Apparatus, system, and method for company-customized work evaluation based on work sincerity and work concentration
US-2024378539-A1 · Nov 14, 2024 · US
US2016189084A1 · US · A1
| Field | Value |
|---|---|
| Publication number | US-2016189084-A1 |
| Application number | US-201514981753-A |
| Country | US |
| Kind code | A1 |
| Filing date | Dec 28, 2015 |
| Priority date | Sep 5, 2014 |
| Publication date | Jun 30, 2016 |
| Grant date | — |
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The methods and systems take into account a multiplicity of approaches to reputation determination and integrates them together in a way that determines not only a reputation index but a veracity scale on which to gauge that reputation. The system proposed herein will create reputation indices based on input from other participants in the ecosystem taking into account the weighting of the value of the input of the various participants based on their credibility as applied to the judgment at hand. The system will also take into account temporal components, the historical value of the work, passive input based on usage behavior, comments by casual observers as well as independent assessment in public fora. Additionally the proposed system provides for an architecture where users of the system are able to utilize the reputations thus created when making purchase, hiring or distribution decisions.
Opening claim text (preview).
What is claimed is: 1 . A method programmed in a non-transitory memory of a device comprising: a. acquiring reputation information of a ratee from a rater of an online system; b. analyzing the reputation information using a reputation collation engine; and c. generating a reputation index of the ratee based on analyzing the reputation information. 2 . The method of claim 1 wherein the reputation information includes input from the rater of the online system, wherein the input is weighted based on credibility of the rater and a temporal factor. 3 . The method of claim 2 wherein the input is weighted based on at least one of: a proximity of a rater to the ratee, a rating of the rater, and second and third order values. 4 . The method of claim 3 wherein the proximity of the rater to the ratee is determined using a relevance hierarchy, wherein: when the rater and the ratee are currently working together, the weight of the input of the rater is higher than when the rater and the ratee have previously worked together, further wherein: when the rater and the ratee have previously worked together, the weight of the input of the rater is higher than when the rater and the ratee have not worked together. 5 . The method of claim 4 wherein the input from the rater higher in the relevance hierarchy is weighted more than the input from the rater below in the relevance hierarchy, and closer proximity of the rater and ratee increases the weight of the input. 6 . The method of claim 3 wherein the weight of the input of the rater corresponds to success of the rater. 7 . The method of claim 3 wherein the weight of the input of the rater is based on historical accuracy of previous predictions by the rater. 8 . The method of claim 3 wherein the second order values include increasing or decreasing the weight of the input of the rater depending on a rating of the rater by additional raters, and the third order values include increasing or decreasing the weight of the input of the rater depending on the rating of the rater by additional raters and depending on ratings of the additional raters by even more additional raters. 9 . The method of claim 1 wherein the temporal factor includes decreasing weight of the input of the rater over time, wherein a rate of decrease is determined by a feedback loop which measures accuracy of the input, further wherein the weight of the input is initially decreased on a linear scale, and then the weight of the input is decreased logarithmically. 10 . The method of claim 1 wherein the rater is anonymous to a viewer of the reputation index but is not anonymous to the online system. 11 . The method of claim 1 further comprising implementing fraud detection and learning algorithms. 12 . The method of claim 1 wherein the reputation information includes granular reputation data is generated when the rater provides specific information, and iconic reputation data includes general information. 13 . The method of claim 1 further comprising: querying using request parameters for a resource; using the request parameters to select which reputation filters to apply; and displaying the reputation index based on the request filters. 14 . A system comprising: a. an acquisition module configured for acquiring reputation information of a ratee from a rater of an online system; b. an analysis module configured for analyzing the reputation information using a reputation collation engine; and c. a generation module configured for generating a reputation index of the ratee based on analyzing the reputation information. 15 . The system of claim 14 wherein the reputation information includes input from the rater of the online system, wherein the input is weighted based on credibility of the rater and a temporal factor. 16 . The system of claim 15 wherein the input is weighted based on at least one of: a proximity of a rater to the ratee, a rating of the rater, and second and third order values. 17 . The system of claim 16 wherein the proximity of the rater to the ratee is determined using a relevance hierarchy, wherein: when the rater and the ratee are currently working together, the weight of the input of the rater is higher than when the rater and the ratee have previously worked together, further wherein: when the rater and the ratee have previously worked together, the weight of the input of the rater is higher than when the rater and the ratee have not worked together. 18 . The system of claim 17 wherein the input from the rater higher in the relevance hierarchy is weighted more than the input from the rater below in the relevance hierarchy, and closer proximity of the rater and ratee increases the weight of the input. 19 . The system of claim 16 wherein the weight of the input of the rater corresponds to success of the rater. 20 . The system of claim 16 wherein the weight of the input of the rater is based on historical accuracy of previous predictions by the rater. 21 . The system of claim 16 wherein the second order values include increasing or decreasing the weight of the input of the rater depending on a rating of the rater by additional raters, and the third order values include increasing or decreasing the weight of the input of the rater depending on the rating of the rater by additional raters and depending on ratings of the additional raters by even more additional raters. 22 . The system of claim 14 wherein the temporal factor includes decreasing weight of the input of the rater over time, wherein a rate of decrease is determined by a feedback loop which measures accuracy of the input, further wherein the weight of the input is initially decreased on a linear scale, and then the weight of the input is decreased logarithmically. 23 . The system of claim 14 wherein the rater is anonymous to a viewer of the reputation index but is not anonymous to the online system. 24 . The system of claim 14 further comprising a fraud detection module configured for implementing fraud detection, and a learning module configured for implementing learning algorithms. 25 . The system of claim 14 wherein the reputation information includes granular reputation data is generated when the rater provides specific information, and iconic reputation data includes general information. 26 . The system of claim 14 further comprising: a querying module configured for querying using request parameters for a resource; a request module configured for using the request parameters to select which reputation filters to apply; and a display module configured for displaying the reputation index based on the request filters. 27 . An apparatus comprising: a. a non-transitory memory for storing an application, the application for: i. acquiring reputation information of a ratee from a rater of an online system; ii. analyzing the reputation information using a reputation collation engine; and iii. generating a reputation index of the ratee based on analyzing the reputation information; and b. a processing component coupled to the memory, the processing component configured for processing the application. 28 . The apparatus of claim 27 wherein the reputation information includes input from the rater of the online system, wherein the input is weighted based on credibility of the rater and a tempor
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