The proliferation of smartphones and wearable devices has increased the
availability of large amounts of geospatial streams to provide significant
automated discovery of knowledge in pervasive environments, but most prominent
information related to altering interests have not yet adequately capitalized.
In this paper, we provide a novel algorithm to exploit the dynamic fluctuations
in user's point-of-interest while forecasting the future place of visit with
fine granularity. Our proposed algorithm is based on the dynamic formation of
collective personality communities using different languages, opinions,
geographical and temporal distributions for finding out optimized equivalent
content. We performed extensive empirical experiments involving, real-time
streams derived from 0.6 million stream tuples of micro-blog comprising 1945
social person fusion with graph algorithm and feed-forward neural network model
as a predictive classification model. Lastly, The framework achieves 62.10%
mean average precision on 1,20,000 embeddings on unlabeled users and
surprisingly 85.92% increment on the state-of-the-art approach.Comment: Accepted as a full paper in the 2nd International Workshop on Social
Computing co-located with ICDM, 2018 Singapor