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Di Jiang

Researcher at Baidu

Publications -  42
Citations -  408

Di Jiang is an academic researcher from Baidu. The author has contributed to research in topics: Topic model & Computer science. The author has an hindex of 12, co-authored 33 publications receiving 317 citations. Previous affiliations of Di Jiang include Hong Kong University of Science and Technology.

Papers
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Proceedings ArticleDOI

Federated Topic Modeling

TL;DR: A novel framework named Federated Topic Modeling (FTM) is proposed, in which multiple parties collaboratively train a high-quality topic model by simultaneously alleviating data scarcity and maintaining immune to privacy adversaries, which verified FTM's superiority over conventional topic modeling.
Proceedings ArticleDOI

Dynamic multi-faceted topic discovery in twitter

TL;DR: The Multi-Faceted Topic Model (MfTM) is proposed to jointly model latent semantics among terms and entities and captures the temporal characteristics of each topic and develops an efficient online inference method for MfTM, which enables the model to be applied to large-scale and streaming data.
Proceedings ArticleDOI

Context-aware search personalization with concept preference

TL;DR: A new personalization framework is proposed that captures the user's preference in the form of concepts obtained by mining web search contexts and outperforms those existing concept-based personalization approaches without using search contexts.
Journal ArticleDOI

Integrating Social and Auxiliary Semantics for Multifaceted Topic Modeling in Twitter

TL;DR: A unified framework for Multifaceted Topic Modeling from Twitter streams is proposed to jointly model latent semantics among the social terms from Twitter, auxiliary terms from the linked Web documents and named entities, and the temporal characteristics of each topic.
Proceedings ArticleDOI

Personalized Query Suggestion With Diversity Awareness

TL;DR: The experimental results verify the hypothesis that diversification and personalization can be effectively integrated and they are able to enhance each other within the PQS-DA framework, which significantly outperforms several strong baselines with respect to a series of metrics.