Python Decision Tree Project
$30-250 USD
착불
This project has two parts:
Given a .cvs file (see uploaded filed [login to view URL]) for each unique VideoFileID the data would be vectored. Here is a psudeo code sample in R.
ld <- lapply(split(d[-1], d[["VideoFileId"]]), unlist)
ldNames <- Reduce(unique, lapply(ld, names))
[login to view URL](rbind, lapply(ld, function(x) x[ldNames]))
d2 <- [login to view URL](rbind, lapply(ld, function(x) x[ldNames]))
ldNames_sorted <- c(matrix(ldNames, ncol = (ncol(d) - 1), byrow = TRUE))
d2[, ldNames_sorted]
[login to view URL] = [login to view URL](VideoFileId = [login to view URL](d2), d2)
The second part of the project is to take this output file and write a python based supervised learning model. The model would allow for 80% of the data to be used for training and 20% for testing. The Model will be considered "complete" when the results return an Area under the ROC ( Receiver Operating Characteristic) Curve greater than 0.9.
프로젝트 ID: #18901709
프로젝트 소개
수상자:
I am a data scientist proficient in machine learning and web scrapping. My expertise in Python and R have comes from my experience in Natural Language processing, statistical analysis, web scraping etc. I also have a s 기타
이 일자리에 대한 프리랜서 4 명의 평균 입찰가: $128
Hello, I am experienced machine learning expert. I can help with this task with quick turnaorund. Looking to hearing from you. Kind regards Rina B.