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Titlebook: Applications of Machine Learning; Prashant Johri,Jitendra Kumar Verma,Sudip Paul Book 2020 Springer Nature Singapore Pte Ltd. 2020 Fuzyy L

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楼主: Lincoln
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Regression Model of Frame Rate Processing Performance for Embedded Systems Devices,ties of the processing pipeline organized on the device. In this case, system works in the single-threaded mode, and therefore, all stages of processing are performed sequentially. We define all the stages for data processing within embedded system based on the system-on-chip circuit. According to t
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Statistical Learning Process for the Reduction of Sample Collection Assuring a Desired Level of Conill more reliable data can be available. In other words, regarding problem-solving and planning issues, and at the beginning from a preliminary situation where simplifications are made, it is intended here to estimate the distortions introduced by the measurements, so that according to different val
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Sentiment Analysis on Google Play Store Data Using Deep Learning,udy the various intricate details of the underlying data. We implemented few machine learning techniques like Naive Bayes, XGBoost as well as a deep learning classifier and MLP, and further implemented functional layers of Keras for combining all the features of mobile apps like text reviews and num
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Neighborhood-Based Collaborative Recommendations: An Introduction,ing (UBCF) and item-based collaborative filtering (IBCF). Secondly, user-item interactions, in the form of rating data (UI-matrix), are analyzed with respect to the recommendation process, i.e., different types of ratings, various ways for collecting rating data, key properties of rating matrices, e
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