Claims
- 1. A data fusion method comprising the steps of:
(a) receiving data; and (b) applying energy minimization to produce fusion vectors.
- 2. The data fusion method of claim 1 wherein step (b) comprises steps of:
to (b1) creating a plurality of data structures using the received data; (b2) fusing the plurality of data structures created from the received data using energy minimization.
- 3. The data fusion method of claim 2 wherein step (b) comprises producing fusion vectors from the plurality of data structures during fusion of the plurality of data structures.
- 4. The data fusion method of claim 2 wherein step (b) comprises compressing the plurality of data structures to produce a new data structure, the new data structure having fewer elements than any data structure of the plurality of data structures.
- 5. The data fusion method of claim 2 wherein the plurality of data structures comprise one or more matrices.
- 6. The data fusion method of claim 5 wherein the one or more matrices comprise lower triangular matrices filled with values of the received data.
- 7. The data fusion method of claim 1 further comprising the steps of:
transposing the received data to produce data structures; applying energy minimization to the data structures to produce a plurality of merged values; constructing a matrix from the merged values to define a proximity weight matrix; and applying individual differences multidimensional scaling to data structures derived from the received data and the proximity weight matrix to produce the fusion vectors.
- 8. The data fusion method of claim 1 wherein the data is ordinal data.
- 9. The data fusion method of claim 1 wherein step (b) comprises applying individual differences multidimensional scaling to the data.
- 10. The data fusion method of claim 1 further comprising the steps of:
(c) taking the norm of the fusion vectors.
- 11. The data fusion method of claim 1 wherein the received data comprise ordinal data.
- 12. A data fusion method comprising the steps of:
(a) receiving ordinal data; (b) creating matrices of length data using the ordinal data; (c) applying energy minimization to the matrices; and (e) producing fusion vectors in response to the energy minimization.
- 13. The data fusion method of claim 12 wherein step (b) comprises the steps of:
(b1) populating lower triangle matrices with elements of a collection of sets containing the ordinal data. (John, technically, the data itself is augmented and then placed in the matrices. This may be niggling, but perhaps it is still best to be precise. Also, do we now need to add language or separate claims that say that this augmented data is placed into data structures (and then into matrices)?)
- 15. The data fusion method of claim 12 further comprising the step of:
(b2) augmenting the data with artificial values.
- 16. The data fusion method of claim 15 wherein step (b2) comprises:
replacing one or more missing values of the data with artificial values.
- 17. The data fusion method of claim 15 wherein step (b2) comprises:
appending one or more artificial values to the data.
- 18. The data fusion method of claim 15 wherein the artificial values comprise randomly determined values.
- 19. The data fusion method of claim 15 wherein the artificial values comprise a repeated constant value.
- 20. The data fusion method of claim 12 wherein the ordinal data comprises ranking values for a predetermined characteristic among a plurality of input domains.
- 21. The data fusion method of claim 12 wherein the ordinal data comprises rating values for a predetermined characteristic among a plurality of input domains.
- 22. A data fusion process for data comprising:
using individual differences multidimensional scaling with one or more input length matrices into which the data for fusion has been converted to produce at least a source space output; and using the source space output to interpret the fused data.
- 23. The data fusion process of claim 22 further comprising the steps of:
prior to the step of individual differences multidimensional scaling, receiving ordinal data; and producing the one or more input length matrices from the ordinal data.
- 24. The data fusion process of claim 23wherein the producing step comprises treating the ordinal data as length data for input to an individual differences multidimensional scaling process.
- 25. A data fusion process comprising:
forming input length matrices with ordinal data; applying an energy minimization process with the input length matrices to produce at least a source space output; and interpreting the source space output as an indicator of data fusion.
- 26. The data fusion process of claim 25 wherein the forming step comprises the steps of:
receiving the ordinal data; treating each ordinal datum as a length; defining the input length matrices as a square lower triangular matrices of sufficient dimension to contain all the ordinal data; and mapping consecutive ordinal data into the input length matrices.
- 27. The data fusion process of claim 26 wherein the ordinal data comprises ranking values for a predetermined characteristic among a plurality of input domains.
- 28. The data fusion process of claim 26 wherein the ordinal data comprises rating values for a predetermined characteristic among a plurality of input domains.
- 29. The data fusion process of claim 26 wherein the mapping step comprises augmenting the data with artificial values.
- 30. The data fusion process of claim 26 wherein the energy minimization process comprises non-metric individual differences multidimensional scaling using the input length matrices.
- 31. The data fusion process of claim 26 further comprising the steps of:
producing fusion vectors in the source space output; and taking a norm of the fusion vectors.
- 32. The data fusion process of claim 26 further comprising the steps of:
transposing the received ordinal data to produce input length matrices, producing a proximity weight matrix; and providing the proximity weight matrix to the energy minimization process.
- 33. The data fusion process of claim 26 wherein the forming step comprises the steps of:
receiving the data; replicating the data; and mapping consecutive replicated data into the input length matrices.
- 34. Computer executable software program code stored on a computer readable medium, the code for data fusion of input data, the code comprising:
first code that receives data and forms one or more data structures using the data; second code that applies an energy minimization process to the one or more data structures and produces fusion vectors; and third code that uses the fusion vectors to provide user output information.
- 35. A method for data fusion, the method comprising the steps of:
receiving one or more sets of ordinal data Sk, the ordinal data including ranking values for a predetermined characteristic among a plurality of input domains; mapping the ordinal data into one or more empty lower triangular length matrices Tk to define lengths in the one or more matrices Tk; processing the matrices Tk using an energy minimization process to produce output data; and processing the output data to provide fused data.
- 36. The method for data fusion of claim 35 wherein step of processing the matrices Tk comprises the steps of:
processing the one or more sets of ordinal data Sk in the matrices Tk as relationally linked deformable configurations to find a configuration corresponding to minimum energy; and producing the output data associated with the configuration corresponding to minimum energy.
Priority Claims (2)
Number |
Date |
Country |
Kind |
PCT/US99/08768 |
Apr 1999 |
US |
|
PCT/US98/27374 |
Dec 1998 |
US |
|
CROSS REFERENCE TO RELATED APPLICATIONS
[0001] This application claims priority of PCT International application number PCT/US99/08768, filed Apr. 21, 1999, a continuation-in-part of PCT International application number PCT/US98/27374 filed Dec. 23, 1998 and designating the United States, which claims priority of U.S. provisional application serial No. 60/071,592, filed Dec. 29, 1997.
Provisional Applications (1)
|
Number |
Date |
Country |
|
60071592 |
Dec 1997 |
US |