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It looks like the website is blocking direct access from Curl.

library(XML) 
library(RCurl) 
theurl <- "http://www.london2012.com/medals/medal-count/"
page <- getURL(theurl)

page # fail
[1] "<HTML><HEAD>\n<TITLE>Access Denied</TITLE>\n</HEAD><BODY>\n<H1>Access Denied</H1>\n \nYou don't have permission to access \"http&#58;&#47;&#47;www&#46;london2012&#46;com&#47;medals&#47;medal&#45;count&#47;\" on this server.<P>\nReference&#32;&#35;18&#46;358a503f&#46;1343590091&#46;c056ae2\n</BODY>\n</HTML>\n"

Let's try to see if we can access it directly from the Table.

page <- readHTMLTable(theurl)

No luck there Error in htmlParse(doc) : error in creating parser for http://www.london2012.com/medals/medal-count/

How would you go about getting this table into R?


Update: in response to comments and toying, faking a user agent string worked to get the content. But readHTMLtable returns an error.

page <- getURLContent(theurl, useragent="Mozilla/5.0 (Windows NT 6.1; rv:15.0) Gecko/20120716 Firefox/15.0a2")
share|improve this question
    
Lynx, seems to be blocked as well. –  Brandon Bertelsen Jul 29 '12 at 19:48
    
Since the page loads in Firefox, view the source and save to disk? –  BondedDust Jul 29 '12 at 19:58
    
With getURL you can specify a false user agent string, which worked for getting the data. But readHTMLTable still doesn't poop out nicely. It returns an error (Error in names(ans) = header : 'names' attribute [13] must be the same length as the vector [7]) not quite sure how to debug that. –  Brandon Bertelsen Jul 29 '12 at 20:03
    
How did you get the source? It seems like you could avoid readHTML and use regular expressions instead. –  Sacha Epskamp Jul 29 '12 at 20:05
2  
the new york times has an API, which apparently can be used to follow london2012 –  baptiste Jul 29 '12 at 20:39

2 Answers 2

up vote 12 down vote accepted

It looks like this works:

rr <- readHTMLTable(page,header=FALSE)
rr2 <- setNames(rr[[1]],
                c("rank","country","gold","silver","bronze","junk","total"))
rr3 <- subset(rr2,select=-junk)
## oops, numbers all got turned into factors ...
tmpf <- function(x) { as.numeric(as.character(x)) }
rr3[,-2] <- sapply(rr3[,-2],tmpf)               
head(rr3)
##   rank                                country gold silver bronze total
## 1    1             People's Republic of China    6      4      2    12
## 2    2               United States of America    3      5      3    11
## 3    3                                  Italy    2      3      2     7
## 4    4                      Republic of Korea    2      1      2     5
## 5    5                                 France    2      1      1     4
## 6    6 Democratic People's Republic  of Korea    2      0      1     3
with(rr3,dotchart(total,country))
share|improve this answer
    
I think you can use stringsAsFactors=FALSE in the readHTMLTable call. –  GSee Jul 29 '12 at 20:43
    
OK, but I think I'd still have to convert those columns to numeric? –  Ben Bolker Jul 29 '12 at 20:44
    
Did you just look through the code to see if it had thead? –  Brandon Bertelsen Jul 29 '12 at 20:50
    
@BenBolker, you're right; they'd be character otherwise. –  GSee Jul 29 '12 at 20:54
1  
I started to poke around at the code (with options(error=recover), noticed the mismatch between header values and columns of the table; and decided to try header=FALSE as a shortcut ... –  Ben Bolker Jul 29 '12 at 21:04

Here is what I came up with using regular expressions. Very specific and definitely not better than using readHTMLTable used in the other answer. More to show that you can go quite far with textmining in R:

# file <- "~/Documents/R/medals.html"
# page <- readChar(file,file.info(file)$size)

library(RCurl) 
theurl <- "http://www.london2012.com/medals/medal-count/"
page <- getURLContent(theurl, useragent="Mozilla/5.0 (Windows NT 6.1; rv:15.0) Gecko/20120716 Firefox/15.0a2")


# Remove html tags:
page <- gsub("<(.|\n)*?>","",page)
# Remove newlines and tabs:
page <- gsub("\\n","",page)

# match table:
page <- regmatches(page,regexpr("(?<=Total).*(?=Detailed)",page,perl=TRUE))

# Extract country+medals+rank
codes <-regmatches(page,gregexpr("\\d+[^\\r]*\\d+",page,perl=TRUE))[[1]]
codes <- codes[seq(1,length(codes)-2,by=2)]

# Extract country and medals:
Names <- gsub("\\d","",codes)
Medals <- sapply(regmatches(codes,gregexpr("\\d",codes)),function(x)x[(length(x)-2):length(x)])

# Create data frame:
data.frame(
  Country = Names,
  Gold = as.numeric(Medals[1,]),
  Silver = as.numeric(Medals[2,]),
  Bronze = as.numeric(Medals[3,]))

And the output:

                                  Country Gold Silver Bronze
1              People's Republic of China    6      4      2
2                United States of America    3      5      3
3                                   Italy    2      3      2
4                       Republic of Korea    2      1      2
5                                  France    2      1      1
6  Democratic People's Republic  of Korea    2      0      1
7                              Kazakhstan    2      0      0
8                               Australia    1      1      1
9                                  Brazil    1      1      1
10                                Hungary    1      1      1
11                            Netherlands    1      1      0
12                     Russian Federation    1      0      3
13                                Georgia    1      0      0
14                           South Africa    1      0      0
15                                  Japan    0      2      3
16                          Great Britain    0      1      1
17                               Colombia    0      1      0
18                                   Cuba    0      1      0
19                                 Poland    0      1      0
20                                Romania    0      1      0
21                Taipei (Chinese Taipei)    0      1      0
22                             Azerbaijan    0      0      1
23                                Belgium    0      0      1
24                                 Canada    0      0      1
25                    Republic of Moldova    0      0      1
26                                 Norway    0      0      1
27                                 Serbia    0      0      1
28                               Slovakia    0      0      1
29                                Ukraine    0      0      1
30                             Uzbekistan    0      0      1
share|improve this answer
    
+1 for regex skills. Even though I use it regularly I'm still largely mystified by it. –  Brandon Bertelsen Jul 29 '12 at 20:51
1  
Of course it is always a good skill to have: xkcd.com/208 –  Sacha Epskamp Jul 30 '12 at 9:06

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