Latent Factors Meet Homophily in Diffusion Modelling
Diffusion is an important dynamics that helps spreading information within an online social network. While there are already numerous models for single item diffusion, few have studied diffusion of multiple items, especially when items can interact with one another due to their inter-similarity. Mor...
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sg-smu-ink.sis_research-41082018-07-13T04:41:55Z Latent Factors Meet Homophily in Diffusion Modelling LUU, Duc Minh Ee-peng LIM, Diffusion is an important dynamics that helps spreading information within an online social network. While there are already numerous models for single item diffusion, few have studied diffusion of multiple items, especially when items can interact with one another due to their inter-similarity. Moreover, the well-known homophily effect is rarely considered explicitly in the existing diffusion models. This work therefore fills this gap by proposing a novel model called Topic level Interaction Homophily Aware Diffusion (TIHAD) to include both latent factor level interaction among items and homophily factor in diffusion. The model determines item interaction based on latent factors and edge strengths based on homophily factor in the computation of social influence. An algorithm for training TIHAD model is also proposed. Our experiments on synthetic and real datasets show that: (a) homophily increases diffusion significantly, and (b) item interaction at topic level boosts diffusion among similar items. A case study on hashtag diffusion in Twitter also shows that TIHAD outperforms the baseline model in the hashtag adoption prediction task. 2015-09-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3108 info:doi/10.1007/978-3-319-23525-7_43 https://ink.library.smu.edu.sg/context/sis_research/article/4108/viewcontent/141._Latent_Factors_Meet_Homophily_in_Diffusion_Modelling__PKDD2015_.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Computer Sciences Databases and Information Systems |
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Computer Sciences Databases and Information Systems LUU, Duc Minh Ee-peng LIM, Latent Factors Meet Homophily in Diffusion Modelling |
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Diffusion is an important dynamics that helps spreading information within an online social network. While there are already numerous models for single item diffusion, few have studied diffusion of multiple items, especially when items can interact with one another due to their inter-similarity. Moreover, the well-known homophily effect is rarely considered explicitly in the existing diffusion models. This work therefore fills this gap by proposing a novel model called Topic level Interaction Homophily Aware Diffusion (TIHAD) to include both latent factor level interaction among items and homophily factor in diffusion. The model determines item interaction based on latent factors and edge strengths based on homophily factor in the computation of social influence. An algorithm for training TIHAD model is also proposed. Our experiments on synthetic and real datasets show that: (a) homophily increases diffusion significantly, and (b) item interaction at topic level boosts diffusion among similar items. A case study on hashtag diffusion in Twitter also shows that TIHAD outperforms the baseline model in the hashtag adoption prediction task. |
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LUU, Duc Minh Ee-peng LIM, |
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LUU, Duc Minh Ee-peng LIM, |
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LUU, Duc Minh |
title |
Latent Factors Meet Homophily in Diffusion Modelling |
title_short |
Latent Factors Meet Homophily in Diffusion Modelling |
title_full |
Latent Factors Meet Homophily in Diffusion Modelling |
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Latent Factors Meet Homophily in Diffusion Modelling |
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Latent Factors Meet Homophily in Diffusion Modelling |
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latent factors meet homophily in diffusion modelling |
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Institutional Knowledge at Singapore Management University |
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2015 |
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https://ink.library.smu.edu.sg/sis_research/3108 https://ink.library.smu.edu.sg/context/sis_research/article/4108/viewcontent/141._Latent_Factors_Meet_Homophily_in_Diffusion_Modelling__PKDD2015_.pdf |
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