Entropy in Real-World Datasets and Its Impact on Machine Learning
The topic of the reprint is very important nowadays, because ever-evolving machine learning techniques make it possible to obtain better real-world data. Therefore, this reprint contains information related to real data in fields such as automatic sign language translation, bike-sharing travel chara...
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Format: | Electronic Book Chapter |
Language: | English |
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Basel
MDPI - Multidisciplinary Digital Publishing Institute
2023
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Online Access: | DOAB: download the publication DOAB: description of the publication |
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520 | |a The topic of the reprint is very important nowadays, because ever-evolving machine learning techniques make it possible to obtain better real-world data. Therefore, this reprint contains information related to real data in fields such as automatic sign language translation, bike-sharing travel characteristics, stock index, sports data, fake news data, and more. However, it should be noted that the reprint also contains a lot of information on new developments in machine learning, new algorithms, algorithm modifications, and a new measure of classification quality assessment that also takes into account the preferences of the decision maker. | ||
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653 | |a imbalanced data | ||
653 | |a one-class classification | ||
653 | |a entropy measure | ||
653 | |a real-world data | ||
653 | |a preprocessing | ||
653 | |a decision table | ||
653 | |a classification | ||
653 | |a query set | ||
653 | |a decision tree | ||
653 | |a differential cryptanalysis | ||
653 | |a metaheuristics | ||
653 | |a symmetric block ciphers | ||
653 | |a memetic algorithms | ||
653 | |a DES | ||
653 | |a simulated annealing | ||
653 | |a COVID-19 | ||
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653 | |a dynamic stochastic general equilibrium models | ||
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653 | |a CEEMDAN | ||
653 | |a ADF | ||
653 | |a ARMA | ||
653 | |a LSTM | ||
653 | |a hybrid model | ||
653 | |a classification measure | ||
653 | |a quality of classification | ||
653 | |a quality measure | ||
653 | |a preference-driven classification | ||
653 | |a fast iterative filtering | ||
653 | |a parameter adaptive refined composite multiscale fluctuation-based dispersion entropy | ||
653 | |a rotating machinery | ||
653 | |a fault diagnosis | ||
653 | |a short-term demand prediction | ||
653 | |a bike-sharing | ||
653 | |a travel characteristics analysis | ||
653 | |a hybrid TCN-GRU model | ||
653 | |a distributed data | ||
653 | |a decision tables | ||
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653 | |a automatic translation | ||
653 | |a sign language | ||
653 | |a entropy of real data | ||
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856 | 4 | 0 | |a www.oapen.org |u https://directory.doabooks.org/handle/20.500.12854/101358 |7 0 |z DOAB: description of the publication |