To successfully embed statistical machine learning models in real world applications, two post-deployment capabilities must be provided: (1) the ability to solicit user corrections and (2) the ability to update the model from these corrections. We refer to the former capability as corrective feedback and the latter as persistent learning. While these capabilities have a natural implementation for simple classification tasks such as spam filtering, we argue that a more careful design is required for structured classification tasks. One example of a structured classification task is information extraction, in which raw text is analyzed to automatically populate a database. In this work, we augment a probabilistic information extraction system...
One of the goals of artificial intelligence is to build predictive models that can learn from exampl...
Statistical machine learning has become an integral technology for solving many informatics applicat...
Learning from imperfect (noisy) information sources is a challenging and reality issue for many data...
To successfully embed statistical machine learning models in real world applications, two post-deplo...
AbstractTo successfully embed statistical machine learning models in real world applications, two po...
Interactive systems that interact with and learn from user behavior are ubiquitous today. Machine le...
Interactive systems that interact with and learn from user behavior are ubiquitous today. Machine le...
Information extraction (IE) is defined as the identification and extraction of elements of interest,...
Data cleaning and data preparation have been long-standing challenges in data science to avoid incor...
Abstract. The most common model of machine learning algorithms involves two life-stages, namely the ...
We are surrounded by data in our daily lives. The rent of our houses, the amount of electricity unit...
International audienceWe model a document treatment chain as a Markov Decision Process, and use rein...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In this position paper we introduce Active In-ference, a paradigm for intelligently request-ing huma...
National audienceWe model a document treatment chain as a Markov Decision Process, and use reinforce...
One of the goals of artificial intelligence is to build predictive models that can learn from exampl...
Statistical machine learning has become an integral technology for solving many informatics applicat...
Learning from imperfect (noisy) information sources is a challenging and reality issue for many data...
To successfully embed statistical machine learning models in real world applications, two post-deplo...
AbstractTo successfully embed statistical machine learning models in real world applications, two po...
Interactive systems that interact with and learn from user behavior are ubiquitous today. Machine le...
Interactive systems that interact with and learn from user behavior are ubiquitous today. Machine le...
Information extraction (IE) is defined as the identification and extraction of elements of interest,...
Data cleaning and data preparation have been long-standing challenges in data science to avoid incor...
Abstract. The most common model of machine learning algorithms involves two life-stages, namely the ...
We are surrounded by data in our daily lives. The rent of our houses, the amount of electricity unit...
International audienceWe model a document treatment chain as a Markov Decision Process, and use rein...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In this position paper we introduce Active In-ference, a paradigm for intelligently request-ing huma...
National audienceWe model a document treatment chain as a Markov Decision Process, and use reinforce...
One of the goals of artificial intelligence is to build predictive models that can learn from exampl...
Statistical machine learning has become an integral technology for solving many informatics applicat...
Learning from imperfect (noisy) information sources is a challenging and reality issue for many data...