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Angel X. Chang

Researcher at Simon Fraser University

Publications -  94
Citations -  16297

Angel X. Chang is an academic researcher from Simon Fraser University. The author has contributed to research in topics: Computer science & Natural language. The author has an hindex of 35, co-authored 77 publications receiving 11135 citations. Previous affiliations of Angel X. Chang include Princeton University & Stanford University.

Papers
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Proceedings Article

SUTime: A library for recognizing and normalizing time expressions

TL;DR: SUTIME is a temporal tagger for recognizing and normalizing temporal expressions in English text and is a deterministic rule-based system designed for extensibility.
Proceedings ArticleDOI

Generating Semantically Precise Scene Graphs from Textual Descriptions for Improved Image Retrieval

TL;DR: It is shown that scene graphs can be effectively created automatically from a natural language scene description and that using the output of the parsers is almost as effective as using human-constructed scene graphs.
Posted Content

MINOS: Multimodal Indoor Simulator for Navigation in Complex Environments

TL;DR: MINOS is used to benchmark deep-learning-based navigation methods, to analyze the influence of environmental complexity on navigation performance, and to carry out a controlled study of multimodality in sensorimotor learning.
Proceedings Article

Joint Entity and Event Coreference Resolution across Documents

TL;DR: A novel coreference resolution system that models entities and events jointly that handles nominal and verbal events as well as entities, and the joint formulation allows information from event coreference to help entity coreference, and vice versa.
Proceedings Article

A Cross-Lingual Dictionary for English Wikipedia Concepts

TL;DR: A resource for automatically associating strings of text with English Wikipedia concepts using the same fundamental probabilistic methods to map strings to empirical distributions over Wikipedia articles as it does to map article URLs to distributions over short, language-independent strings of natural language text.