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author | Paulo Chiliguano <p.e.chiilguano@se14.qmul.ac.uk> |
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date | Tue, 04 Aug 2015 12:13:47 +0100 |
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children | e68dbee1f6db |
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\chapter{Methodology} \section{Data collection} \subsection{Taste profile subset filtering} %At this stage, similarities between users is calculated to form a neighbourhood and predict user rating based on combination of the ratings of selected users in the neighbourhood. \subsection{Audio samples collection} %Classifier creates a model for each user based on the acoustic features of the tracks that user has liked. \subsection{Log-mel spectrograms} \section{Algorithms} \subsection{CNN implementation} %Deep belief network is a probabilistic model that has one observed layer and several hidden layers. \subsubsection{Genre classification} \subsection{Continuous Bayesian EDA} \subsection{EDA-based hybrid recommender}