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[Rework] Use a dedicated library for autolearn

tags/2.0
Vsevolod Stakhov il y a 4 ans
Parent
révision
ebf85df690
2 fichiers modifiés avec 50 ajouts et 28 suppressions
  1. 1
    28
      conf/statistic.conf
  2. 49
    0
      lualib/lua_bayes_learn.lua

+ 1
- 28
conf/statistic.conf Voir le fichier

@@ -41,34 +41,7 @@ classifier "bayes" {
symbol = "BAYES_SPAM";
spam = true;
}
learn_condition =<<EOD
return function(task, is_spam, is_unlearn)
local learn_type = task:get_request_header('Learn-Type')

if not (learn_type and tostring(learn_type) == 'bulk') then
local prob = task:get_mempool():get_variable('bayes_prob', 'double')

if prob then
local in_class = false
local cl
if is_spam then
cl = 'spam'
in_class = prob >= 0.95
else
cl = 'ham'
in_class = prob <= 0.05
end

if in_class then
return false,string.format('already in class %s; probability %.2f%%',
cl, math.abs((prob - 0.5) * 200.0))
end
end
end

return true
end
EOD
learn_condition = "return require("lua_bayes_learn").autolearn"

.include(try=true; priority=1) "$LOCAL_CONFDIR/local.d/classifier-bayes.conf"
.include(try=true; priority=10) "$LOCAL_CONFDIR/override.d/classifier-bayes.conf"

+ 49
- 0
lualib/lua_bayes_learn.lua Voir le fichier

@@ -0,0 +1,49 @@
--[[
Copyright (c) 2019, Vsevolod Stakhov <vsevolod@highsecure.ru>

Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at

http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.
]]--

-- This file contains functions to simplify bayes classifier auto-learning

local exports = {}

exports.autolearn = function(task, is_spam, is_unlearn)
local learn_type = task:get_request_header('Learn-Type')

if not (learn_type and tostring(learn_type) == 'bulk') then
local prob = task:get_mempool():get_variable('bayes_prob', 'double')

if prob then
local in_class = false
local cl
if is_spam then
cl = 'spam'
in_class = prob >= 0.95
else
cl = 'ham'
in_class = prob <= 0.05
end

if in_class then
return false,string.format(
'already in class %s; probability %.2f%%',
cl, math.abs((prob - 0.5) * 200.0))
end
end
end

return true
end

return exports

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