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MUSIC ALGORITHM WITHOUT DIAGONAL ELEMENTS OF SCATTERING MATRIX

Published In: 8TH INTERNATIONAL CONFERENCE ON ADVANCES IN COMPUTING, ELECTRONICS AND COMMUNICATION
Author(s): WON-KWANG PARK

Abstract: It is well-known that diagonal elements of scattering matrix are significantly affected by not only the anomaly but also the antennas. Due to this reason, if one applies MUltiple SIgnal Classification (MUSIC) algorithm for imaging anomaly, several artifacts are also included. In this contribution, we apply MUSIC algorithm by eliminating diagonal elements of scattering matrix and examine that the result is better than the traditional one

  • Publication Date: 13-Jan-2019
  • DOI: 10.15224/978-1-63248-165-8-14
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ROUGH SET -ALGORITHM FOR CLUSTERING CATEGORICAL DATA USING MEAN ATTRIBUTE (MMA) DEPENDENCY BASED MEASURE

Published In: 8TH INTERNATIONAL CONFERENCE ON ADVANCES IN COMPUTING, ELECTRONICS AND COMMUNICATION
Author(s): ANAZIDA ZAINUL , MUFTAH MOHAMED BAROUD , SITI MARIYAM SHAMSUDDIN

Abstract: Different cluster techniques based on the Rough Set Theory (RST) have been used for attribute selection and grouping objects displaying similar characteristics. On the other hand, a majority of these clustering techniques cannot tackle uncertainty. Furthermore, these processes are computationally complicated and less accurate. In this study, the researchers have explored the limitations of the two rough set theory based techniques, i.e., the Maximum Dependency Attribute (MDA) and the Maximum Indiscernible Attribute (MIA). They also proposed a novel approach for selecting the clustering attributes, i.e., the Maximum Mean Attribute (MMA). They compared the performances of the MMA, MDA and the MIA techniques, using the UCI dataset. Their results validated the performance of the MMA with regards to its accuracy and computational complexity.

  • Publication Date: 13-Jan-2019
  • DOI: 10.15224/978-1-63248-165-8-15
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