# Postgresql k-nearest neighbor (KNN) on multidimensional cube

I have a cube that has 8 dimensions. I want to do nearest neighbor matching. I'm totally new to postgresql. I read that 9.1 supports nearest neighbor matching on multidimensions. I'd really appreciate if someone could give a complete example:

1. How to create a table with the 8D cube ?

2. Sample Insert

3. Lookup - exact matching

4. Lookup - nearest neighbor matching

Sample Data:

For simplicity sake, we can assume that all the values range from 0-100.

Point1: (1,1,1,1, 1,1,1,1)

Point2: (2,2,2,2, 2,2,2,2)

Look up value: (1,1,1,1, 1,1,1,2)

This should match against Point1 and not Point2.

Refs:

What's_new_in_PostgreSQL_9.1

https://en.wikipedia.org/wiki/K-d_tree#Nearest_neighbour_search

-
Can you explain what data you have, maybe provide some small sample? I think 8D cube is just a table with 8 columns (dimensions). –  Tomas Greif May 22 '13 at 6:54
I edited the question to include the sample data. Yes, 8D cube can be represented using 8 different numeric columns. –  MD Luffy May 22 '13 at 18:39
I've added complete example to my original answer. –  Tomas Greif May 23 '13 at 7:07

PostgreSQL supports distance operator `<->` and as I understand it, this can be used for analyzing text (with pg_trgrm module) and geometry data type.

I do not know how you can use it with more than 1 dimension. Maybe you will have to define your own distance function or somehow convert your data to one column with text or geometry type. For example if you have table with 8 columns (8-dimensional cube):

``````c1 c2 c3 c4 c5 c6 c7 c8
1  0  1  0  1  0  1  2
``````

You can convert it to:

``````c1 c2 c3 c4 c5 c6 c7 c8
a  b  a  b  a  b  a  c
``````

And then to table with one column:

``````c1
abababac
``````

Then you can use (after creating `gist` index):

``````SELECT c1, c1 <-> 'ababab'
FROM test_trgm
ORDER BY c1 <-> 'ababab';
``````

Example

Create sample data

``````-- Create some temporary data
-- ! Note that table are created in tmp schema (change sql to your scheme) and deleted if exists !
drop table if exists tmp.test_data;

-- Random integer matrix 100*8
create table tmp.test_data as (
select
trunc(random()*100)::int as input_variable_1,
trunc(random()*100)::int as input_variable_2,
trunc(random()*100)::int as input_variable_3,
trunc(random()*100)::int as input_variable_4,
trunc(random()*100)::int as input_variable_5,
trunc(random()*100)::int as input_variable_6,
trunc(random()*100)::int as input_variable_7,
trunc(random()*100)::int as input_variable_8
from
generate_series(1,100,1)
);
``````

Transform input data to text

``````drop table if exists tmp.test_data_trans;

create table tmp.test_data_trans as (
select
input_variable_1 || ';' ||
input_variable_2 || ';' ||
input_variable_3 || ';' ||
input_variable_4 || ';' ||
input_variable_5 || ';' ||
input_variable_6 || ';' ||
input_variable_7 || ';' ||
input_variable_8 as trans_variable
from
tmp.test_data
);
``````

This will give you one variable `trans_variable` where all the 8 dimensions are stored:

``````trans_variable
40;88;68;29;19;54;40;90
80;49;56;57;42;36;50;68
29;13;63;33;0;18;52;77
44;68;18;81;28;24;20;89
80;62;20;49;4;87;54;18
35;37;32;25;8;13;42;54
8;58;3;42;37;1;41;49
70;1;28;18;47;78;8;17
``````

Instead of `||` operator you can also use the following syntax (shorter, but more cryptic):

``````select
array_to_string(string_to_array(t.*::text,''),'') as trans_variable
from
tmp.test_data t
``````

``````create index test_data_gist_index on tmp.test_data_trans using gist(trans_variable);
``````

Test distance Note: I've selected one row from table - `52;42;18;50;68;29;8;55` - and used slightly changed value (`42;42;18;52;98;29;8;55`) to test the distance. Of course, you will have completely different values in your test data, because it is RANDOM matrix.

``````select
*,
trans_variable <->  '42;42;18;52;98;29;8;55' as distance,
similarity(trans_variable, '42;42;18;52;98;29;8;55') as similarity,
from
tmp.test_data_trans
order by
trans_variable <-> '52;42;18;50;68;29;8;55';
``````

You can use distance operator <-> or similiarity function. Distance = 1 - Similarity

-
Thanks twn08. I ran into this error when I attempt to create the index: create index test_data_gist_index on tmp.test_data_trans using gist(trans_variable); ERROR: data type text has no default operator class for access method "gist" SQL state: 42704 Hint: You must specify an operator class for the index or define a default operator class for the data type. –  MD Luffy May 24 '13 at 16:23
Maybe `btree_gist` is missing? Similar problem in this question –  Tomas Greif May 24 '13 at 17:56
Note that the `cube` type, a PostgreSQL extension, can be used to represent points or cubes in n-dimensions. (The value of n can go up to 100 by default, more if a limit in `cubedata.h` is raised.) So, this patch should among other things enable index-assisted multidimensional point/vector/cube nearest-neighbor search.
(Without this patch, the `cube` type doesn't have a `<->` distance operator, and a support function (#8) is missing from the `OPERATOR CLASS gist_cube_ops` which is needed to give gist the ability to make a distance-related index on these values.)