Extraction of Professional Interests from Social Web Profiles
نویسندگان
چکیده
Many people share and communicate their private thoughts and opinions via systems like Facebook and Twitter. In this paper, we analyze if also professional interests of a user can be extracted from these activities and be distinguished from private interests. The results indicate that performance largely depends on the size and quality of the Social Web profiles. Methods for reducing noise and chatter for-high volume profiles improve quality, but reduce diversity of the profiles.
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