mirror of
				https://asciireactor.com/otho/cs-5821.git
				synced 2025-10-31 17:58:04 +00:00 
			
		
		
		
	added r session for hw1
This commit is contained in:
		
							parent
							
								
									13883d0b1c
								
							
						
					
					
						commit
						439f7abca7
					
				
							
								
								
									
										
											BIN
										
									
								
								hw1/.RData
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										
											BIN
										
									
								
								hw1/.RData
									
									
									
									
									
										Normal file
									
								
							
										
											Binary file not shown.
										
									
								
							
							
								
								
									
										60
									
								
								hw1/.Rhistory
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										60
									
								
								hw1/.Rhistory
									
									
									
									
									
										Normal file
									
								
							| @ -0,0 +1,60 @@ | ||||
| Auto = read.table("Auto.data") | ||||
| dim(Auto) | ||||
| range(Auto) | ||||
| Auto = na.omit(Auto) | ||||
| fix(Auto) | ||||
| range(Auto) | ||||
| dim(Auto) | ||||
| Auto = read.csv("Auto.csv",header=T,na.strings="?") | ||||
| Auto = read.table("Auto.data",header=T,na.strings="?") | ||||
| dim(Auto) | ||||
| range(Auto) | ||||
| Auto=na.omit(Auto) | ||||
| range(Auto) | ||||
| Auto[1:4,] | ||||
| Auto | ||||
| range(Auto) | ||||
| names(Auto) | ||||
| fix(Auto) | ||||
| plot(cylinders,mpg) | ||||
| plot(cylinders,mpg) | ||||
| attach(Auto) | ||||
| plot(cylinders,mpg) | ||||
| names() | ||||
| names(Auto) | ||||
| range(mpg) | ||||
| range(names(Auto)) | ||||
| sapply() | ||||
| sapply(1:3) | ||||
| sapply(1:3,range(x))) | ||||
| sapply(1:3,range(x)) | ||||
| sapply(names(),range(x)) | ||||
| help(sapply) | ||||
| sapply(names(Auto),range(x)) | ||||
| sapply(names(Auto),range(X)) | ||||
| help(sapply) | ||||
| sapply(names(Auto),range) | ||||
| help(sapply) | ||||
| sapply(Auto,range) | ||||
| cylinders=as.factor(cylinders) | ||||
| lapply(Auto,class) | ||||
| auto = Auto | ||||
| lapply(auto,class) | ||||
| summary(Auto) | ||||
| plot(Auto) | ||||
| pairs(Auto) | ||||
| sapply(Auto,range) | ||||
| origin <- as.factor(origin) | ||||
| cols.qlt = names(auto)  | ||||
| cols.qlt | ||||
| cols.qlt = names(auto) %in% c("name,"origin") | ||||
| cols.qlt2 = names(auto) %in% c("name,"origin") | ||||
| cols.qlt = names(auto) %in% c("name","origin") | ||||
| cols.qlt | ||||
| lapply(auto[, !cols.qlt], range) | ||||
| lapply(auto[, !cols.qlt], function(x){ c('mean'=mean(x), 'sd'=sd(x)))}) | ||||
| lapply(auto[, !cols.qlt], function(x){ c('mean'=mean(x), 'sd'=sd(x))}) | ||||
| lapply(auto[, !cols.qlt], function(x){ c('mu'=mean(x), 'sigma'=sd(x))})[B | ||||
| lapply(auto[-(10:85), !cols.qlt], function(x){ c('mean'=mean(x), 'sd'=sd(x))}) | ||||
| lapply(auto[-(10:85), !cols.qlt], function(x){ c('mu'=mean(x), 'sigma'=sd(x))}) | ||||
| q() | ||||
| @ -252,7 +252,11 @@ remains? | ||||
| scatterplots or other tools of your choice. Create some plots highlighting | ||||
| the relationships among the predictors. Comment on your findings. | ||||
| 
 | ||||
|     I'll just make all the graphs, included at auto_pairs.png. There are a number of uncorrelated predictors, it seems, but many relationships can also be discerned. Mpg and cylinders; mpg and displacement; mpg and horsepower; mpg and weight; mpg and year, even; horsepower and displacement; really, there are many relationships, but the interesting ones are probably with the mpg. The strong linear relationships between horsepower, weight, and displacement make sense because they're pretty much correlated by design, as engineers make larger engines to handle more weight and so on. The relationships between this overall trend, is that as they increase, mpg decreases. We also see that mpg increases as the year increases, i.e., as we develop more sophisticated technology. | ||||
| 
 | ||||
| (f) Suppose that we wish to predict gas mileage ( mpg ) on the basis of the | ||||
| other variables. Do your plots suggest that any of the other variables | ||||
| might be useful in predicting mpg ? Justify your answer. | ||||
| 
 | ||||
| Well, I pretty much just answered that. The year is a great predictor: it appears we will likely continue to improve mpg slowly and in a linear fashion with time. There is a non-linear relationship that gives a strong mpg response as weight/displacement/horsepower decrease, so it's quite clear that these are a strong predictor of mpg. There's also a relationship with cylinders, but again, this is really just part of the trend of vehicles with more weight being designed with larger engines. Finally, it also seems that origin "3" makes cars with slightly better gas mileage than origin "2" and again 2 makes cars with better mpg than origin "1". I can't find it in the text, but I assume origin 3 is Japan, 2 is Europe, and 1 is US, just based on my own personal bias about society. | ||||
| 
 | ||||
|  | ||||
		Loading…
	
		Reference in New Issue
	
	Block a user