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DEEP LEARNING FOR DATA MINING UNSUPERVISED FEATURE LEARNING AND REPRESENTATION

Komal Lecturer Technical education department Lucknow. She has more than 14 years of teaching experience in teaching. Recently Completed AI and data science course from IIT Madras. Worked as Assistant Professor in AKTU Lucknow and published more than 10 research papers in the field of image processing, pattern recognition and computational intelligence. Published 3 patents in image processing and computational intelligence. Recently awarded as best educational icon rewards in the field of education department and actively participated in various activities and responsibilities provided by the department.

Dr. Mukesh Soni is a Assistant Professor in the Department of Computer Science Engineering, Dr. D. Y. Patil Vidyapeeth, Pune, Dr. D. Y. Patil School of Science & Technology, Tathawade, Pune, India. He is a Senior Member in IEEE. He has Qualified GATE examination in the year of 2012,2013,2014,2015,2018, and 2020 and got India Book of Record for this in 2020, also qualified UGC NET examination in 2014. His research interests include Applied Cryptography, Information Security, and Network Security. He has published many papers in peer review journals like IEEE Transactions, Elsevier, Springer. He has published 9 Indian Patents and 9 International Patents. He has received a total of 9 Awards like the Young Scientist awards, Young faculty award, Best faculty award, International Goal Achiever Award, NPTEL start awards, NPTEL believer award, Award Appreciation for Excellent performance in the field of Computer Science & Engineering, Award for Contribution to Student Development by different organizations. He is associated as a member reviewer in different peer-reviewed journals. He is also a member of many International and National professional bodies like IEEE, ACM Asia Society of Researcher, Scientific and Technical Research Association (STRA), “International Association of Engineers Institute for Engineering Research and Publication, Scholars Academic & Scientific Society.

Dr. Bhushan M. Nanche is an Assistant Professor in the Department of Information Technology at D.Y. Patil College of Engineering in Akurdi, Pune, Maharashtra, India, where he has been teaching since 2008. He earned his Bachelor’s degree from Shivaji University, Kolhapur, in 2008, followed by a Master’s in Computer Engineering from the University of Pune in 2015. Dr. Nanche has notable contributions in the form of patents and publications, with research interests that span the Internet of Things, Artificial Intelligence, and Algorithms. His work reflects a commitment to advancing technology and education in the field of information technology.

Dr. Haewon Byeon received the Dr. degree in Biomedical Science from Ajou University School of Medicine. Haewon Byeon currently works at the Department of Medical Big Data, Inje University. His recent interests focus on health promotion, AI-medicine, and biostatistics. He is currently a member of international committee for a Frontiers in Psychiatry, and an editorial board for World Journal of Psychiatry. Also, He were worked on a 4 projects (Principal Investigator) from the Ministryof Education, the Korea Research Foundation, and the Ministry of Health and Welfare. Byeon has published more than 343 articles and 19 books.

 

Description

Deep learning has revolutionized the field of data mining by introducing advanced methodologies for unsupervised feature learning and representation. In traditional data mining approaches, feature extraction typically relied on domain-specific knowledge and manual interventions, which limited the scalability and generalizability of models. However, deep learning offers automated feature extraction capabilities by leveraging hierarchical representations of data. These deep networks, composed of multiple layers, learn progressively abstract features directly from raw data, bypassing the need for explicit feature engineering. This is particularly beneficial in complex data environments such as images, audio, text, and other unstructured forms, where the intrinsic patterns can be difficult to capture using classical techniques. In unsupervised learning, deep learning models aim to uncover hidden structures in data without relying on labeled examples. Techniques such as autoencoders, restricted Boltzmann machines (RBMs), and generative adversarial networks (GANs) are pivotal in this context. These models seek to identify latent variables or compressed representations that effectively capture the essential properties of the input data. Autoencoders, for example, consist of an encoder that compresses the input into a lower-dimensional latent space and a decoder that reconstructs the input from this latent representation. By minimizing reconstruction error, the model ensures that the learned representation retains critical information. Similarly, GANs, which consist of a generator and a discriminator, are capable of generating new data points that closely resemble the original data distribution, effectively learning complex data distributions in an unsupervised manner. Unsupervised feature learning plays a crucial role in a wide array of applications. In clustering, it allows the discovery of natural groupings within the data without any prior knowledge about the class labels. In anomaly detection, unsupervised deep learning models can automatically learn what constitutes “normal” data and flag deviations from these learned patterns as anomalies. Furthermore, unsupervised feature representations are vital in transfer learning, where models pretrained on large, unlabeled datasets can be fine-tuned for specific tasks with minimal labeled data. This ability to leverage unlabeled data for downstream tasks has opened up new possibilities for handling big data, especially in domains where annotated datasets are scarce.

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