"The book focuses on how machine learning and Internet of Things (IoT) has empowered the advancement of information driven arrangements including key concepts and advancements. Divided into sections such as machine learning, security, IoT and data mining, the concepts are explained with practical im
Applied machine learning for smart data analysis
โ Scribed by Dey, Nilanjan; Mahalle, Parikshit N.; Pathan, Mohd. Shafi; Wagh, Sanjeev
- Publisher
- CRC Press
- Year
- 2019
- Tongue
- English
- Leaves
- 245
- Series
- Computational intelligence in engineering problem solving
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Table of Contents
Content: <
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<
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Machine Learning<
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1. Hindi and Urdu To English Named Entity Statistical Machine Transliteration Using Source Language Word Origin Context<
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<
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2. Anti-Depression Psychotherapist Chat-Bot for Exam And Study Depression<
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<
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3. Deep Learning for HealthCare Information's<
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<
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4. Priority based Message Forwarding Scheme in VANET with Intelligent Navigation<
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<
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5. Plagiasil: "A Plagiarism Detector"(MAS Scalable Framework for Research Effort Evaluation by Unsupervised Machine Learning --
Hybrid Plagiarism Model)<
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<
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Machine Learning in Data Mining<
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6. <
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Digital image processing using Wavelets Basic principles and application<
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7. Placements Probability Predictor Using Data Mining Techniques<
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8. Big Data Summarization using Modified Fuzzy Clustering Algorithm, Semantic Feature and Data Compression Approach<
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9. Topic specific Natural Language Chatbot as General Advisor for College<
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Machine Learning in IoT<
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10. Implementing Ubiquitous Environment In Museum<
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11. Implementation of Machine Learning in Education Sector: Analyzing causes behind average student grades<
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12. Traffic Zone Warning and Violation Detection using Mobile Computing<
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Machine Learning in security<
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13. A Comparative Analysis and Discussion of Email Spam Classification Methods using Machine Learning Techniques<
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14. Malware Prevention and Detection System for SmartPhone: A Machine Learning Approach<
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15. Spam Review Detection and Recommendation of Correct Outcomes Based on Appropriate Reviews<
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Index<
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โฆ Subjects
Data mining / Industrial applications;Electronic data processing;Decision support systems;COMPUTERS / General;COMPUTERS / Database Management / Data Mining;COMPUTERS / Machine Theory;TECHNOLOGY / Electricity;Electronic books
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