Abstract
A novel Twitter context aided content caching (TAC) framework is proposed for enhancing the caching efficiency by taking advantage of the legibility and massive volume of Twitter data. For the purpose of promoting the caching efficiency, three machine learning models are proposed to predict latent events and events popularity, utilizing collected Twitter data with geo-tags and geographic information of the adjacent base stations (BSs). Firstly, we propose a latent Dirichlet allocation (LDA) model for latent events forecasting because of the superiority of LDA model in natural language processing (NLP). Then, we conceive long short-term memory (LSTM) with skip-gram embedding approach and LSTM with continuous skip-gram-Geo-aware embedding approach for the events popularity forecasting. Furthermore, we associate the predict latent events and the popularity of the events with the caching strategy. Lastly, we propose a non-orthogonal multiple access (NOMA) based content transmission scheme. Extensive practical experiments demonstrate that: 1) the proposed TAC framework outperforms conventional caching framework and is capable of being employed in practical applications thanks to the associating ability with public interests; 2) the proposed LDA approach conserves superiority for natural language processing (NLP) in Twitter data; 3) the perplexity of the proposed skip-gram based LSTM is lower compared with conventional LDA approach; and 4) evaluation of the model demonstrates that the hit rates of tweets of the model vary from 50% to 65% and the hit rate of the caching contents is up to approximately 75% with smaller caching space compared to conventional algorithms. Simulation results also shows that the proposed NOMA-enabled caching scheme outperforms conventional least frequently used (LFU) scheme by 25%.
Highlights
Recent advances in mobile smart devices, ubiquitous social media and application brings tremendous expansion of mobile data traffic
long short-term memory (LSTM) networks are capable of fitting the complex relationship between history twitter data and future twitter data, and are more suitable for the proposed twitter based latent events prediction framework compared with conventional recurrent neural network (RNN). [34]
We propose a novel Twitter context aided content caching (TAC) framework in which latent events are extracted from collected Twitter context with base stations (BSs) geography information utilizing a versatile latent Dirichlet allocation (LDA) model, due to its superiority for natural language processing (NLP)
Summary
Recent advances in mobile smart devices, ubiquitous social media and application brings tremendous expansion of mobile data traffic. As the public tends to post their preferences and interests on social media platforms, it brings us an opportunity to cache text-related content more accurately in the BS through topics/events prediction. To efficiently predict caching textrelated contents among different BS, it is plausible to associate the public preference with the Twitter topical issues. After extracting latent events from tweets, the text-related contents caching in the BS can be determined. Since the APIs enable users to filter the regions of tweets based on their location tags (geo-tags), relating regional preference to the tweets in that region seems to be a feasible way to determine what to cache based on the public preferences. With the aid of the machine learning (ML) approaches, the preference is predicted and the text-related caching contents are associated with the preference of the regional public
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