training
-- SET mapred.reduce.tasks=32;
drop table kdd10b_arow_model1;
create table kdd10b_arow_model1 as
select
feature,
-- voted_avg(weight) as weight
argmin_kld(weight, covar) as weight -- [hivemall v0.2alpha3 or later]
from
(select
-- train_arow(add_bias(features),label) as (feature,weight) -- [hivemall v0.1]
train_arow(add_bias(features),label) as (feature,weight,covar) -- [hivemall v0.2 or later]
from
kdd10b_train_x3
) t
group by feature;
prediction
create or replace view kdd10b_arow_predict1
as
select
t.rowid,
sum(m.weight * t.value) as total_weight,
case when sum(m.weight * t.value) > 0.0 then 1 else -1 end as label
from
kdd10b_test_exploded t LEFT OUTER JOIN
kdd10b_arow_model1 m ON (t.feature = m.feature)
group by
t.rowid;
evaluation
create or replace view kdd10b_arow_submit1 as
select
t.rowid,
t.label as actual,
pd.label as predicted
from
kdd10b_test t JOIN kdd10b_arow_predict1 pd
on (t.rowid = pd.rowid);
select count(1)/748401 from kdd10b_arow_submit1
where actual = predicted;
0.8565808971393678