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Why can't interesting titles be read normally?
Maybe it's because the interesting headlines have been upgraded and you haven't kept up with the pace. Just download it again and follow the prompts.

Fun Headline is an APP developed by Shanghai Ji Fen Culture Communication Co., Ltd., which was officially launched on June 20 16. With entertainment and life information as the main content, relying on intelligent data analysis system, it provides accurate content distribution services for emerging market audiences. With excellent content innovation and reading experience, it has become a unicorn of mobile content aggregation APP.

On August 20 18 18, Fun Headline submitted its application for initial public offering in the United States. On the evening of September 20 14 18, Fun Headline was officially listed on Nasdaq Stock Exchange, becoming the first mobile content aggregation share.

Interesting headlines are committed to creating new forms of information reading software, platforms, media and win-win ways. Content creation and information reading with mobile applications as the carrier will provide more useful, interesting and beneficial content for everyone. Original content, through cooperation with the media and PGC, interesting headlines get original content. Personalized recommendation, domestic experts and Silicon Valley scientists join hands to recommend featured reading content for users with the support of big data.

Interesting headline recommendation system, according to user attributes, enters knn clustering, deeply digs user interests, uses lda theme model to classify articles, and uses deep neural network model to train doc2vec. Offline computing uses svd matrix decomposition and collaborative filtering of project library to generate personalized recommended article sets, and online real-time LR prediction model reorders the recommended results through click feedback. Classify people and articles, and recommend articles that users like to users.