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<p class="Headline">Multi-label Convolution Neural Network for Personalized News Recommendation based on Social Media Mining</p>

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Title Statement <p class="Headline">Multi-label Convolution Neural Network for Personalized News Recommendation based on Social Media Mining</p>
 
Added Entry - Uncontrolled Name Priya, Saravana ; Department of IT, MIT Campus, Anna University, Chennai 600 025, Tamil Nadu, India
Senthilkumar, Radha ; Department of IT, MIT Campus, Anna University, Chennai 600 025, Tamil Nadu, India
Jeyakumar, Saktheeswaran ; CAP Analyst, Citicorp Services India Private Limited, Chennai, 600 113, Tamil Nadu, India
Anna Centenary Research Fellowship funded by Anna University, Chennai, India.
 
Uncontrolled Index Term Classification, Deep learning, Recommendation, Social media
 
Summary, etc. <p>Prediction of user’s multi label interests and recommending the users interest based popular news articles through mining the social media are difficult task in Hybrid News Recommendation System (HYPNRS). To overcome this issue, this study proposes a deep learning approach - Multi-label Convolution Neural Network for predicting users' diversified interest in 15 labels using the binary relevance method. Based on labels of user’s interest, the most popular news articles are determined and their labels were clustered by mining social media feeds Facebook and Twitter along with current trends. The reliability of retrieved popular news articles also verified for recommendation. Eventually, the latest news articles catered from news feeds integrated along popular news articles and current trends together provide a recommendation list with respect to user interest. Experimental results show the proposed method diversified users interest labels prediction performance improved 5.87%, 12.09%, and 18.49% with the following state of art Support Vector Machine (SVM), Decision Tree and Naïve Bayes. The recommendation performance concerning users’ interest achieved 90%, 93.3%, 90% with social media feeds Facebook, Twitter and News Feeds accordingly.</p>
 
Publication, Distribution, Etc. Journal of Scientific and Industrial Research (JSIR)
2022-08-02 07:10:34
 
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http://op.niscair.res.in/index.php/JSIR/article/view/46261
 
Data Source Entry Journal of Scientific and Industrial Research (JSIR); ##issue.vol## 81, ##issue.no## 07 (2022): Journal of Scientific and Industrial Research
 
Language Note en