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Michael S. Bernstein

Researcher at Stanford University

Publications -  207
Citations -  59397

Michael S. Bernstein is an academic researcher from Stanford University. The author has contributed to research in topics: Crowdsourcing & Computer science. The author has an hindex of 52, co-authored 191 publications receiving 42744 citations. Previous affiliations of Michael S. Bernstein include Association for Computing Machinery & Massachusetts Institute of Technology.

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Iris: A Conversational Agent for Complex Tasks

TL;DR: Iris as mentioned in this paper is a conversational agent that combines simple standalone commands with human conversational strategies to perform more complex tasks that it has not been explicitly designed to support: for example, composing one command to "plot a histogram" with another to first "log-transform the data".
Proceedings ArticleDOI

Mechanical Novel: Crowdsourcing Complex Work through Reflection and Revision

TL;DR: This work proposes a technique for achieving interdependent complex goals with crowds, and embodies it in Mechanical Novel, a system that crowdsources short fiction stories on Amazon Mechanical Turk.
Proceedings ArticleDOI

Motif: Supporting Novice Creativity through Expert Patterns

TL;DR: Motif, a mobile video storytelling application that allows users to construct video stories by combining storytelling patterns extracted from stories created by experts, and encourages capturing shots with story structure and narrative goals in mind.
Proceedings ArticleDOI

Tweets as data: demonstration of TweeQL and Twitinfo

TL;DR: This work introduces TweeQL, a stream query processing language that presents a SQL-like query interface for unstructured tweets to generate structured data for downstream applications and builds several tools on top of Tweeql, most notably TwitInfo, an event timeline generation and exploration interface that summarizes events as they are discussed on Twitter.
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Visual7W: Grounded Question Answering in Images

TL;DR: A semantic link between textual descriptions and image regions by object-level grounding enables a new type of QA with visual answers, in addition to textual answers used in previous work, and proposes a novel LSTM model with spatial attention to tackle the 7W QA tasks.