Perform Naive-Bayes classification(fitcnb) with non-zero off-diagonal covariance matrix
조회 수: 4 (최근 30일)
이전 댓글 표시
Greetings,
I use a Bayesian classification model to generate class-conditional probability density functions (PDFs) from a Monte Carlo (MC) simulation (see Fig 1). The different classes have inter-variable correlations such that the covariance matrix has non-zeros on the off-diagonal elements. However, the Bayesian classification model seems to assume that the off-diagonal elements are zero, such that the PDFs for each class are not shaped according to the MC simulated data (see Fig 2); this makes the PDFs look like ellipsoids that are horizontally aligned.
So, how can I specify the covariance elements in the Bayesian classification model when I for instance want to use it to predict a new data set?
Thanks,
Kenneth
Fig 1:
Fig2:
댓글 수: 0
채택된 답변
the cyclist
2018년 1월 18일
편집: the cyclist
2018년 1월 18일
Disclaimer: I am not an expert on these methods.
Doesn't the "naive" in naive Bayes specifically mean that the model features are independent from each other (i.e. uncorrelated)? You might need a more sophisticated model.
추가 답변 (1개)
Ilya
2018년 1월 19일
To estimate covariance per class, use fitcdiscr with discriminant type 'quadratic'.
댓글 수: 0
참고 항목
카테고리
Help Center 및 File Exchange에서 Naive Bayes에 대해 자세히 알아보기
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!