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Xiting Wang

Researcher at Microsoft

Publications -  56
Citations -  2439

Xiting Wang is an academic researcher from Microsoft. The author has contributed to research in topics: Computer science & Recommender system. The author has an hindex of 19, co-authored 39 publications receiving 1415 citations. Previous affiliations of Xiting Wang include Tsinghua University.

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Proceedings ArticleDOI

A Neural Influence Diffusion Model for Social Recommendation

TL;DR: Zhang et al. as discussed by the authors proposed a deep influence propagation model to stimulate how users are influenced by the recursive social diffusion process for social recommendation, which can be applied when the user~(item) attributes or the social network structure is not available.
Journal ArticleDOI

Towards better analysis of machine learning models: A visual analytics perspective

TL;DR: In this article, the authors classify the relevant work into three categories: understanding, diagnosis, and refinement, exemplified by recent influential work. And they present a comprehensive analysis and interpretation of this rapidly developing area.
Posted Content

Towards Better Analysis of Machine Learning Models: A Visual Analytics Perspective

TL;DR: This paper presents a comprehensive analysis and interpretation of interactive model analysis, the process of understanding, diagnosing, and refining a machine learning model with the help of interactive visualization with a focus on big data analytics.
Journal ArticleDOI

TopicPanorama: A full picture of relevant topics

TL;DR: A visual analytics approach to analyzing a full picture of relevant topics discussed in multiple sources, such as news, blogs, or micro-blogs, by incorporating metric learning and feature selection into the graph matching algorithm and developing a level-of-detail (LOD) visualization that balances both readability and stability.
Proceedings ArticleDOI

A Reinforcement Learning Framework for Explainable Recommendation

TL;DR: A reinforcement learning framework for explainable recommendation that can explain any recommendation model (model-agnostic) and can flexibly control the explanation quality based on the application scenario is designed.