フィルターのクリア

Can PCA be applied to achieve any data dimension that we want?

2 ビュー (過去 30 日間)
奥 刘
奥 刘 2021 年 11 月 8 日
コメント済み: 奥 刘 2021 年 11 月 9 日
Recently, I was trying to reproduce an algorithm in other's paper. In it, the author exploited PCA to reduce the dimensionality of a matrix to which is shown below as Fig.1. I was not familiar with the PCA. After reading the MATLAB documentation of PCA, I was wondering whether this reduction in matrix dimensionality was possible.
If it is true, how should I realize it in MATLAB?
Fig.1
The matrix represents the coupling from transmit antennas to receive antennas. Each row () represents the coupling from all J transmit antennas to the corresponding receive antenna.

採用された回答

Walter Roberson
Walter Roberson 2021 年 11 月 8 日
pca() can be applied to any 2D matrix (including matrixes that include NaN)
pca() does not have an inherent limitations on the size of the 2D matrix you pass in, other than the normal MATLAB size limits.
However, as part of the work, MATLAB may need to construct a covariance matrix, which for an input of n rows and p columns, would be a p x p matrix. If you have many more columns in your matrix than you have rows, then that could be trying to construct a matrix that you do not have room for in memory.
  3 件のコメント
奥 刘
奥 刘 2021 年 11 月 9 日
@Walter Roberson Thanks! I will read it carefully!

サインインしてコメントする。

その他の回答 (0 件)

カテゴリ

Help Center および File ExchangeDimensionality Reduction and Feature Extraction についてさらに検索

タグ

製品


リリース

R2019b

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by