Methods and Apparatus For Serving Relevant Advertisements

US2018005266A1 · US · A1

Patent metadata
FieldValue
Publication numberUS-2018005266-A1
Application numberUS-201715704445-A
CountryUS
Kind codeA1
Filing dateSep 14, 2017
Priority dateSep 24, 2002
Publication dateJan 4, 2018
Grant date

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Abstract

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The relevance of advertisements to a user's interests is improved. In one implementation, the content of a web page is analyzed to determine a list of one or more topics associated with that web page. An advertisement is considered to be relevant to that web page if it is associated with keywords belonging to the list of one or more topics. One or more of these relevant advertisements may be provided for rendering in conjunction with the web page or related web pages.

First claim

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1 .- 19 . (canceled) 20 . A computer implemented method comprising: obtaining a set of rules that specify weights for each term of a plurality of terms extracted from a resource, with a weight of a term being a function of a frequency of the term in the resource; extracting a plurality of terms from a target resource; generating, based on the set of rules, a term vector that represents weights for the plurality of terms that appear within the target resource; determining that one or more terms of the term vector have one or more respective weights that each exceed a defined threshold; identifying targeting data for a content item; determining whether the content item is relevant to the target resource by comparing the targeting data for the content item to the determined one or more terms of the term vector; and serving the content item based on determining that the content item is relevant to the target resource. 21 . The computer implemented method of claim 20 , wherein the targeting data is provided by a content provider for the content item and comprises at least one of (A) a keyword and (B) a phrase, and wherein the targeting data for the content item is received via a content item campaign entry and management component of the server system. 22 . The computer implemented method of claim 20 , further comprising determining one or more topics that correspond to the target resource by determining that one or more terms of the term vector have one or more respective weights that each exceed a defined threshold. 23 . The computer implemented method of claim 22 , wherein the one or more topics corresponding to the target resource comprise at least one topic from another resource linked to the target resource. 24 . The computer implemented method of claim 22 , wherein the one or more topics corresponding to the target resource comprise anchor text in a link from another resource to the target resource. 25 . The computer implemented method of claim 22 , wherein the one or more topics corresponding to the target resource comprise text from queries to a search engine that returned a search result comprising the target resource. 26 . The computer implemented method of claim 22 , wherein the one or more topics corresponding to the target resource comprise text from queries to a search engine, wherein the search engine is configured to return a search result including the target resource, the search result being subsequently selectable by a user. 27 . A non-transitory computer readable medium storing instructions that are executable by one or more processors to perform operations comprising: obtaining a set of rules that specify weights for each term of a plurality of terms extracted from a resource, with a weight of a term being a function of a frequency of the term in the resource; extracting a plurality of terms from a target resource; generating, based on the set of rules, a term vector that represents weights for the plurality of terms that appear within the target resource; determining that one or more terms of the term vector have one or more respective weights that each exceed a defined threshold; identifying targeting data for a content item; determining whether the content item is relevant to the target resource by comparing the targeting data for the content item to the determined one or more terms of the term vector; and serving the content item based on determining that the content item is relevant to the target resource. 28 . The non-transitory computer readable medium of claim 27 , wherein the targeting data is provided by a content provider for the content item and comprises at least one of (A) a keyword and (B) a phrase, and wherein the targeting data for the content item is received via a content item campaign entry and management component of the server system. 29 . The non-transitory computer readable medium of claim 27 , the operations further comprising determining one or more topics that correspond to the target resource by determining that one or more terms of the term vector have one or more respective weights that each exceed a defined threshold. 30 . The non-transitory computer readable medium of claim 29 , wherein the one or more topics corresponding to the target resource further comprise at least one topic from another resource linked to the target resource. 31 . The non-transitory computer readable medium of claim 29 , wherein the one or more topics corresponding to the target resource further comprise anchor text in a link from another resource to the target resource. 32 . The non-transitory computer readable medium of claim 29 , wherein the one or more topics corresponding to the target resource further comprise text from queries to a search engine that returned a search result including the target resource. 33 . The non-transitory computer readable medium of claim 29 , wherein the one or more topics corresponding to the target resource further comprise text from queries to a search engine, wherein the search engine returns a search result including the target resource, the search result being subsequently selectable by a user. 34 . A computer implemented method comprising: obtaining a set of rules that specify weights for each term of a plurality of terms extracted from a resource, with a weight of a term being a function of a frequency of the term in the resource; extracting a plurality of terms from the target resource; generating, based on the set of rules, a term vector that represents weights for the plurality of terms that appear within text of the target resource, wherein the weights are based on at least one of (A) whether the term appears in the text of the target resource more frequently, relative to one or more other terms that each appear less frequently, and (B) whether the term appears less frequently, relative to one or more other terms that each appear frequently, across a collection of resources to which the target resource belongs; identifying targeting data for a content item; determining whether the content item is relevant to the target resource by comparing the targeting data to determined one or more terms of the term vector; and serving the content item based on determining that the content item is relevant to the target resource. 35 . The computer implemented method of claim 34 , further comprising determining one or more topics that correspond to the target resource by determining that one or more terms of the term vector have one or more respective weights that each exceed a defined threshold. 36 . The computer implemented method of claim 35 , wherein comparing comprises scoring a similarity between the targeting data for the content item and the one or more topics that correspond to the target resource and determining that the content item is relevant to the target resource when the similarity is above a threshold score. 37 . The computer implemented method of claim 34 , wherein the targeting data is provided by a content provider for the content item and comprises at least one of (A) a keyword and (B) a phrase, and wherein the targeting data for the content item is received via a content item campaign entry and management component of the server system. 38 . A system comprising: one or more processing devices; and at least one non transitory computer readable medium storing instructions operable to cause the one or more processing devices to perform operations comprising: obtaining a set of rules that specify weights for

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What does patent US2018005266A1 cover?
The relevance of advertisements to a user's interests is improved. In one implementation, the content of a web page is analyzed to determine a list of one or more topics associated with that web page. An advertisement is considered to be relevant to that web page if it is associated with keywords belonging to the list of one or more topics. One or more of these relevant advertisements may be pr…
Who is the assignee on this patent?
Google Inc
What technology area does this patent fall under?
Primary CPC classification G06Q30/0256. Mapped technology areas include Physics.
When was this patent published?
Publication date Thu Jan 04 2018 00:00:00 GMT+0000 (Coordinated Universal Time) (A1). Legal status and post-grant events are not shown on this page.
What related patents are in patentsdb?
We list 8 related publications on this page (citations in our corpus or others sharing the same primary CPC).