages = {289-318},
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url = {https://api.semanticscholar.org/CorpusID:245124512},
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},
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@article{anomaly_detection_manufacturing,
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title = {Residual Error Based Anomaly Detection Using Auto-Encoder in SMD
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keywords = {Blockchains;Anomaly detection;Security;Smart
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contracts;Privacy;Bitcoin;Tutorials;Blockchain;anomaly
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detection;fraud detection},
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doi = {10.1109/COMST.2022.3205643},
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}
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,
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@article{anomaly_detection_manufacturing,
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AUTHOR = {Oh, Dong Yul and Yun, Il Dong},
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TITLE = {Residual Error Based Anomaly Detection Using Auto-Encoder in SMD
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Machine Sound},
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author = {Dong Yul Oh and Il Dong Yun},
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journal = {Sensors (Basel, Switzerland)},
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year = {2018},
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volume = {18},
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url = {https://api.semanticscholar.org/CorpusID:14006440},
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JOURNAL = {Sensors},
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VOLUME = {18},
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YEAR = {2018},
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NUMBER = {5},
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ARTICLE-NUMBER = {1308},
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URL = {https://www.mdpi.com/1424-8220/18/5/1308},
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PubMedID = {29695084},
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ISSN = {1424-8220},
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ABSTRACT = {Detecting an anomaly or an abnormal situation from given noise is
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highly useful in an environment where constantly verifying and
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monitoring a machine is required. As deep learning algorithms are
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further developed, current studies have focused on this problem.
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However, there are too many variables to define anomalies, and the
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human annotation for a large collection of abnormal data labeled at
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the class-level is very labor-intensive. In this paper, we propose
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to detect abnormal operation sounds or outliers in a very complex
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machine along with reducing the data-driven annotation cost. The
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architecture of the proposed model is based on an auto-encoder, and
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it uses the residual error, which stands for its reconstruction
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quality, to identify the anomaly. We assess our model using
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Surface-Mounted Device (SMD) machine sound, which is very complex,
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as experimental data, and state-of-the-art performance is
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successfully achieved for anomaly detection.},
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DOI = {10.3390/s18051308},
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},
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@article{anomaly_detection_history,
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title = {XLI. On discordant observations},
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author = {Francis Ysidro Edgeworth},
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journal = {Philosophical Magazine Series 1},
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year = {1887},
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@article{anomaly_detection_history,
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author = {F.Y. Edgeworth and},
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title = {XLI. On discordant observations },
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journal = {The London, Edinburgh, and Dublin Philosophical Magazine and
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Journal of Science},
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volume = {23},
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pages = {364-375},
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url = {https://api.semanticscholar.org/CorpusID:120568135},
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number = {143},
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pages = {364--375},
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year = {1887},
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publisher = {Taylor \& Francis},
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doi = {10.1080/14786448708628471},
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URL = { https://doi.org/10.1080/14786448708628471 },
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eprint = { https://doi.org/10.1080/14786448708628471 },
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},
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@article{degradation_quantification_rain,
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@inproceedings{degradation_quantification_rain,
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author = {Zhang, Chen and Huang, Zefan and Ang, Marcelo H. and Rus, Daniela},
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booktitle = {2021 IEEE/RSJ International Conference on Intelligent Robots and
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Systems (IROS)},
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title = {LiDAR Degradation Quantification for Autonomous Driving in Rain},
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author = {Chen Zhang and Zefan Huang and Marcelo H. Ang and Daniela Rus},
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journal = {2021 IEEE/RSJ International Conference on Intelligent Robots and
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Systems (IROS)},
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year = {2021},
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volume = {},
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number = {},
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pages = {3458-3464},
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url = {https://api.semanticscholar.org/CorpusID:245264644},
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keywords = {Degradation;Location awareness;Laser radar;Rain;Codes;System
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performance;Current measurement},
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doi = {10.1109/IROS51168.2021.9636694},
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},
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@article{deep_learning_overview,
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@article{deep_learning_overview,
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title = {Deep learning in neural networks: An overview},
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author = {J{\"u}rgen Schmidhuber},
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journal = {Neural networks : the official journal of the International Neural
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Network Society},
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year = {2014},
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journal = {Neural Networks},
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volume = {61},
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pages = { 85-117 },
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url = {https://api.semanticscholar.org/CorpusID:11715509},
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pages = {85-117},
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year = {2015},
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issn = {0893-6080},
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doi = {https://doi.org/10.1016/j.neunet.2014.09.003},
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url = {https://www.sciencedirect.com/science/article/pii/S0893608014002135},
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author = {Jürgen Schmidhuber},
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keywords = {Deep learning, Supervised learning, Unsupervised learning,
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Reinforcement learning, Evolutionary computation},
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abstract = {In recent years, deep artificial neural networks (including
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recurrent ones) have won numerous contests in pattern recognition
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and machine learning. This historical survey compactly summarizes
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relevant work, much of it from the previous millennium. Shallow and
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Deep Learners are distinguished by the depth of their credit
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assignment paths, which are chains of possibly learnable, causal
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links between actions and effects. I review deep supervised
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learning (also recapitulating the history of backpropagation),
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unsupervised learning, reinforcement learning & evolutionary
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computation, and indirect search for short programs encoding deep
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and large networks.},
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},
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@article{autoencoder_survey,
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title = {A comprehensive survey on design and application of autoencoder in deep learning},
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journal = {Applied Soft Computing},
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volume = {138},
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pages = {110176},
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year = {2023},
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issn = {1568-4946},
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doi = {https://doi.org/10.1016/j.asoc.2023.110176},
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url = {https://www.sciencedirect.com/science/article/pii/S1568494623001941},
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author = {Pengzhi Li and Yan Pei and Jianqiang Li},
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keywords = {Deep learning, Autoencoder, Unsupervised learning, Feature extraction, Autoencoder application},
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abstract = {Autoencoder is an unsupervised learning model, which can automatically learn data features from a large number of samples and can act as a dimensionality reduction method. With the development of deep learning technology, autoencoder has attracted the attention of many scholars. Researchers have proposed several improved versions of autoencoder based on different application fields. First, this paper explains the principle of a conventional autoencoder and investigates the primary development process of an autoencoder. Second, We proposed a taxonomy of autoencoders according to their structures and principles. The related autoencoder models are comprehensively analyzed and discussed. This paper introduces the application progress of autoencoders in different fields, such as image classification and natural language processing, etc. Finally, the shortcomings of the current autoencoder algorithm are summarized, and prospected for its future development directions are addressed.}
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title = {A comprehensive survey on design and application of autoencoder in
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deep learning},
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journal = {Applied Soft Computing},
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volume = {138},
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pages = {110176},
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year = {2023},
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issn = {1568-4946},
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doi = {https://doi.org/10.1016/j.asoc.2023.110176},
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url = {https://www.sciencedirect.com/science/article/pii/S1568494623001941},
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author = {Pengzhi Li and Yan Pei and Jianqiang Li},
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keywords = {Deep learning, Autoencoder, Unsupervised learning, Feature
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extraction, Autoencoder application},
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abstract = {Autoencoder is an unsupervised learning model, which can
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automatically learn data features from a large number of samples
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and can act as a dimensionality reduction method. With the
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development of deep learning technology, autoencoder has attracted
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the attention of many scholars. Researchers have proposed several
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improved versions of autoencoder based on different application
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fields. First, this paper explains the principle of a conventional
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autoencoder and investigates the primary development process of an
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autoencoder. Second, We proposed a taxonomy of autoencoders
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according to their structures and principles. The related
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autoencoder models are comprehensively analyzed and discussed. This
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paper introduces the application progress of autoencoders in
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different fields, such as image classification and natural language
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processing, etc. Finally, the shortcomings of the current
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autoencoder algorithm are summarized, and prospected for its future
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development directions are addressed.},
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}
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