ADAPTIVE HIGHLIGHTING OF LINKS TO ASSIST SURFING ON THE INTERNET
Gathering of novel information from the WWW constitutes a real challenge for artificial intelligence (AI) methods. Large search engines do not offer a satisfactory solution, their indexing cycle is long and they may offer a huge amount of documents. An AI-based assistant agent is studied here, which sorts the availabe links by their estimated value for the user. By using this link-list the best links could be highlighted in the browser, making the user's choices easier during surfing. The method makes use of (i) "experts", i.e. pre-trained text classifiers, forming the long-term memory of the system, (ii) relative values of experts and value estimation of documents based on recent choices of the user. Value estimation adapts fast and forms the short-term memory of the system. All experiments show that surfing based filtering can efficiently highlight 10%–20% of the documents in about five steps, or less.
Year of publication: |
2005
|
---|---|
Authors: | PALOTAI, ZSOLT ; GÁBOR, BÁLINT ; LŐRINCZ, ANDRÁS |
Published in: |
International Journal of Information Technology & Decision Making (IJITDM). - World Scientific Publishing Co. Pte. Ltd., ISSN 1793-6845. - Vol. 04.2005, 01, p. 117-139
|
Publisher: |
World Scientific Publishing Co. Pte. Ltd. |
Subject: | Internet surfing | text mining | reinforcement learning | neural network | user assistance |
Saved in:
Saved in favorites
Similar items by subject
-
Applications of intelligent systems for news analytics in finance
Božić, Časlav, (2013)
-
Optimale Investitionsentscheidungen mit neuronalen Netzen
Neuneier, Ralph, (1998)
-
Yan, Yimo, (2022)
- More ...
Similar items by person