208,802 research outputs found
User profiles matching for different social networks based on faces embeddings
It is common practice nowadays to use multiple social networks for different
social roles. Although this, these networks assume differences in content type,
communications and style of speech. If we intend to understand human behaviour
as a key-feature for recommender systems, banking risk assessments or
sociological researches, this is better to achieve using a combination of the
data from different social media. In this paper, we propose a new approach for
user profiles matching across social media based on embeddings of publicly
available users' face photos and conduct an experimental study of its
efficiency. Our approach is stable to changes in content and style for certain
social media.Comment: Submitted to HAIS 2019 conferenc
Link-Prediction Enhanced Consensus Clustering for Complex Networks
Many real networks that are inferred or collected from data are incomplete
due to missing edges. Missing edges can be inherent to the dataset (Facebook
friend links will never be complete) or the result of sampling (one may only
have access to a portion of the data). The consequence is that downstream
analyses that consume the network will often yield less accurate results than
if the edges were complete. Community detection algorithms, in particular,
often suffer when critical intra-community edges are missing. We propose a
novel consensus clustering algorithm to enhance community detection on
incomplete networks. Our framework utilizes existing community detection
algorithms that process networks imputed by our link prediction based
algorithm. The framework then merges their multiple outputs into a final
consensus output. On average our method boosts performance of existing
algorithms by 7% on artificial data and 17% on ego networks collected from
Facebook
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