PostgreSQL 线性回归 - 股价预测 1

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简介:
本文是一个简单的一元线性回归的例子, 需要了解相关理论知识可参考 : 
http://blog.163.com/digoal@126/blog/static/163877040201523112651593/

数据来自股票的收盘价.
如果要做多元分析, 请自行增加维度(例如大盘指数,成交量,最低,最高价,价格区间等等都可以那里做回归计算), 计算期望值.

例子如下 : 
按实际顺序录入test, 如时间从小到大, ID从小到大, 最终目标是用前一个值预测下一个值
第一条记录是最老的值, 最后一条记录是最新的值, 不要搞反了.
create table test(id int, cnt numeric);
-- 以下是网友提供的阿里巴巴的收盘价数据
-- 格式 date,close,volume,open,high,low
vi ali.txt
2015/3/3,81.58,39173430,82.95,83.25,80.03
2015/3/2,84,11175870,85,85.02,83.75
2015/2/27,85.12,8362081,85.95,86.56,85
2015/2/26,85.37,8758019,86.92,87.16,85.2
2015/2/25,86.19,13592080,84.38,86.83,84.36
2015/2/24,84.69,15817560,85.53,85.53,83.88
2015/2/23,85.47,9352529,86.51,86.68,85.25
2015/2/20,86.64,7805009,87.25,87.29,86.38
2015/2/19,86.89,7568275,86.81,87.87,86.71
2015/2/18,86.74,7415961,87.1,87.43,86.5
2015/2/17,86.85,15133130,88.78,88.99,86.7
2015/2/13,89.05,14587390,88.2,89.3,87.65
2015/2/12,87.1,15143910,85.6,88.3,85.55
2015/2/11,86,12281340,87.58,87.7,85.82
2015/2/10,87.26,12026260,87.01,87.47,86.52
2015/2/9,86,12088070,85.83,86.75,85.47
2015/2/6,85.68,17597490,87.11,87.4,85.42
2015/2/5,87,28867570,89.58,89.84,86.1
2015/2/4,90,14599400,90.99,91.88,89.48
2015/2/3,90.61,13475970,91.65,91.65,89.9
2015/2/2,90.13,18845140,91.13,91.66,88.61
2015/1/30,89.08,36747370,89.6,92,88.11
2015/1/29,89.81,76430640,90.53,90.74,87.36
2015/1/28,98.45,42012700,100.3,101.49,97.79
2015/1/27,102.94,15591560,102.89,103.57,100.58
2015/1/26,103.99,10656340,104.4,105.13,103.33
2015/1/23,103.11,9860504,104.02,105.2,103.02
2015/1/22,104,11400180,104.6,104.92,103.1
2015/1/21,103.29,15141470,100.75,103.86,100.32
2015/1/20,100.04,12049470,98.3,100.21,97.59
2015/1/16,96.89,13313120,96.09,97.8,95.52
2015/1/15,96.31,18182200,99.67,100.14,96.02
2015/1/14,99.58,17785990,99.28,100.18,98.06
2015/1/13,100.77,11275790,102.59,102.85,100.01
2015/1/12,101.62,7946740,103.2,103.36,101.21
2015/1/9,103.02,10193410,105.24,105.3,102.89
2015/1/8,105.03,12904640,102.95,105.3399,102.68
2015/1/7,102.13,11000010,104.59,104.74,102.03
2015/1/6,103.32,15662710,101.25,103.85,100.11
2015/1/5,101,18313750,102.76,103.02,99.9
2015/1/2,103.6,12286400,104.24,104.72,102.52
2014/12/31,103.94,10254350,106.46,106.47,103.69
2014/12/30,105.75,10185890,105.64,106.71,105.13
2014/12/29,105.98,8059191,105.95,107.66,105.64
2014/12/26,105.95,6523956,105.99,106.94,105.5
2014/12/24,105.95,5870358,105.68,107.21,105.6
2014/12/23,105.52,19077270,108.3,108.47,103.88
2014/12/22,108.77,12985130,110.63,110.98,108.53
2014/12/19,110.65,14785340,109.93,110.65,108.04
2014/12/18,109.25,22749890,110.58,111.2,108.26
2014/12/17,109.02,17242940,107.11,109.19,106.28
2014/12/16,105.77,21655360,103.75,107.68,103.7
2014/12/15,104.7,16476750,106.39,107.77,103.7
2014/12/12,105.11,14504050,104.7,107.45,104.179
2014/12/11,104.97,15658440,104.44,106.84,104.29
2014/12/10,103.88,18398440,107.09,107.38,103.51
2014/12/9,107.48,24805130,102.27,107.95,101.2
2014/12/8,105.07,19166550,105.97,107.4,104.2101
2014/12/5,107.9,12125090,109.6,110.35,107.76
2014/12/4,109.17,10790400,110.1,110.5,108.91
2014/12/3,110.64,16164860,110.4,111.68,108.798

--  导入数据库
create table tmp(c1 text,c2 numeric,c3 numeric,c4 numeric,c5 numeric,c6 numeric);
copy tmp from '/home/postgres/ali.txt' with (format csv);

--  调换一下顺序
insert into test select row_number() over(order by ctid desc), c2 from tmp;
-- 校验函数
CREATE OR REPLACE FUNCTION public.check_predict(
IN ov integer,   --  校验哪条记录
OUT rv numeric,  --  真实值
OUT pv numeric,  --  预测值
OUT dev numeric, --  误差
OUT zv numeric,  --  自变量
OUT v_slope numeric, --  斜率
OUT v_inter numeric, --  截距
OUT v_r2  numeric  --  相关性
)
 RETURNS record
 LANGUAGE plpgsql
AS $function$
declare 
  r2_1 numeric := 0; -- 相关性
  r2_2 numeric := 0; -- 最大相关性
  var int;           --  样本起点
  inter_1 numeric;  --  截距
  slope_1 numeric;  --  斜率
  inter_2 numeric;  --  最大相关性截距
  slope_2 numeric;  --  最大相关性斜率
  realv numeric;    --  真实数据
  predicv numeric;  --  预测数据
  offset_var int := ov;   -- 倒数第?个值的预测值, 不停迭代, 最后计算所有的实际值和预测值的corr, 选择最佳相关?
  v_cnt int8 := 0;
  v_lmt int := 90;  --  使用的最大样本集, 影响预测准确度
  v_min int := 5;   --  使用的最小样本数, 影响预测准确度
  zcnt numeric := 0;    --  自变量
begin
  select count(*) into v_cnt from test;

  --  自变量 t1
  --  因变量 t2

  --  筛选最大相关度的样本数, 并记录下储斜率, 截距.
  for i in 0..v_lmt 
  loop
    with t1 as (select row_number() over(order by id desc) as rn,* from (select id,lag(cnt,1) over(order by id) as zbl_cnt,cnt from test order by id desc offset offset_var limit v_lmt+v_min) t
                where t.zbl_cnt is not null
           )
      select regr_intercept(t1.cnt,t1.zbl_cnt), regr_slope(t1.cnt,t1.zbl_cnt), regr_r2(t1.cnt,t1.zbl_cnt) 
        into inter_1,slope_1,r2_1
      from t1
      where t1.rn<=i+v_min;
    
    if r2_1>r2_2 then 
      inter_2 := inter_1;
      slope_2 := slope_1;
      r2_2 := r2_1;
      var := i+v_min;
    end if;
  end loop;

  raise notice 'offset:%, 最大相关度样本数:%, 截距%, 斜率%, 相关性%', offset_var, var, round(inter_2,4), round(slope_2,4), round(r2_2,4);
  select slope_2*cnt+inter_2, cnt into predicv,zcnt from test order by id desc offset offset_var limit 1;
  
  --  offset_var=0的自变量, 表示最近一个值, 所以真实值还不存在, 那么realv=NULL
  if  offset_var=0 then
    realv := NULL;
  else
    select cnt into realv from test order by id desc offset offset_var-1 limit 1;
  end if;

  raise notice '自变量%, 真实数据%, 预测数据%, 本次预测偏差%%%', zcnt, realv, round(predicv,2), abs(1-round(predicv/realv,4))*100;

  rv := realv;
  pv := round(predicv,2);
  dev := abs(1-round(predicv/realv,4));
  zv  := zcnt;
  v_slope := slope_2;
  v_inter := inter_2;
  v_r2 := r2_2;

  return;
end;
$function$;

--  预测结果偏差较大, 看dev这列显示偏差
(如果你的数据包含今天的收盘价格的数据的话, 第一行就是预测的明天的收盘价格)
postgres=# select (check_predict(i)).* from generate_series(0,50) t(i);
   rv   |   pv   |  dev   |   zv   |      v_slope       |      v_inter       |        v_r2        
--------+--------+--------+--------+--------------------+--------------------+--------------------
        |  81.50 |        |  81.58 |  0.930196213911424 |   5.61421408650552 |  0.461071168376043
  81.58 |  84.90 | 0.0407 |     84 |  0.560745221248429 |   37.8015394128117 |   0.23571694348864
     84 |  85.84 | 0.0219 |  85.12 |  0.416036492272315 |    50.428211921701 |  0.160707728559778
  85.12 |  86.06 | 0.0110 |  85.37 |   0.31332110091768 |   59.3087633551948 | 0.0916611831863153
  85.37 |  86.40 | 0.0121 |  86.19 |  0.223065327998904 |   67.1752208792373 | 0.0892441401437571
  86.19 |  85.51 | 0.0078 |  84.69 |  0.509756185614852 |    42.343562005006 |  0.338718526733452
  84.69 |  85.97 | 0.0151 |  85.47 |   0.60492702580558 |   34.2628366224153 |  0.408610576552954
  85.47 |  86.86 | 0.0163 |  86.64 |  0.641095276611868 |   31.3167837973076 |  0.422562923551744
  86.64 |  87.06 | 0.0049 |  86.89 |    0.6396258966744 |   31.4865883689919 |  0.442022365274712
  86.89 |  87.31 | 0.0048 |  86.74 |  0.314176461801723 |   60.0558838893752 |  0.345972028763493
  86.74 |  87.07 | 0.0038 |  86.85 |  0.556953610508981 |   38.6967242480077 |  0.709038352162874
  86.85 |  88.54 | 0.0194 |  89.05 |   0.71646536311035 |   24.7355217235248 |  0.806474667992637
  89.05 |  86.82 | 0.0250 |   87.1 |  0.828893551212771 |   14.6233989516049 |  0.843205122436764
   87.1 |  85.63 | 0.0169 |     86 |  0.876681721784925 |   10.2362647858593 |  0.868757340937373
     86 |  86.79 | 0.0092 |  87.26 |  0.907607969680494 |   7.59324024469571 |  0.872354617595825
  87.26 |  85.35 | 0.0219 |     86 |  0.963046324742614 |   2.52920153372814 |  0.854052902081886
     86 |  85.04 | 0.0111 |  85.68 |  0.984857752501153 |  0.658717160003272 |  0.818153667442131
  85.68 |  86.65 | 0.0113 |     87 |  0.968673034113725 |    2.3751701572406 |  0.782575372168168
     87 |  90.00 | 0.0345 |     90 |  0.910991684444145 |   8.01456054235934 |  0.742602997511869
     90 |  90.69 | 0.0076 |  90.61 |  0.897821640533335 |   9.33440206466203 |  0.713122343798605
  90.61 |  90.13 | 0.0053 |  90.13 |  0.909958318693295 |   8.11836657246885 |  0.676080976394243
  90.13 |  88.54 | 0.0177 |  89.08 |  0.959429536023691 |   3.07240205281187 |  0.608007093767562
  89.08 |  89.76 | 0.0076 |  89.81 |   0.91029848144619 |   8.00500306348446 |  0.404654669040077
  89.81 |  99.27 | 0.1054 |  98.45 |  0.657207082561843 |   34.5727385355619 |  0.393214748683796
  98.45 | 102.53 | 0.0415 | 102.94 |  0.704409588700779 |   30.0196224514047 |  0.502462865561183
 102.94 | 103.45 | 0.0049 | 103.99 |  0.703297557503838 |   30.3100075437914 |   0.46367875870034
 103.99 | 102.47 | 0.0147 | 103.11 |   0.62837962126522 |   37.6738507164757 |  0.403487822887036
 103.11 | 103.10 | 0.0001 |    104 |  0.643348564991283 |   36.1926878205066 |  0.412471976813411
    104 | 102.47 | 0.0147 | 103.29 |  0.609715827989882 |   39.4938840550046 |  0.434204693264911
 103.29 | 100.19 | 0.0300 | 100.04 |  0.714689142171646 |   28.6965783703781 |  0.579882468389968
 100.04 |  96.87 | 0.0317 |  96.89 |  0.891706172449747 |   10.4761802869589 |  0.673676693300631
  96.89 |  95.65 | 0.0128 |  96.31 |  0.996480964507578 | -0.324693104249417 |  0.614510491219348
  96.31 |  99.98 | 0.0381 |  99.58 |  0.805484441868333 |   19.7717089277751 |  0.512838450280928
  99.58 | 101.72 | 0.0215 | 100.77 |  0.580782945386486 |   43.1942330487114 |  0.411626746536197
 100.77 | 102.31 | 0.0153 | 101.62 |   0.60960923807431 |   40.3630398853694 |  0.534574960836081
 101.62 | 103.28 | 0.0163 | 103.02 |  0.715901485259652 |   29.5241464649391 |  0.578753862361246
 103.02 | 104.93 | 0.0185 | 105.03 |  0.755513345311285 |   25.5752266330287 |  0.637919333414959
 105.03 | 102.17 | 0.0272 | 102.13 |   0.85397742981656 |   14.9562551932185 |  0.706505426646503
 102.13 | 103.39 | 0.0123 | 103.32 |  0.816331012523094 |   19.0456461040167 |  0.678069331200632
 103.32 |  97.81 | 0.0533 |    101 |   1.59944623063686 |  -63.7322919498157 |  0.754678672545085
    101 | 103.53 | 0.0251 |  103.6 |  0.863779780883968 |   14.0441886225418 |  0.661109144730258
  103.6 | 103.94 | 0.0033 | 103.94 |  0.838387460079692 |   16.7970520107185 |  0.577059699997509
 103.94 | 105.92 | 0.0191 | 105.75 | -0.133229605047718 |   120.010159783732 |  0.804055392782976
 105.75 | 105.93 | 0.0017 | 105.98 | -0.145112549418295 |   121.311379359051 |  0.969009451994014
 105.98 | 105.95 | 0.0003 | 105.95 |                  0 |   105.949999994131 |                  1
 105.95 | 105.89 | 0.0005 | 105.95 |  -0.13230769230761 |   119.911107692316 |   0.99999999999768
 105.95 |  99.90 | 0.0571 | 105.52 |   1.72872340425854 |  -82.5132446808904 |   1.00000000000077
 105.52 | 111.29 | 0.0547 | 108.77 |  -1.34285714286032 |   257.357142857695 |   1.00000000000725
 108.77 | 119.17 | 0.0956 | 110.65 |   6.08695652160159 |  -554.349999972815 |   1.00000000000081
 110.65 | 109.27 | 0.0125 | 109.25 | 0.0707692307696992 |    101.53473846147 |  0.999999999967684
 109.25 | 118.89 | 0.0883 | 109.02 |   3.03738317759831 |  -212.244018694157 |   1.00000000001163
(51 rows)

贵州茅台的结果
预测偏差还比较理想(可能有些股票受到的外界因素影响较大, 有些比较小, 因为本文没有引入多元分析, 就这样吧)
postgres=# select (check_predict(i)).* from generate_series(0,50) t(i);
   rv   |   pv   |  dev   |   zv   |      v_slope      |      v_inter      |       v_r2        
--------+--------+--------+--------+-------------------+-------------------+-------------------
        | 155.68 |        | 154.75 | 0.749327368763041 |  39.7193487454018 | 0.443299946747894
 154.75 | 156.33 | 0.0102 | 155.00 | 0.658983381690956 |  54.1888692212598 |  0.31605703462515
 155.00 | 158.61 | 0.0233 | 157.81 | 0.505691375378367 |  78.8096738403756 | 0.240429553874766
 157.81 | 159.35 | 0.0097 | 159.02 | 0.471362121189687 |  84.3914502631931 |  0.23632158869318
 159.02 | 159.89 | 0.0055 | 159.87 | 0.502631474677655 |  79.5350129389031 | 0.262084379639135
 159.87 | 160.46 | 0.0037 | 161.00 | 0.486478989379233 |  82.1377272523488 |  0.29236983925612
 161.00 | 161.73 | 0.0045 | 162.74 | 0.592859008065614 |  65.2441140525351 |  0.38051931752417
 162.74 | 161.22 | 0.0094 | 162.33 | 0.522125410976863 |  76.4612098979163 | 0.450724600316921
 162.33 | 161.07 | 0.0078 | 161.50 | 0.670999115633002 |  52.7013374696206 | 0.535249445391989
 161.50 | 160.77 | 0.0045 | 160.92 |  0.72782591656929 |  43.6501486130006 | 0.574758659704234
 160.92 | 156.66 | 0.0264 | 156.49 | 0.885275616598876 |  18.1277330183775 | 0.655113491671201
 156.49 | 157.82 | 0.0085 | 156.70 | 0.757494701869893 |    39.12388483696 | 0.495319263616962
 156.70 | 161.18 | 0.0286 | 160.71 | 0.725555251667536 |  44.5773888438119 | 0.584398418586498
 160.71 | 160.13 | 0.0036 | 159.25 | 0.718340613774721 |  45.7320036637828 | 0.626975960572309
 159.25 | 158.92 | 0.0021 | 158.02 | 0.776715149169011 |  36.1819821709587 | 0.676670415905896
 158.02 | 159.06 | 0.0066 | 158.47 | 0.812642712296025 |  30.2825991865648 | 0.679920408166994
 158.47 | 160.77 | 0.0145 | 160.50 | 0.824536957368669 |  28.4277502764865 | 0.708045226118134
 160.50 | 161.95 | 0.0090 | 161.90 | 0.843561194042496 |  25.3766280000652 | 0.722573245190375
 161.90 | 161.51 | 0.0024 | 161.49 | 0.847987413256958 |  24.5663395825434 | 0.721633674185219
 161.49 | 163.60 | 0.0131 | 163.87 | 0.870581601947346 |  20.9406294921026 | 0.725206713695765
 163.87 | 163.51 | 0.0022 | 163.70 | 0.833749346623708 |  27.0240967784583 | 0.670383837164832
 163.70 | 168.62 | 0.0301 | 167.65 |  1.05254359115864 | -7.83507005049674 | 0.735574587910647
 167.65 | 165.25 | 0.0143 | 165.70 | 0.883481284376093 |  18.8595907684336 | 0.566222610315986
 165.70 | 163.61 | 0.0126 | 164.70 | 0.760665237060595 |  38.3314388491422 | 0.437037290387292
 164.70 | 161.46 | 0.0197 | 162.58 |  0.63926420779486 |  57.5312362089702 | 0.386820980329109
 162.58 | 158.80 | 0.0232 | 158.81 | 0.717636038072266 |  44.8353807921515 | 0.569066830110592
 158.81 | 158.34 | 0.0030 | 158.20 | 0.761022139545313 |  37.9453143278904 | 0.597076723252649
 158.20 | 156.01 | 0.0138 | 156.00 | 0.890859569629593 |  17.0349264413836 | 0.660262576219616
 156.00 | 155.91 | 0.0006 | 156.00 | 0.928603251444626 |   11.051262047026 | 0.569697453056979
 156.00 | 158.28 | 0.0146 | 157.72 | 0.723658951735034 |  44.1435343246399 |  0.44078135697188
 157.72 | 159.30 | 0.0100 | 158.50 | 0.593435970103012 |  65.2440679649604 | 0.394699579585899
 158.50 | 159.91 | 0.0089 | 159.27 | 0.632807705774723 |  59.1184436985211 | 0.387382904311161
 159.27 | 160.63 | 0.0085 | 160.00 | 0.604419927649386 |  63.9233718732132 | 0.330175855885006
 160.00 | 162.13 | 0.0133 | 162.00 | 0.479607769753778 |  84.4368575468047 | 0.257868311166715
 162.00 | 159.99 | 0.0124 | 158.74 | 0.624745284091551 |  60.8132213491609 | 0.426844197393141
 158.74 | 160.57 | 0.0115 | 159.75 |   0.6106793906001 |  63.0161876923878 | 0.337283942825567
 159.75 | 161.95 | 0.0138 | 162.00 | 0.453875422780405 |  88.4214116897916 | 0.235385451808691
 162.00 | 162.13 | 0.0008 | 162.20 | 0.514218487026421 |  78.7230165782795 | 0.291003288858034
 162.20 | 162.09 | 0.0007 | 162.02 | 0.556324729871488 |  71.9532675373276 | 0.326799171637252
 162.02 | 162.16 | 0.0009 | 162.04 | 0.579222185293716 |  68.3028288619664 | 0.344557168377077
 162.04 | 162.16 | 0.0007 | 161.81 | 0.556599549002475 |  72.0969606318282 | 0.307924224254188
 161.81 | 162.66 | 0.0052 | 162.48 | 0.500693143269678 |   81.305630489949 | 0.298678253677398
 162.48 | 162.22 | 0.0016 | 161.96 | 0.568957052943135 |  70.0759551450734 | 0.346462148633283
 161.96 | 162.89 | 0.0057 | 163.10 |  0.39281014679101 |  98.8215502236369 | 0.340803249529129
 163.10 | 164.15 | 0.0065 | 164.80 | 0.640630057919025 |  58.5763291969098 | 0.536313525971144
 164.80 | 163.63 | 0.0071 | 164.00 |   0.7153108267714 |  46.3161409479079 | 0.611327694763799
 164.00 | 162.73 | 0.0078 | 163.00 | 0.671618352789207 |  53.2545511273858 | 0.679718050633678
 163.00 | 160.66 | 0.0144 | 160.17 | 0.646714009825995 |  57.0713176290233 | 0.804063835532055
 160.17 | 159.11 | 0.0066 | 158.29 | 0.769358075679891 |  37.3298385738639 | 0.848976826898375
 158.29 | 161.29 | 0.0190 | 160.74 | 0.845694258048787 |  25.3560723887127 | 0.887140705169265
 160.74 | 165.13 | 0.0273 | 164.30 | 0.928055617122675 |  12.6470087942632 | 0.910309053795291
(51 rows)
相关实践学习
使用PolarDB和ECS搭建门户网站
本场景主要介绍基于PolarDB和ECS实现搭建门户网站。
阿里云数据库产品家族及特性
阿里云智能数据库产品团队一直致力于不断健全产品体系,提升产品性能,打磨产品功能,从而帮助客户实现更加极致的弹性能力、具备更强的扩展能力、并利用云设施进一步降低企业成本。以云原生+分布式为核心技术抓手,打造以自研的在线事务型(OLTP)数据库Polar DB和在线分析型(OLAP)数据库Analytic DB为代表的新一代企业级云原生数据库产品体系, 结合NoSQL数据库、数据库生态工具、云原生智能化数据库管控平台,为阿里巴巴经济体以及各个行业的企业客户和开发者提供从公共云到混合云再到私有云的完整解决方案,提供基于云基础设施进行数据从处理、到存储、再到计算与分析的一体化解决方案。本节课带你了解阿里云数据库产品家族及特性。
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