User Settings
Article

Disambiguation of References to Individuals

14

TL;DRAbstract

We study the problem of disambiguating references to named people in web data. Each name spotted online is shared by several hundred people on average, and teasing apart these references is critical for a new family of person-aware analytical applications. We present and evaluate algorithms for this problem, and give results to indicate that 25% of personal references may be successfully disambiguated with precision in excess of 95%, but larger fractions cause a significant decline in precision.

Chat with Paper

AI Agents for this Paper

We study the problem of disambiguating references to named people in web data. Each name spotted online is shared by several hundred people on average, and teasing apart these references is critical for a new family of person-aware analytical applications. We present and evaluate algorithms for this problem, and give results to indicate that 25% of personal references may be successfully disambiguated with precision in excess of 95%, but larger fractions cause a significant decline in precision.

Keywords

Computer scienceNatural language processingArtificial intelligenceWorld Wide WebInformation retrieval

Chat

Click to start Chat