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ICE: Interactive Classification and Entity Extraction
Patrice Simard · Max Chickering · Aparna Lakshmiratan · Carlos Garcia Jurado Suarez · Saleema Amershi · Johan Verwey · Jina Suh

Wed Dec 10 04:00 PM -- 08:59 PM (PST) @ Level 2, room 230B
Event URL: http://research.microsoft.com/en-us/um/people/aparnar/nips/ice-nips6.mp4 »

Quick interaction between a human teacher and a learning machine presents numerous benefits and challenges when working with web-scale data. The human teacher guides the machine towards accomplishing the task of interest. The learning machine leverages big data to find examples that maximize the training value of its interaction with the teacher. When the teacher is restricted to labeling examples selected by the machine, this problem is an instance of active learning. When the teacher can provide additional information to the machine (e.g., suggestions on what examples or predictive features should be used) as the learning task progresses, then the problem becomes one of interactive learning. To accommodate the two-way communication channel needed for efficient interactive learning, the teacher and the machine need an environment that supports an interaction language. The machine can access, process, and summarize more examples than the teacher can see in a lifetime. Based on the machine’s output, the teacher can revise the definition of the task or make it more precise. Both the teacher and the machine continuously learn and benefit from the interaction. We have built a platform (ICE) to (1) produce valuable and deployable models and (2) support research on both the machine learning and user interface challenges of the interactive learning problem. The platform relies on a dedicated, low-latency, distributed, in-memory architecture that allows us to construct web-scale learning machines with quick interaction speed.

Author Information

Patrice Simard (Microsoft Research)
Max Chickering (Microsoft)
Aparna Lakshmiratan (Microsoft Corp)
Carlos Garcia Jurado Suarez (Microsoft Research)
Saleema Amershi (Microsoft Research)
Johan Verwey (Microsoft Research)
Jina Suh (Microsoft Research)

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