Matching values from two vectors - r

I have two separate vectors HG and AG which represent two different soccer scores. One of them is the amount of home goals while the other is the amount of away goals. I'd like to know if there is a way of counting how many times a result occurs and putting it into a table, e.g. if value is 1 from HG and 2 from AG then the result is 1-2. Then I would like to find out how many times this score occurs.

vector<-paste(HG,AG,sep="-")
result<-data.frame(table(vector))

Related

Assign integral value to list of relative values

I have an assortment of syrups, each of which has a value - the amount of sugar per volume. As people blend these syrups, I track which ones are used, and created a table to get a Relative Weight of each blend. I understand > Data > Sort > Options > Custom Sort Order.
However, I really don't wish to sort each table, and am looking for a way to parse a column of this list as entered, and return a column with results in an Integral Relative Value of each row, as compared to the weights of syrups in the other rows of the table.
Unique Name weight Not Unique Relative Value
blueberry .250 2
raspberry .333 3
orange .425 4
tangerine .333 3
blackberry .225 1
I am attempting to find the "Relative Sort", a nested function which can assign an integral value of the Unique Name which compares the weights of the syrups. A "Lookup" only works if there is an absolute equality, right?
What if someone doesn't use "blackberry syrup", then "blueberry" is the lightest, and should be labeled as 1.
Is this too complicated for LibreOffice Calc?
It's a recursive greater than/less than/equal to comparison?
IF the problem is calculating the right hand column below from entries that may be sorted ascending by value as on the left:
then an answer is, in C2 and copied down to suit (provided C1 is blank or 0):
=IF(B1<>B2,C1+1,C1)
Without sorting the RANK function might be simpler and adequate (though in the example returning 5 rather than 4).

Efficient string similarity grouping

Setting:
I have data on people, and their parent's names, and I want to find siblings (people with identical parent names).
pdata<-data.frame(parents_name=c("peter pan + marta steward",
"pieter pan + marta steward",
"armin dolgner + jane johanna dough",
"jack jackson + sombody else"))
The expected output here would be a column indicating that the first two observations belong to family X, while the third and fourth columns are each in a separate family. E.g:
person_id parents_name family_id
1 "peter pan + marta steward", 1
2 "pieter pan + marta steward", 1
3 "armin dolgner + jane johanna dough", 2
4 "jack jackson + sombody else" 3
Current approach:
I am flexible regarding the distance metric. Currently, I use Levenshtein edit-distance to match obs, allowing for two-character differences. But other variants such as "largest common sub string" would be fine if they run faster.
For smaller subsamples I use stringdist::stringdist in a loop or stringdist::stringdistmatrix, but this is getting increasingly inefficient as sample size increases.
The matrix version explodes once a certain sample size is used. My terribly inefficient attempt at looping is here:
#create data of the same complexity using random last-names
#(4mio obs and ~1-3 kids per parents)
pdata<-data.frame(parents_name=paste0(rep(c("peter pan + marta ",
"pieter pan + marta ",
"armin dolgner + jane johanna ",
"jack jackson + sombody "),1e6),stringi::stri_rand_strings(4e6, 5)))
for (i in 1:nrow(pdata)) {
similar_fatersname0<-stringdist::stringdist(pdata$parents_name[i],pdata$parents_name[i:nrow(pdata)],nthread=4)<2
#[create grouping indicator]
}
My question: There should be substantial efficiency gains, e.g. because I could stop comparing strings once I found them to sufficiently different in something that is easier to assess, eg. string length, or first word. The string length variant already works and reduces complexity by a factor ~3. But thats by far too little. Any suggestions to reduce computation time are appreciated.
Remarks:
The strings are actually in unicode and not in the Latin alphabet (Devnagari)
Pre-processing to drop unused characters etc is done
There are two challenges:
A. The parallel execution of Levenstein distance - instead of a sequential loop
B. The number of comparisons: if our source list has 4 million entries, theoretically we should run 16 trillion of Levenstein distance measures, which is unrealistic, even if we resolve the first challenge.
To make my use of language clear, here are our definitions
we want to measure the Levenstein distance between expressions.
every expression has two sections, the parent A full name and the parent B full name which are separated by a plus sign
the order of the sections matters (i.e. two expressions (1, 2) are identical if Parent A of expression 1 = Parent A of expression 2 and Parent B or expression 1= Parent B of expression 2. Expressions will not be considered identical if Parent A of expression 1 = Parent B of expression 2 and Parent B of expression 1 = Parent A of expression 2)
a section (or a full name) is a series of words, which are separated by spaces or dashes and correspond to the the first name and last name of a person
we assume the maximum number of words in a section is 6 (your example has sections of 2 or 3 words, I assume we can have up to 6)
the sequence of words in a section matters (the section is always a first name followed by a last name and never the last name first, e.g. Jack John and John Jack are two different persons).
there are 4 million expressions
expressions are assumed to contain only English characters. Numbers, spaces, punctuation, dashes, and any non-English character can be ignored
we assume the easy matches are already done (like the exact expression matches) and we do not have to search for exact matches
Technically the goal is to find series of matching expressions in the 4-million expressions list. Two expressions are considered matching expression if their Levenstein distance is less than 2.
Practically we create two lists, which are exact copies of the initial 4-million expressions list. We call then the Left list and the Right list. Each expression is assigned an expression id before duplicating the list.
Our goal is to find entries in the Right list which have a Levenstein distance of less than 2 to entries of the Left list, excluding the same entry (same expression id).
I suggest a two step approach to resolve the two challenges separately. The first step will reduce the list of the possible matching expressions, the second will simplify the Levenstein distance measurement since we only look at very close expressions. The technology used is any traditional database server because we need to index the data sets for performance.
CHALLENGE A
The challenge A consists of reducing the number of distance measurements. We start from a maximum of approx. 16 trillion (4 million to the power of two) and we should not exceed a few tens or hundreds of millions.
The technique to use here consists of searching for at least one similar word in the complete expression. Depending on how the data is distributed, this will dramatically reduce the number of possible matching pairs. Alternatively, depending on the required accuracy of the result, we can also search for pairs with at least two similar words, or with at least half of similar words.
Technically I suggest to put the expression list in a table. Add an identity column to create a unique id per expression, and create 12 character columns. Then parse the expressions and put each word of each section in a separate column. This will look like (I have not represented all the 12 columns, but the idea is below):
|id | expression | sect_a_w_1 | sect_a_w_2 | sect_b_w_1 |sect_b_w_2 |
|1 | peter pan + marta steward | peter | pan | marta |steward |
There are empty columns (since there are very few expressions with 12 words) but it does not matter.
Then we replicate the table and create an index on every sect... column.
We run 12 joins which try to find similar words, something like
SELECT L.id, R.id
FROM left table L JOIN right table T
ON L.sect_a_w_1 = R.sect_a_w_1
AND L.id <> R.id
We collect the output in 12 temp tables and run an union query of the 12 tables to get a short list of all expressions which have a potential matching expressions with at least one identical word. This is the solution to our challenge A. We now have a short list of the most likely matching pairs. This list will contain millions of records (pairs of Left and Right entries), but not billions.
CHALLENGE B
The goal of challenge B is to process a simplified Levenstein distance in batch (instead of running it in a loop).
First we should agree on what is a simplified Levenstein distance.
First we agree that the levenstein distance of two expressions is the sum of the levenstein distance of all the words of the two expressions which have the same index. I mean the Levenstein distance of two expressions is the distance of their two first words, plus the distance of their two second words, etc.
Secondly, we need to invent a simplified Levenstein distance. I suggest to use the n-gram approach with only grams of 2 characters which have an index absolute difference of less than 2 .
e.g. the distance between peter and pieter is calculated as below
Peter
1 = pe
2 = et
3 = te
4 = er
5 = r_
Pieter
1 = pi
2 = ie
3 = et
4 = te
5 = er
6 = r_
Peter and Pieter have 4 common 2-grams with an index absolute difference of less than 2 'et','te','er','r_'. There are 6 possible 2-grams in the largest of the two words, the distance is then 6-4 = 2 - The Levenstein distance would also be 2 because there's one move of 'eter' and one letter insertion 'i'.
This is an approximation which will not work in all cases, but I think in our situation it will work very well. If we're not satisfied with the quality of the results we can try with 3-grams or 4-grams or allow a larger than 2 gram sequence difference. But the idea is to execute much fewer calculations per pair than in the traditional Levenstein algorithm.
Then we need to convert this into a technical solution. What I have done before is the following:
First isolate the words: since we need only to measure the distance between words, and then sum these distances per expression, we can further reduce the number of calculations by running a distinct select on the list of words (we have already prepared the list of words in the previous section).
This approach requires a mapping table which keeps track of the expression id, the section id, the word id and the word sequence number for word, so that the original expression distance can be calculated at the end of the process.
We then have a new list which is much shorter, and contains a cross join of all words for which the 2-gram distance measure is relevant.
Then we want to batch process this 2-gram distance measurement, and I suggest to do it in a SQL join. This requires a pre-processing step which consists of creating a new temporary table which stores every 2-gram in a separate row – and keeps track of the word Id, the word sequence and the section type
Technically this is done by slicing the list of words using a series (or a loop) of substring select, like this (assuming the word list tables - there are two copies, one Left and one Right - contain 2 columns word_id and word) :
INSERT INTO left_gram_table (word_id, gram_seq, gram)
SELECT word_id, 1 AS gram_seq, SUBSTRING(word,1,2) AS gram
FROM left_word_table
And then
INSERT INTO left_gram_table (word_id, gram_seq, gram)
SELECT word_id, 2 AS gram_seq, SUBSTRING(word,2,2) AS gram
FROM left_word_table
Etc.
Something which will make “steward” look like this (assume the word id is 152)
| pk | word_id | gram_seq | gram |
| 1 | 152 | 1 | st |
| 2 | 152 | 2 | te |
| 3 | 152 | 3 | ew |
| 4 | 152 | 4 | wa |
| 5 | 152 | 5 | ar |
| 6 | 152 | 6 | rd |
| 7 | 152 | 7 | d_ |
Don't forget to create an index on the word_id, the gram and the gram_seq columns, and the distance can be calculated with a join of the left and the right gram list, where the ON looks like
ON L.gram = R.gram
AND ABS(L.gram_seq + R.gram_seq)< 2
AND L.word_id <> R.word_id
The distance is the length of the longest of the two words minus the number of the matching grams. SQL is extremely fast to make such a query, and I think a simple computer with 8 gigs of RAM would easily do several hundred of million lines in a reasonable time frame.
And then it's only a matter of joining the mapping table to calculate the sum of word to word distance in every expression, to get the total expression to expression distance.
You are using the stringdist package anyway, does stringdist::phonetic() suit your needs? It computes the soundex code for each string, eg:
phonetic(pdata$parents_name)
[1] "P361" "P361" "A655" "J225"
Soundex is a tried-and-true method (almost 100 years old) for hashing names, and that means you don't need to compare every single pair of observations.
You might want to go further and do soundex on first name and last name seperately for father and mother.
My suggestion is to use a data science approach to identify only similar (same cluster) names to compare using stringdist.
I have modified a little bit the code generating "parents_name" adding more variability in first and second names in a scenario close to reality.
num<-4e6
#Random length
random_l<-round(runif(num,min = 5, max=15),0)
#Random strings in the first and second name
parent_rand_first<-stringi::stri_rand_strings(num, random_l)
order<-sample(1:num, num, replace=F)
parent_rand_second<-parent_rand_first[order]
#Paste first and second name
parents_name<-paste(parent_rand_first," + ",parent_rand_second)
parents_name[1:10]
Here start the real analysis, first extract feature from the names such as global length, length of the first, length of the second one, numeber of vowels and consonansts in both first and second name (and any other of interest).
After that bind all these feature and clusterize the data.frame in a high number of clusters (eg. 1000)
features<-cbind(nchars,nchars_first,nchars_second,nvowels_first,nvowels_second,nconsonants_first,nconsonants_second)
n_clusters<-1000
clusters<-kmeans(features,centers = n_clusters)
Apply stringdistmatrix only inside each cluster (containing similar couple of names)
dist_matrix<-NULL
for(i in 1:n_clusters)
{
cluster_i<-clusters$cluster==i
parents_name<-as.character(parents_name[cluster_i])
dist_matrix[[i]]<-stringdistmatrix(parents_name,parents_name,"lv")
}
In dist_matrix you have the distance beetwen each element in the cluster and you are able to assign the family_id using this distance.
To compute the distance in each cluster (in this example) the code takes approximately 1 sec (depending on the dimension of the cluster), in 15mins all the distances are computed.
WARNING: dist_matrix grow very fast, in your code is better if you will analyze it inside di for loop extracting famyli_id and then you can discard it.
You may improve by not comparing all the couples of lines.
Instead, create a new variable that will be helpfull for decide if it is worth comparing.
For exemple, create a new variable "score" contaning the ordered list of letters used in parents_name (for exemple if "peter pan + marta steward" then the score will be "ademnprstw"), and calculate distance only between lines where score are matching.
Of course, you can find a score that fits better your need, and improve a little to enable comparison when not all the letters used are common ..
I faced the same performance issue couple years ago. I had to match people's duplicates based on their typed names. My dataset had 200k names and the matrix approach exploded. After searching for some day about a better method, the method I'm proposing here did the job for me in some minutes:
library(stringdist)
parents_name <- c("peter pan + marta steward",
"pieter pan + marta steward",
"armin dolgner + jane johanna dough",
"jack jackson + sombody else")
person_id <- 1:length(parents_name)
family_id <- vector("integer", length(parents_name))
#Looping through unassigned family ids
while(sum(family_id == 0) > 0){
ids <- person_id[family_id == 0]
dists <- stringdist(parents_name[family_id == 0][1],
parents_name[family_id == 0],
method = "lv")
matches <- ids[dists <= 3]
family_id[matches] <- max(family_id) + 1
}
result <- data.frame(person_id, parents_name, family_id)
That way the while will compare fewer matches on every iteration. From that, you might implement different performance boosters, like filtering the names with the same first letter before comparing, etc.
Making equivalency groups on non transitive relation does not make sense. If A is like B and B is like C, but A is not like C, how would you make families from that? Using something like soundex (that was idea of Neal Fultz, not mine) seems the only meaningful option and it solves your problem with performance too.
What I have used to reduce the permutations involved in this sort of name matching, is create a function that counts the syllables in the name (surname) involved. Then store this in the database, as a pre-processed value. This becomes a Syllable Hash function.
Then you can choose to group words together with the same number of syllables as each other. (Although I use algorithms that allow 1 or 2 syllables difference, which may be presented as legitimate spelling / typo errors...But my research has found that 95% of misspellings share the same number of syllables)
In this case Peter and Pieter would have the same syllable count (2), but Jones and Smith do not (they have 1). (For example)
If your function does not get 1 syllable for Jones, then you may need to increase your tolerance to allow for at least 1 syllable difference in the Syllable Hash function grouping that you use. (To account for incorrect syllable function results, and to catch the matching surname correctly in the grouping)
My syllable counting function may not apply completely - as you might need to cope with non-English letter sets...(So I have not pasted the code...Its in C anyway) Mind you - the Syllable count function does not have to be accurate in terms of TRUE syllable count; it simply needs to act as a reliable Hashing function - which it does. Far superior to SoundEx which relies on the first letter being accurate.
Give it a go, you might be surprised how much improvement you get by implementing a Syllable Hash function. You may have to ask SO for help getting the function into your language.
If I get it right, you want to compare every parent pair (every row in parent_name data frame) with all other pairs (rows), and keep rows that have Levenstein distance smaller or equal to 2.
I have written following code for the beginning:
pdata<-data.frame(parents_name=c("peter pan + marta steward",
"pieter pan + marta steward",
"armin dolgner + jane johanna dough",
"jack jackson + sombody else"))
fuzzy_match <- list()
system.time(for (i in 1:nrow(pdata)){
fuzzy_match[[i]] <- cbind(pdata, parents_name_2 = pdata[i,"parents_name"],
dist = as.integer(stringdist(pdata[i,"parents_name"], pdata$parents_name)))
fuzzy_match[[i]] <- fuzzy_match[[i]][fuzzy_match[[i]]$dist <= 2,]
})
fuzzy_final <- do.call(rbind, fuzzy_match)
Does it return what you wanted?
it reproduces your output, i guess you will have to decide partial matching criteria, i kept the default agrep ones
pdata$parents_name<-as.character(pdata$parents_name)
x00<-unique(lapply(pdata$parents_name,function(x) agrep(x,pdata$parents_name)))
x=c()
for (i in 1:length(x00)){
x=c(x,rep(i,length(x00[[i]])))
}
pdata$person_id=seq(1:nrow(pdata))
pdata$family_id=x

How to perform the same operation(s) on all elements in a list

I have a large list with 317 elements. Each element contains a varying number of cases. These elements all have the exact same categories, but they have different numbers for all of them.
Each element has five categories:
Location
Species 1 count
Species 2 count
Species 3 count
Total species count
I originally had a dataframe that had all of the records in one, but I split it based on location as I am trying to find the proportion of the three species for each site (hence the 317 elements. There were 317 different locations so it split them into that)
I just want to perform the same operation on every element, receiving a number for each of them. I don't know how to calculate the proportion, but I do not need help with that. I just want to perform the same function on every single element in the list I have.
This is the code so far that I want to execute for every single element. I need to add the proportions code, but I will do that when I find out how to work it out.
##df = name of the large list
df$location <- df$location[!( ((df$species1) + (df$species2) + (df$species3)) != (df$totalSpecies) ),]
##remove any records where the three species do not equal the total
Thank you in advance!

How to create contingency table with multiple criteria subpopulation from weighted data using svyby in the survey package?

I am working with a large federal dataset with thousands of observations and thousands of variables. Replicate weights are provided. I am using the "survey" package in R to apply these weights:
els.weighted=svrepdesign(data=els, repweights = ~els$F3F1PNLWT,
combined.weights = TRUE).
I am interested in some categorical descriptive characteristics of a subset of the population, such as family living arrangements. I want to get these sorted out into a contingency table that shows frequency. I would like to sort people based on four variables (none of which are binary, but all of which are numeric) This is what I would like to get:
.
The blank boxes are where the cross-tabulation/frequency counts would show. (I only put in 3 columns beneath F1COMP for brevity's sake, but it has 9 outcomes – indexed 1-9)
My current code: svyby(~F1FCOMP, ~F1RTRCC +BYS33C +F1A10 +byurban, els.weighted, svytotal)
This code does sort the data, but it sorts every single combination, by default. I want them pared down to represent only specific subpopulations of each variable. I tried:
svyby(~F1FCOMP, ~F1RTRCC==2 |F1RTRCC==3 +BYS33C==1 +F1A10==2 | F1A10==3 +byurban==3, els.weighted, svytotal)
But got stopped:
Error: unexpected '==' in "svyby(~F1FCOMP, ~F1RTRCC==2 |F1RTRCC==3 +BYS33C=="
Additionally, my current version of the code tells me how many cases occur for each combination, This is a picture of what my current output looks like. There are hundreds more rows, 1 for each combination, when I keep scrolling down.
This is a picture of what my current output looks like. There are hundreds more rows, 1 for each combination, when I keep scrolling down
.
You can see in that picture that I only get one number for F1FCOMP per row – the number of cases who fit the specified combination – a specific subpopulation. I want to know more about that subpopulation. That is, F1COMP has nine different outcomes (indexed 1-9), and I want to see how many of each subpopulation fits into each of the 9 outcomes of F1COMP.

Cumulative sum of a georeferenced variable in R

I have a number of fishing boat tracks, and I'm trying to detect a certain pattern in their movement using R. In doing so I have reached a point where I have discarded all points of the track where the desired pattern is not occurring within a given time window, and I'm left with the remaining georeferenced points. These points have a score value associated, which measures the 'intensity' of the desired pattern.
track_1[1:10,]:
LAT LON SCORE
1 32.34855 -35.49264 80.67
2 31.54764 -35.58691 18.14
3 31.38293 -35.25243 46.70
4 31.21447 -35.25830 22.65
5 30.76365 -35.38881 11.93
6 30.75872 -35.54733 22.97
7 30.60261 -35.95472 35.98
8 30.62818 -36.27024 31.09
9 31.35912 -35.73573 14.97
10 31.15218 -36.38027 37.60
The code bellow provides the same data
data.frame(cbind(
LAT=c(32.34855,31.54764,31.38293,31.21447,30.76365,30.75872,30.60261,30.62818,31.35912,31.15218),
LON=c(-35.49264,-35.58691,-35.25243,-35.25830,-35.38881,-35.54733,-35.95472,-36.27024,-35.73573,-36.38027),
SCORE=c(80.67,18.14,46.70,22.65,11.93,22.97,35.98,31.09,14.97,37.60)))
Because some of these points occur geographically close to each other I need to 'pool' their scores together. Hence, I now need a way to throw this data into some kind of a spatial grid and cumulatively sum the scores of all points that fall in the same cell of the grid. This would allow me to find in what areas a given fishing boat exhibits the pattern I'm after the most (and this is not just about time spent in one place). Ultimately, the preferred output would contain lat and lon for every grid cell (center), and the sum of all scores on each cell. In addition, I would also like to be able to adjust the sizing of the grid cells.
I've looked around and all I can find either does not preserve the georeferenced information, is very inefficient, or performs binning of data. There may already be some answers out there, but it might be the case that I'm not able to recognize them since I'm a bit out of my league on this stuff. Can someone please point me to some direction (package, function, etc.)? Any guidance will be greatly appreciated.
Take your lat/lon coordinates, and multiply them by the inverse of your desired grid cell edge lengths, measured in degrees. The result will be a pair of floating point numbers whose integer part identifies the grid cell in question. Take the floor of these and you have two numbers describing the cell, which you could paste to form a single string. You may add that as a new factor column of your data frame. Then you can perform operations based on that factor, like summarizing values.
Example:
latScale <- 2 # one cell for every 0.5 degrees
lonScale <- 2 # likewise
track_1$cell <- factor(with(track_1,
paste(floor(LAT*latScale), floor(LON*lonScale), sep='.')))
library(plyr)
ddply(track_1, .(cell), summarize,
LAT=mean(LAT), LON=mean(LON), SCORE=sum(SCORE))
If you want to, you can use weighted.mean instead of mean. If you don't like these factors, you can put more effort in making them nice (e.g. by using compass directions instead of signs), or drop them altogether and use a pair of integer columns instead.

Resources