Search results
Results From The WOW.Com Content Network
The carry-over effect can be defined as follows: when a user performs a search and follow it with a subsequent search, the results of the second search is influenced by the first search. A noteworthy point is that the top-ranked URLs are less likely to change based on personalization, with most personalization occurring at the lower ranks.
The top factors in personalizing search results are: Location; Search History; Web History; Social Networks; Each of these variables will factor into the personalization of a user's search results in hopes of quickly providing the most relevant results to the user to answer whatever question is being asked. [13]
Search engine HTTP tracking cookies Personalized results [a] [b] IP address tracking [c] [b] Information sharing [b] [clarification needed] Warrantless wiretapping of unencrypted backend traffic [b] Ahmia: No AOL: Yes Ask.com: Yes Baidu: Yes Unknown Unknown Unknown Unknown Blackle: No Brave Search: No DuckDuckGo [8] [12] No No No No [13 ...
The YouTube Instant interface, which looks similar to the YouTube front page consists of a box designed for a user to type in his search letter or phrase. As each letter of the search phrase is typed in, the server goes out into "YouTube video land" and tries to find matches for the search term similarly to current Google Instant search.
Contextual search is a form of optimizing web-based search results based on context provided by the user and the computer being used to enter the query. [1] Contextual search services differ from current search engines based on traditional information retrieval that return lists of documents based on their relevance to the query.
AOL Search delivers comprehensive listings and one-click access to relevant videos, pictures, local maps and more.
YouTube is an American social media and online video sharing platform owned by Google.YouTube was founded on February 14, 2005, by Steve Chen, Chad Hurley, and Jawed Karim, three former employees of PayPal.
The idea behind relevance feedback is to take the results that are initially returned from a given query, to gather user feedback, and to use information about whether or not those results are relevant to perform a new query. We can usefully distinguish between three types of feedback: explicit feedback, implicit feedback, and blind or "pseudo ...