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101Alpha_code_1.py
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import numpy as np
import pandas as pd
from numpy import abs
from numpy import log
from numpy import sign
from scipy.stats import rankdata
# region Auxiliary functions
def ts_sum(df, window=10):
"""
Wrapper function to estimate rolling sum.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series min over the past 'window' days.
"""
return df.rolling(window).sum()
def sma(df, window=10):
"""
Wrapper function to estimate SMA.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series min over the past 'window' days.
"""
return df.rolling(window).mean()
def stddev(df, window=10):
"""
Wrapper function to estimate rolling standard deviation.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series min over the past 'window' days.
"""
return df.rolling(window).std()
def correlation(x, y, window=10):
"""
Wrapper function to estimate rolling corelations.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series min over the past 'window' days.
"""
return x.rolling(window).corr(y)
def covariance(x, y, window=10):
"""
Wrapper function to estimate rolling covariance.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series min over the past 'window' days.
"""
return x.rolling(window).cov(y)
def rolling_rank(na):
"""
Auxiliary function to be used in pd.rolling_apply
:param na: numpy array.
:return: The rank of the last value in the array.
"""
return rankdata(na)[-1]
def ts_rank(df, window=10):
"""
Wrapper function to estimate rolling rank.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series rank over the past window days.
"""
return df.rolling(window).apply(rolling_rank)
def rolling_prod(na):
"""
Auxiliary function to be used in pd.rolling_apply
:param na: numpy array.
:return: The product of the values in the array.
"""
return np.prod(na)
def product(df, window=10):
"""
Wrapper function to estimate rolling product.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series product over the past 'window' days.
"""
return df.rolling(window).apply(rolling_prod)
def ts_min(df, window=10):
"""
Wrapper function to estimate rolling min.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series min over the past 'window' days.
"""
return df.rolling(window).min()
def ts_max(df, window=10):
"""
Wrapper function to estimate rolling min.
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: a pandas DataFrame with the time-series max over the past 'window' days.
"""
return df.rolling(window).max()
def delta(df, period=1):
"""
Wrapper function to estimate difference.
:param df: a pandas DataFrame.
:param period: the difference grade.
:return: a pandas DataFrame with today’s value minus the value 'period' days ago.
"""
return df.diff(period)
def delay(df, period=1):
"""
Wrapper function to estimate lag.
:param df: a pandas DataFrame.
:param period: the lag grade.
:return: a pandas DataFrame with lagged time series
"""
return df.shift(period)
def rank(df):
"""
Cross sectional rank
:param df: a pandas DataFrame.
:return: a pandas DataFrame with rank along columns.
"""
#return df.rank(axis=1, pct=True)
return df.rank(pct=True)
def scale(df, k=1):
"""
Scaling time serie.
:param df: a pandas DataFrame.
:param k: scaling factor.
:return: a pandas DataFrame rescaled df such that sum(abs(df)) = k
"""
return df.mul(k).div(np.abs(df).sum())
def ts_argmax(df, window=10):
"""
Wrapper function to estimate which day ts_max(df, window) occurred on
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: well.. that :)
"""
return df.rolling(window).apply(np.argmax) + 1
def ts_argmin(df, window=10):
"""
Wrapper function to estimate which day ts_min(df, window) occurred on
:param df: a pandas DataFrame.
:param window: the rolling window.
:return: well.. that :)
"""
return df.rolling(window).apply(np.argmin) + 1
def decay_linear(df, period=10):
"""
Linear weighted moving average implementation.
:param df: a pandas DataFrame.
:param period: the LWMA period
:return: a pandas DataFrame with the LWMA.
"""
# Clean data
if df.isnull().values.any():
df.fillna(method='ffill', inplace=True)
df.fillna(method='bfill', inplace=True)
df.fillna(value=0, inplace=True)
na_lwma = np.zeros_like(df)
na_lwma[:period, :] = df.iloc[:period, :]
na_series = df.as_matrix()
divisor = period * (period + 1) / 2
y = (np.arange(period) + 1) * 1.0 / divisor
# Estimate the actual lwma with the actual close.
# The backtest engine should assure to be snooping bias free.
for row in range(period - 1, df.shape[0]):
x = na_series[row - period + 1: row + 1, :]
na_lwma[row, :] = (np.dot(x.T, y))
return pd.DataFrame(na_lwma, index=df.index, columns=['CLOSE'])
# endregion
def get_alpha(df):
stock=Alphas(df)
df['alpha001']=stock.alpha001()
df['alpha002']=stock.alpha002()
df['alpha003']=stock.alpha003()
df['alpha004']=stock.alpha004()
df['alpha005']=stock.alpha005()
df['alpha006']=stock.alpha006()
df['alpha007']=stock.alpha007()
df['alpha008']=stock.alpha008()
df['alpha009']=stock.alpha009()
df['alpha010']=stock.alpha010()
df['alpha011']=stock.alpha011()
df['alpha012']=stock.alpha012()
df['alpha013']=stock.alpha013()
df['alpha014']=stock.alpha014()
df['alpha015']=stock.alpha015()
df['alpha016']=stock.alpha016()
df['alpha017']=stock.alpha017()
df['alpha018']=stock.alpha018()
df['alpha019']=stock.alpha019()
df['alpha020']=stock.alpha020()
df['alpha021']=stock.alpha021()
df['alpha022']=stock.alpha022()
df['alpha023']=stock.alpha023()
df['alpha024']=stock.alpha024()
df['alpha025']=stock.alpha025()
df['alpha026']=stock.alpha026()
df['alpha027']=stock.alpha027()
df['alpha028']=stock.alpha028()
df['alpha029']=stock.alpha029()
df['alpha030']=stock.alpha030()
df['alpha031']=stock.alpha031()
df['alpha032']=stock.alpha032()
df['alpha033']=stock.alpha033()
df['alpha034']=stock.alpha034()
df['alpha035']=stock.alpha035()
df['alpha036']=stock.alpha036()
df['alpha037']=stock.alpha037()
df['alpha038']=stock.alpha038()
df['alpha039']=stock.alpha039()
df['alpha040']=stock.alpha040()
df['alpha041']=stock.alpha041()
df['alpha042']=stock.alpha042()
df['alpha043']=stock.alpha043()
df['alpha044']=stock.alpha044()
df['alpha045']=stock.alpha045()
df['alpha046']=stock.alpha046()
df['alpha047']=stock.alpha047()
df['alpha049']=stock.alpha049()
df['alpha050']=stock.alpha050()
df['alpha051']=stock.alpha051()
df['alpha052']=stock.alpha052()
df['alpha053']=stock.alpha053()
df['alpha054']=stock.alpha054()
df['alpha055']=stock.alpha055()
df['alpha057']=stock.alpha057()
df['alpha060']=stock.alpha060()
df['alpha061']=stock.alpha061()
df['alpha062']=stock.alpha062()
df['alpha064']=stock.alpha064()
df['alpha065']=stock.alpha065()
df['alpha066']=stock.alpha066()
df['alpha068']=stock.alpha068()
df['alpha071']=stock.alpha071()
df['alpha072']=stock.alpha072()
df['alpha073']=stock.alpha073()
df['alpha074']=stock.alpha074()
df['alpha075']=stock.alpha075()
df['alpha077']=stock.alpha077()
df['alpha078']=stock.alpha078()
df['alpha081']=stock.alpha081()
df['alpha083']=stock.alpha083()
df['alpha084']=stock.alpha084()
df['alpha085']=stock.alpha085()
df['alpha086']=stock.alpha086()
df['alpha088']=stock.alpha088()
df['alpha092']=stock.alpha092()
df['alpha094']=stock.alpha094()
df['alpha095']=stock.alpha095()
df['alpha096']=stock.alpha096()
df['alpha098']=stock.alpha098()
df['alpha099']=stock.alpha099()
df['alpha101']=stock.alpha101()
return df
class Alphas(object):
def __init__(self, df_data):
self.open = df_data['S_DQ_OPEN']
self.high = df_data['S_DQ_HIGH']
self.low = df_data['S_DQ_LOW']
self.close = df_data['S_DQ_CLOSE']
self.volume = df_data['S_DQ_VOLUME']*100
self.returns = df_data['S_DQ_PCTCHANGE']
self.vwap = (df_data['S_DQ_AMOUNT']*1000)/(df_data['S_DQ_VOLUME']*100+1)
# Alpha#1 (rank(Ts_ArgMax(SignedPower(((returns < 0) ? stddev(returns, 20) : close), 2.), 5)) -0.5)
def alpha001(self):
inner = self.close
inner[self.returns < 0] = stddev(self.returns, 20)
return rank(ts_argmax(inner ** 2, 5))
# Alpha#2 (-1 * correlation(rank(delta(log(volume), 2)), rank(((close - open) / open)), 6))
def alpha002(self):
df = -1 * correlation(rank(delta(log(self.volume), 2)), rank((self.close - self.open) / self.open), 6)
return df.replace([-np.inf, np.inf], 0).fillna(value=0)
# Alpha#3 (-1 * correlation(rank(open), rank(volume), 10))
def alpha003(self):
df = -1 * correlation(rank(self.open), rank(self.volume), 10)
return df.replace([-np.inf, np.inf], 0).fillna(value=0)
# Alpha#4 (-1 * Ts_Rank(rank(low), 9))
def alpha004(self):
return -1 * ts_rank(rank(self.low), 9)
# Alpha#5 (rank((open - (sum(vwap, 10) / 10))) * (-1 * abs(rank((close - vwap)))))
def alpha005(self):
return (rank((self.open - (sum(self.vwap, 10) / 10))) * (-1 * abs(rank((self.close - self.vwap)))))
# Alpha#6 (-1 * correlation(open, volume, 10))
def alpha006(self):
df = -1 * correlation(self.open, self.volume, 10)
return df.replace([-np.inf, np.inf], 0).fillna(value=0)
# Alpha#7 ((adv20 < volume) ? ((-1 * ts_rank(abs(delta(close, 7)), 60)) * sign(delta(close, 7))) : (-1* 1))
def alpha007(self):
adv20 = sma(self.volume, 20)
alpha = -1 * ts_rank(abs(delta(self.close, 7)), 60) * sign(delta(self.close, 7))
alpha[adv20 >= self.volume] = -1
return alpha
# Alpha#8 (-1 * rank(((sum(open, 5) * sum(returns, 5)) - delay((sum(open, 5) * sum(returns, 5)),10))))
def alpha008(self):
return -1 * (rank(((ts_sum(self.open, 5) * ts_sum(self.returns, 5)) -
delay((ts_sum(self.open, 5) * ts_sum(self.returns, 5)), 10))))
# Alpha#9 ((0 < ts_min(delta(close, 1), 5)) ? delta(close, 1) : ((ts_max(delta(close, 1), 5) < 0) ?delta(close, 1) : (-1 * delta(close, 1))))
def alpha009(self):
delta_close = delta(self.close, 1)
cond_1 = ts_min(delta_close, 5) > 0
cond_2 = ts_max(delta_close, 5) < 0
alpha = -1 * delta_close
alpha[cond_1 | cond_2] = delta_close
return alpha
# Alpha#10 rank(((0 < ts_min(delta(close, 1), 4)) ? delta(close, 1) : ((ts_max(delta(close, 1), 4) < 0)? delta(close, 1) : (-1 * delta(close, 1)))))
def alpha010(self):
delta_close = delta(self.close, 1)
cond_1 = ts_min(delta_close, 4) > 0
cond_2 = ts_max(delta_close, 4) < 0
alpha = -1 * delta_close
alpha[cond_1 | cond_2] = delta_close
return alpha
# Alpha#11 ((rank(ts_max((vwap - close), 3)) + rank(ts_min((vwap - close), 3))) *rank(delta(volume, 3)))
def alpha011(self):
return ((rank(ts_max((self.vwap - self.close), 3)) + rank(ts_min((self.vwap - self.close), 3))) *rank(delta(self.volume, 3)))
# Alpha#12 (sign(delta(volume, 1)) * (-1 * delta(close, 1)))
def alpha012(self):
return sign(delta(self.volume, 1)) * (-1 * delta(self.close, 1))
# Alpha#13 (-1 * rank(covariance(rank(close), rank(volume), 5)))
def alpha013(self):
return -1 * rank(covariance(rank(self.close), rank(self.volume), 5))
# Alpha#14 ((-1 * rank(delta(returns, 3))) * correlation(open, volume, 10))
def alpha014(self):
df = correlation(self.open, self.volume, 10)
df = df.replace([-np.inf, np.inf], 0).fillna(value=0)
return -1 * rank(delta(self.returns, 3)) * df
# Alpha#15 (-1 * sum(rank(correlation(rank(high), rank(volume), 3)), 3))
def alpha015(self):
df = correlation(rank(self.high), rank(self.volume), 3)
df = df.replace([-np.inf, np.inf], 0).fillna(value=0)
return -1 * ts_sum(rank(df), 3)
# Alpha#16 (-1 * rank(covariance(rank(high), rank(volume), 5)))
def alpha016(self):
return -1 * rank(covariance(rank(self.high), rank(self.volume), 5))
# Alpha#17 (((-1 * rank(ts_rank(close, 10))) * rank(delta(delta(close, 1), 1))) *rank(ts_rank((volume / adv20), 5)))
def alpha017(self):
adv20 = sma(self.volume, 20)
return -1 * (rank(ts_rank(self.close, 10)) *
rank(delta(delta(self.close, 1), 1)) *
rank(ts_rank((self.volume / adv20), 5)))
# Alpha#18 (-1 * rank(((stddev(abs((close - open)), 5) + (close - open)) + correlation(close, open,10))))
def alpha018(self):
df = correlation(self.close, self.open, 10)
df = df.replace([-np.inf, np.inf], 0).fillna(value=0)
return -1 * (rank((stddev(abs((self.close - self.open)), 5) + (self.close - self.open)) +
df))
# Alpha#19 ((-1 * sign(((close - delay(close, 7)) + delta(close, 7)))) * (1 + rank((1 + sum(returns,250)))))
def alpha019(self):
return ((-1 * sign((self.close - delay(self.close, 7)) + delta(self.close, 7))) *
(1 + rank(1 + ts_sum(self.returns, 250))))
# Alpha#20 (((-1 * rank((open - delay(high, 1)))) * rank((open - delay(close, 1)))) * rank((open -delay(low, 1))))
def alpha020(self):
return -1 * (rank(self.open - delay(self.high, 1)) *
rank(self.open - delay(self.close, 1)) *
rank(self.open - delay(self.low, 1)))
# Alpha#21 ((((sum(close, 8) / 8) + stddev(close, 8)) < (sum(close, 2) / 2)) ? (-1 * 1) : (((sum(close,2) / 2) < ((sum(close, 8) / 8) - stddev(close, 8))) ? 1 : (((1 < (volume / adv20)) || ((volume /adv20) == 1)) ? 1 : (-1 * 1))))
def alpha021(self):
cond_1 = sma(self.close, 8) + stddev(self.close, 8) < sma(self.close, 2)
cond_2 = sma(self.volume, 20) / self.volume < 1
alpha = pd.DataFrame(np.ones_like(self.close), index=self.close.index
)
# alpha = pd.DataFrame(np.ones_like(self.close), index=self.close.index,
# columns=self.close.columns)
alpha[cond_1 | cond_2] = -1
return alpha
# Alpha#22 (-1 * (delta(correlation(high, volume, 5), 5) * rank(stddev(close, 20))))
def alpha022(self):
df = correlation(self.high, self.volume, 5)
df = df.replace([-np.inf, np.inf], 0).fillna(value=0)
return -1 * delta(df, 5) * rank(stddev(self.close, 20))
# Alpha#23 (((sum(high, 20) / 20) < high) ? (-1 * delta(high, 2)) : 0)
def alpha023(self):
cond = sma(self.high, 20) < self.high
alpha = pd.DataFrame(np.zeros_like(self.close),index=self.close.index,columns=['close'])
alpha.at[cond,'close'] = -1 * delta(self.high, 2).fillna(value=0)
return alpha
# Alpha#24 ((((delta((sum(close, 100) / 100), 100) / delay(close, 100)) < 0.05) ||((delta((sum(close, 100) / 100), 100) / delay(close, 100)) == 0.05)) ? (-1 * (close - ts_min(close,100))) : (-1 * delta(close, 3)))
def alpha024(self):
cond = delta(sma(self.close, 100), 100) / delay(self.close, 100) <= 0.05
alpha = -1 * delta(self.close, 3)
alpha[cond] = -1 * (self.close - ts_min(self.close, 100))
return alpha
# Alpha#25 rank(((((-1 * returns) * adv20) * vwap) * (high - close)))
def alpha025(self):
adv20 = sma(self.volume, 20)
return rank(((((-1 * self.returns) * adv20) * self.vwap) * (self.high - self.close)))
# Alpha#26 (-1 * ts_max(correlation(ts_rank(volume, 5), ts_rank(high, 5), 5), 3))
def alpha026(self):
df = correlation(ts_rank(self.volume, 5), ts_rank(self.high, 5), 5)
df = df.replace([-np.inf, np.inf], 0).fillna(value=0)
return -1 * ts_max(df, 3)
# Alpha#27 ((0.5 < rank((sum(correlation(rank(volume), rank(vwap), 6), 2) / 2.0))) ? (-1 * 1) : 1)
###
## Some Error, still fixing!!
def alpha027(self):
alpha = rank((sma(correlation(rank(self.volume), rank(self.vwap), 6), 2) / 2.0))
alpha[alpha > 0.5] = -1
alpha[alpha <= 0.5]=1
return alpha
# Alpha#28 scale(((correlation(adv20, low, 5) + ((high + low) / 2)) - close))
def alpha028(self):
adv20 = sma(self.volume, 20)
df = correlation(adv20, self.low, 5)
df = df.replace([-np.inf, np.inf], 0).fillna(value=0)
return scale(((df + ((self.high + self.low) / 2)) - self.close))
# Alpha#29 (min(product(rank(rank(scale(log(sum(ts_min(rank(rank((-1 * rank(delta((close - 1),5))))), 2), 1))))), 1), 5) + ts_rank(delay((-1 * returns), 6), 5))
def alpha029(self):
return (ts_min(rank(rank(scale(log(ts_sum(rank(rank(-1 * rank(delta((self.close - 1), 5)))), 2))))), 5) +
ts_rank(delay((-1 * self.returns), 6), 5))
# Alpha#30 (((1.0 - rank(((sign((close - delay(close, 1))) + sign((delay(close, 1) - delay(close, 2)))) +sign((delay(close, 2) - delay(close, 3)))))) * sum(volume, 5)) / sum(volume, 20))
def alpha030(self):
delta_close = delta(self.close, 1)
inner = sign(delta_close) + sign(delay(delta_close, 1)) + sign(delay(delta_close, 2))
return ((1.0 - rank(inner)) * ts_sum(self.volume, 5)) / ts_sum(self.volume, 20)
# Alpha#31 ((rank(rank(rank(decay_linear((-1 * rank(rank(delta(close, 10)))), 10)))) + rank((-1 *delta(close, 3)))) + sign(scale(correlation(adv20, low, 12))))
def alpha031(self):
adv20 = sma(self.volume, 20)
df = correlation(adv20, self.low, 12).replace([-np.inf, np.inf], 0).fillna(value=0)
p1=rank(rank(rank(decay_linear((-1 * rank(rank(delta(self.close, 10)))).to_frame(), 10))))
p2=rank((-1 * delta(self.close, 3)))
p3=sign(scale(df))
return p1.CLOSE+p2+p3
# Alpha#32 (scale(((sum(close, 7) / 7) - close)) + (20 * scale(correlation(vwap, delay(close, 5),230))))
def alpha032(self):
return scale(((sma(self.close, 7) / 7) - self.close)) + (20 * scale(correlation(self.vwap, delay(self.close, 5),230)))
# Alpha#33 rank((-1 * ((1 - (open / close))^1)))
def alpha033(self):
return rank(-1 + (self.open / self.close))
# Alpha#34 rank(((1 - rank((stddev(returns, 2) / stddev(returns, 5)))) + (1 - rank(delta(close, 1)))))
def alpha034(self):
inner = stddev(self.returns, 2) / stddev(self.returns, 5)
inner = inner.replace([-np.inf, np.inf], 1).fillna(value=1)
return rank(2 - rank(inner) - rank(delta(self.close, 1)))
# Alpha#35 ((Ts_Rank(volume, 32) * (1 - Ts_Rank(((close + high) - low), 16))) * (1 -Ts_Rank(returns, 32)))
def alpha035(self):
return ((ts_rank(self.volume, 32) *
(1 - ts_rank(self.close + self.high - self.low, 16))) *
(1 - ts_rank(self.returns, 32)))
# Alpha#36 (((((2.21 * rank(correlation((close - open), delay(volume, 1), 15))) + (0.7 * rank((open- close)))) + (0.73 * rank(Ts_Rank(delay((-1 * returns), 6), 5)))) + rank(abs(correlation(vwap,adv20, 6)))) + (0.6 * rank((((sum(close, 200) / 200) - open) * (close - open)))))
def alpha036(self):
adv20 = sma(self.volume, 20)
return (((((2.21 * rank(correlation((self.close - self.open), delay(self.volume, 1), 15))) + (0.7 * rank((self.open- self.close)))) + (0.73 * rank(ts_rank(delay((-1 * self.returns), 6), 5)))) + rank(abs(correlation(self.vwap,adv20, 6)))) + (0.6 * rank((((sma(self.close, 200) / 200) - self.open) * (self.close - self.open)))))
# Alpha#37 (rank(correlation(delay((open - close), 1), close, 200)) + rank((open - close)))
def alpha037(self):
return rank(correlation(delay(self.open - self.close, 1), self.close, 200)) + rank(self.open - self.close)
# Alpha#38 ((-1 * rank(Ts_Rank(close, 10))) * rank((close / open)))
def alpha038(self):
inner = self.close / self.open
inner = inner.replace([-np.inf, np.inf], 1).fillna(value=1)
return -1 * rank(ts_rank(self.open, 10)) * rank(inner)
# Alpha#39 ((-1 * rank((delta(close, 7) * (1 - rank(decay_linear((volume / adv20), 9)))))) * (1 +rank(sum(returns, 250))))
def alpha039(self):
adv20 = sma(self.volume, 20)
return ((-1 * rank(delta(self.close, 7) * (1 - rank(decay_linear((self.volume / adv20).to_frame(), 9).CLOSE)))) *
(1 + rank(sma(self.returns, 250))))
# Alpha#40 ((-1 * rank(stddev(high, 10))) * correlation(high, volume, 10))
def alpha040(self):
return -1 * rank(stddev(self.high, 10)) * correlation(self.high, self.volume, 10)
# Alpha#41 (((high * low)^0.5) - vwap)
def alpha041(self):
return pow((self.high * self.low),0.5) - self.vwap
# Alpha#42 (rank((vwap - close)) / rank((vwap + close)))
def alpha042(self):
return rank((self.vwap - self.close)) / rank((self.vwap + self.close))
# Alpha#43 (ts_rank((volume / adv20), 20) * ts_rank((-1 * delta(close, 7)), 8))
def alpha043(self):
adv20 = sma(self.volume, 20)
return ts_rank(self.volume / adv20, 20) * ts_rank((-1 * delta(self.close, 7)), 8)
# Alpha#44 (-1 * correlation(high, rank(volume), 5))
def alpha044(self):
df = correlation(self.high, rank(self.volume), 5)
df = df.replace([-np.inf, np.inf], 0).fillna(value=0)
return -1 * df
# Alpha#45 (-1 * ((rank((sum(delay(close, 5), 20) / 20)) * correlation(close, volume, 2)) *rank(correlation(sum(close, 5), sum(close, 20), 2))))
def alpha045(self):
df = correlation(self.close, self.volume, 2)
df = df.replace([-np.inf, np.inf], 0).fillna(value=0)
return -1 * (rank(sma(delay(self.close, 5), 20)) * df *
rank(correlation(ts_sum(self.close, 5), ts_sum(self.close, 20), 2)))
# Alpha#46 ((0.25 < (((delay(close, 20) - delay(close, 10)) / 10) - ((delay(close, 10) - close) / 10))) ?(-1 * 1) : (((((delay(close, 20) - delay(close, 10)) / 10) - ((delay(close, 10) - close) / 10)) < 0) ? 1 :((-1 * 1) * (close - delay(close, 1)))))
def alpha046(self):
inner = ((delay(self.close, 20) - delay(self.close, 10)) / 10) - ((delay(self.close, 10) - self.close) / 10)
alpha = (-1 * delta(self.close))
alpha[inner < 0] = 1
alpha[inner > 0.25] = -1
return alpha
# Alpha#47 ((((rank((1 / close)) * volume) / adv20) * ((high * rank((high - close))) / (sum(high, 5) /5))) - rank((vwap - delay(vwap, 5))))
def alpha047(self):
adv20 = sma(self.volume, 20)
return ((((rank((1 / self.close)) * self.volume) / adv20) * ((self.high * rank((self.high - self.close))) / (sma(self.high, 5) /5))) - rank((self.vwap - delay(self.vwap, 5))))
# Alpha#48 (indneutralize(((correlation(delta(close, 1), delta(delay(close, 1), 1), 250) *delta(close, 1)) / close), IndClass.subindustry) / sum(((delta(close, 1) / delay(close, 1))^2), 250))
# Alpha#49 (((((delay(close, 20) - delay(close, 10)) / 10) - ((delay(close, 10) - close) / 10)) < (-1 *0.1)) ? 1 : ((-1 * 1) * (close - delay(close, 1))))
def alpha049(self):
inner = (((delay(self.close, 20) - delay(self.close, 10)) / 10) - ((delay(self.close, 10) - self.close) / 10))
alpha = (-1 * delta(self.close))
alpha[inner < -0.1] = 1
return alpha
# Alpha#50 (-1 * ts_max(rank(correlation(rank(volume), rank(vwap), 5)), 5))
def alpha050(self):
return (-1 * ts_max(rank(correlation(rank(self.volume), rank(self.vwap), 5)), 5))
# Alpha#51 (((((delay(close, 20) - delay(close, 10)) / 10) - ((delay(close, 10) - close) / 10)) < (-1 *0.05)) ? 1 : ((-1 * 1) * (close - delay(close, 1))))
def alpha051(self):
inner = (((delay(self.close, 20) - delay(self.close, 10)) / 10) - ((delay(self.close, 10) - self.close) / 10))
alpha = (-1 * delta(self.close))
alpha[inner < -0.05] = 1
return alpha
# Alpha#52 ((((-1 * ts_min(low, 5)) + delay(ts_min(low, 5), 5)) * rank(((sum(returns, 240) -sum(returns, 20)) / 220))) * ts_rank(volume, 5))
def alpha052(self):
return (((-1 * delta(ts_min(self.low, 5), 5)) *
rank(((ts_sum(self.returns, 240) - ts_sum(self.returns, 20)) / 220))) * ts_rank(self.volume, 5))
# Alpha#53 (-1 * delta((((close - low) - (high - close)) / (close - low)), 9))
def alpha053(self):
inner = (self.close - self.low).replace(0, 0.0001)
return -1 * delta((((self.close - self.low) - (self.high - self.close)) / inner), 9)
# Alpha#54 ((-1 * ((low - close) * (open^5))) / ((low - high) * (close^5)))
def alpha054(self):
inner = (self.low - self.high).replace(0, -0.0001)
return -1 * (self.low - self.close) * (self.open ** 5) / (inner * (self.close ** 5))
# Alpha#55 (-1 * correlation(rank(((close - ts_min(low, 12)) / (ts_max(high, 12) - ts_min(low,12)))), rank(volume), 6))
def alpha055(self):
divisor = (ts_max(self.high, 12) - ts_min(self.low, 12)).replace(0, 0.0001)
inner = (self.close - ts_min(self.low, 12)) / (divisor)
df = correlation(rank(inner), rank(self.volume), 6)
return -1 * df.replace([-np.inf, np.inf], 0).fillna(value=0)
# Alpha#56 (0 - (1 * (rank((sum(returns, 10) / sum(sum(returns, 2), 3))) * rank((returns * cap)))))
# This Alpha uses the Cap, however I have not acquired the data yet
# def alpha056(self):
# return (0 - (1 * (rank((sma(self.returns, 10) / sma(sma(self.returns, 2), 3))) * rank((self.returns * self.cap)))))
# Alpha#57 (0 - (1 * ((close - vwap) / decay_linear(rank(ts_argmax(close, 30)), 2))))
def alpha057(self):
return (0 - (1 * ((self.close - self.vwap) / decay_linear(rank(ts_argmax(self.close, 30)).to_frame(), 2).CLOSE)))
# Alpha#58 (-1 * Ts_Rank(decay_linear(correlation(IndNeutralize(vwap, IndClass.sector), volume,3.92795), 7.89291), 5.50322))
# Alpha#59 (-1 * Ts_Rank(decay_linear(correlation(IndNeutralize(((vwap * 0.728317) + (vwap *(1 - 0.728317))), IndClass.industry), volume, 4.25197), 16.2289), 8.19648))
# Alpha#60 (0 - (1 * ((2 * scale(rank(((((close - low) - (high - close)) / (high - low)) * volume)))) -scale(rank(ts_argmax(close, 10))))))
def alpha060(self):
divisor = (self.high - self.low).replace(0, 0.0001)
inner = ((self.close - self.low) - (self.high - self.close)) * self.volume / divisor
return - ((2 * scale(rank(inner))) - scale(rank(ts_argmax(self.close, 10))))
# Alpha#61 (rank((vwap - ts_min(vwap, 16.1219))) < rank(correlation(vwap, adv180, 17.9282)))
def alpha061(self):
adv180 = sma(self.volume, 180)
return (rank((self.vwap - ts_min(self.vwap, 16))) < rank(correlation(self.vwap, adv180, 18)))
# Alpha#62 ((rank(correlation(vwap, sum(adv20, 22.4101), 9.91009)) < rank(((rank(open) +rank(open)) < (rank(((high + low) / 2)) + rank(high))))) * -1)
def alpha062(self):
adv20 = sma(self.volume, 20)
return ((rank(correlation(self.vwap, sma(adv20, 22), 10)) < rank(((rank(self.open) +rank(self.open)) < (rank(((self.high + self.low) / 2)) + rank(self.high))))) * -1)
# Alpha#63 ((rank(decay_linear(delta(IndNeutralize(close, IndClass.industry), 2.25164), 8.22237))- rank(decay_linear(correlation(((vwap * 0.318108) + (open * (1 - 0.318108))), sum(adv180,37.2467), 13.557), 12.2883))) * -1)
# Alpha#64 ((rank(correlation(sum(((open * 0.178404) + (low * (1 - 0.178404))), 12.7054),sum(adv120, 12.7054), 16.6208)) < rank(delta(((((high + low) / 2) * 0.178404) + (vwap * (1 -0.178404))), 3.69741))) * -1)
def alpha064(self):
adv120 = sma(self.volume, 120)
return ((rank(correlation(sma(((self.open * 0.178404) + (self.low * (1 - 0.178404))), 13),sma(adv120, 13), 17)) < rank(delta(((((self.high + self.low) / 2) * 0.178404) + (self.vwap * (1 -0.178404))), 3.69741))) * -1)
# Alpha#65 ((rank(correlation(((open * 0.00817205) + (vwap * (1 - 0.00817205))), sum(adv60,8.6911), 6.40374)) < rank((open - ts_min(open, 13.635)))) * -1)
def alpha065(self):
adv60 = sma(self.volume, 60)
return ((rank(correlation(((self.open * 0.00817205) + (self.vwap * (1 - 0.00817205))), sma(adv60,9), 6)) < rank((self.open - ts_min(self.open, 14)))) * -1)
# Alpha#66 ((rank(decay_linear(delta(vwap, 3.51013), 7.23052)) + Ts_Rank(decay_linear(((((low* 0.96633) + (low * (1 - 0.96633))) - vwap) / (open - ((high + low) / 2))), 11.4157), 6.72611)) * -1)
def alpha066(self):
return ((rank(decay_linear(delta(self.vwap, 4).to_frame(), 7).CLOSE) + ts_rank(decay_linear(((((self.low* 0.96633) + (self.low * (1 - 0.96633))) - self.vwap) / (self.open - ((self.high + self.low) / 2))).to_frame(), 11).CLOSE, 7)) * -1)
# Alpha#67 ((rank((high - ts_min(high, 2.14593)))^rank(correlation(IndNeutralize(vwap,IndClass.sector), IndNeutralize(adv20, IndClass.subindustry), 6.02936))) * -1)
# Alpha#68 ((Ts_Rank(correlation(rank(high), rank(adv15), 8.91644), 13.9333) <rank(delta(((close * 0.518371) + (low * (1 - 0.518371))), 1.06157))) * -1)
def alpha068(self):
adv15 = sma(self.volume, 15)
return ((ts_rank(correlation(rank(self.high), rank(adv15), 9), 14) <rank(delta(((self.close * 0.518371) + (self.low * (1 - 0.518371))), 1.06157))) * -1)
# Alpha#69 ((rank(ts_max(delta(IndNeutralize(vwap, IndClass.industry), 2.72412),4.79344))^Ts_Rank(correlation(((close * 0.490655) + (vwap * (1 - 0.490655))), adv20, 4.92416),9.0615)) * -1)
# Alpha#70 ((rank(delta(vwap, 1.29456))^Ts_Rank(correlation(IndNeutralize(close,IndClass.industry), adv50, 17.8256), 17.9171)) * -1)
# Alpha#71 max(Ts_Rank(decay_linear(correlation(Ts_Rank(close, 3.43976), Ts_Rank(adv180,12.0647), 18.0175), 4.20501), 15.6948), Ts_Rank(decay_linear((rank(((low + open) - (vwap +vwap)))^2), 16.4662), 4.4388))
def alpha071(self):
adv180 = sma(self.volume, 180)
p1=ts_rank(decay_linear(correlation(ts_rank(self.close, 3), ts_rank(adv180,12), 18).to_frame(), 4).CLOSE, 16)
p2=ts_rank(decay_linear((rank(((self.low + self.open) - (self.vwap +self.vwap))).pow(2)).to_frame(), 16).CLOSE, 4)
df=pd.DataFrame({'p1':p1,'p2':p2})
df.at[df['p1']>=df['p2'],'max']=df['p1']
df.at[df['p2']>=df['p1'],'max']=df['p2']
return df['max']
#return max(ts_rank(decay_linear(correlation(ts_rank(self.close, 3), ts_rank(adv180,12), 18).to_frame(), 4).CLOSE, 16), ts_rank(decay_linear((rank(((self.low + self.open) - (self.vwap +self.vwap))).pow(2)).to_frame(), 16).CLOSE, 4))
# Alpha#72 (rank(decay_linear(correlation(((high + low) / 2), adv40, 8.93345), 10.1519)) /rank(decay_linear(correlation(Ts_Rank(vwap, 3.72469), Ts_Rank(volume, 18.5188), 6.86671),2.95011)))
def alpha072(self):
adv40 = sma(self.volume, 40)
return (rank(decay_linear(correlation(((self.high + self.low) / 2), adv40, 9).to_frame(), 10).CLOSE) /rank(decay_linear(correlation(ts_rank(self.vwap, 4), ts_rank(self.volume, 19), 7).to_frame(),3).CLOSE))
# Alpha#73 (max(rank(decay_linear(delta(vwap, 4.72775), 2.91864)),Ts_Rank(decay_linear(((delta(((open * 0.147155) + (low * (1 - 0.147155))), 2.03608) / ((open *0.147155) + (low * (1 - 0.147155)))) * -1), 3.33829), 16.7411)) * -1)
def alpha073(self):
p1=rank(decay_linear(delta(self.vwap, 5).to_frame(), 3).CLOSE)
p2=ts_rank(decay_linear(((delta(((self.open * 0.147155) + (self.low * (1 - 0.147155))), 2) / ((self.open *0.147155) + (self.low * (1 - 0.147155)))) * -1).to_frame(), 3).CLOSE, 17)
df=pd.DataFrame({'p1':p1,'p2':p2})
df.at[df['p1']>=df['p2'],'max']=df['p1']
df.at[df['p2']>=df['p1'],'max']=df['p2']
return -1*df['max']
#return (max(rank(decay_linear(delta(self.vwap, 5).to_frame(), 3).CLOSE),ts_rank(decay_linear(((delta(((self.open * 0.147155) + (self.low * (1 - 0.147155))), 2) / ((self.open *0.147155) + (self.low * (1 - 0.147155)))) * -1).to_frame(), 3).CLOSE, 17)) * -1)
# Alpha#74 ((rank(correlation(close, sum(adv30, 37.4843), 15.1365)) <rank(correlation(rank(((high * 0.0261661) + (vwap * (1 - 0.0261661)))), rank(volume), 11.4791)))* -1)
def alpha074(self):
adv30 = sma(self.volume, 30)
return ((rank(correlation(self.close, sma(adv30, 37), 15)) <rank(correlation(rank(((self.high * 0.0261661) + (self.vwap * (1 - 0.0261661)))), rank(self.volume), 11)))* -1)
# Alpha#75 (rank(correlation(vwap, volume, 4.24304)) < rank(correlation(rank(low), rank(adv50),12.4413)))
def alpha075(self):
adv50 = sma(self.volume, 50)
return (rank(correlation(self.vwap, self.volume, 4)) < rank(correlation(rank(self.low), rank(adv50),12)))
# Alpha#76 (max(rank(decay_linear(delta(vwap, 1.24383), 11.8259)),Ts_Rank(decay_linear(Ts_Rank(correlation(IndNeutralize(low, IndClass.sector), adv81,8.14941), 19.569), 17.1543), 19.383)) * -1)
# Alpha#77 min(rank(decay_linear(((((high + low) / 2) + high) - (vwap + high)), 20.0451)),rank(decay_linear(correlation(((high + low) / 2), adv40, 3.1614), 5.64125)))
def alpha077(self):
adv40 = sma(self.volume, 40)
p1=rank(decay_linear(((((self.high + self.low) / 2) + self.high) - (self.vwap + self.high)).to_frame(), 20).CLOSE)
p2=rank(decay_linear(correlation(((self.high + self.low) / 2), adv40, 3).to_frame(), 6).CLOSE)
df=pd.DataFrame({'p1':p1,'p2':p2})
df.at[df['p1']>=df['p2'],'min']=df['p2']
df.at[df['p2']>=df['p1'],'min']=df['p1']
return df['min']
#return min(rank(decay_linear(((((self.high + self.low) / 2) + self.high) - (self.vwap + self.high)).to_frame(), 20).CLOSE),rank(decay_linear(correlation(((self.high + self.low) / 2), adv40, 3).to_frame(), 6).CLOSE))
# Alpha#78 (rank(correlation(sum(((low * 0.352233) + (vwap * (1 - 0.352233))), 19.7428),sum(adv40, 19.7428), 6.83313))^rank(correlation(rank(vwap), rank(volume), 5.77492)))
def alpha078(self):
adv40 = sma(self.volume, 40)
return (rank(correlation(ts_sum(((self.low * 0.352233) + (self.vwap * (1 - 0.352233))), 20),ts_sum(adv40,20), 7)).pow(rank(correlation(rank(self.vwap), rank(self.volume), 6))))
# Alpha#79 (rank(delta(IndNeutralize(((close * 0.60733) + (open * (1 - 0.60733))),IndClass.sector), 1.23438)) < rank(correlation(Ts_Rank(vwap, 3.60973), Ts_Rank(adv150,9.18637), 14.6644)))
# Alpha#80 ((rank(Sign(delta(IndNeutralize(((open * 0.868128) + (high * (1 - 0.868128))),IndClass.industry), 4.04545)))^Ts_Rank(correlation(high, adv10, 5.11456), 5.53756)) * -1)
# Alpha#81 ((rank(Log(product(rank((rank(correlation(vwap, sum(adv10, 49.6054),8.47743))^4)), 14.9655))) < rank(correlation(rank(vwap), rank(volume), 5.07914))) * -1)
def alpha081(self):
adv10 = sma(self.volume, 10)
return ((rank(log(product(rank((rank(correlation(self.vwap, ts_sum(adv10, 50),8)).pow(4))), 15))) < rank(correlation(rank(self.vwap), rank(self.volume), 5))) * -1)
# Alpha#82 (min(rank(decay_linear(delta(open, 1.46063), 14.8717)),Ts_Rank(decay_linear(correlation(IndNeutralize(volume, IndClass.sector), ((open * 0.634196) +(open * (1 - 0.634196))), 17.4842), 6.92131), 13.4283)) * -1)
# Alpha#83 ((rank(delay(((high - low) / (sum(close, 5) / 5)), 2)) * rank(rank(volume))) / (((high -low) / (sum(close, 5) / 5)) / (vwap - close)))
def alpha083(self):
return ((rank(delay(((self.high - self.low) / (ts_sum(self.close, 5) / 5)), 2)) * rank(rank(self.volume))) / (((self.high -self.low) / (ts_sum(self.close, 5) / 5)) / (self.vwap - self.close)))
# Alpha#84 SignedPower(Ts_Rank((vwap - ts_max(vwap, 15.3217)), 20.7127), delta(close,4.96796))
def alpha084(self):
return pow(ts_rank((self.vwap - ts_max(self.vwap, 15)), 21), delta(self.close,5))
# Alpha#85 (rank(correlation(((high * 0.876703) + (close * (1 - 0.876703))), adv30,9.61331))^rank(correlation(Ts_Rank(((high + low) / 2), 3.70596), Ts_Rank(volume, 10.1595),7.11408)))
def alpha085(self):
adv30 = sma(self.volume, 30)
return (rank(correlation(((self.high * 0.876703) + (self.close * (1 - 0.876703))), adv30,10)).pow(rank(correlation(ts_rank(((self.high + self.low) / 2), 4), ts_rank(self.volume, 10),7))))
# Alpha#86 ((Ts_Rank(correlation(close, sum(adv20, 14.7444), 6.00049), 20.4195) < rank(((open+ close) - (vwap + open)))) * -1)
def alpha086(self):
adv20 = sma(self.volume, 20)
return ((ts_rank(correlation(self.close, sma(adv20, 15), 6), 20) < rank(((self.open+ self.close) - (self.vwap +self.open)))) * -1)
# Alpha#87 (max(rank(decay_linear(delta(((close * 0.369701) + (vwap * (1 - 0.369701))),1.91233), 2.65461)), Ts_Rank(decay_linear(abs(correlation(IndNeutralize(adv81,IndClass.industry), close, 13.4132)), 4.89768), 14.4535)) * -1)
# Alpha#88 min(rank(decay_linear(((rank(open) + rank(low)) - (rank(high) + rank(close))),8.06882)), Ts_Rank(decay_linear(correlation(Ts_Rank(close, 8.44728), Ts_Rank(adv60,20.6966), 8.01266), 6.65053), 2.61957))
def alpha088(self):
adv60 = sma(self.volume, 60)
p1=rank(decay_linear(((rank(self.open) + rank(self.low)) - (rank(self.high) + rank(self.close))).to_frame(),8).CLOSE)
p2=ts_rank(decay_linear(correlation(ts_rank(self.close, 8), ts_rank(adv60,21), 8).to_frame(), 7).CLOSE, 3)
df=pd.DataFrame({'p1':p1,'p2':p2})
df.at[df['p1']>=df['p2'],'min']=df['p2']
df.at[df['p2']>=df['p1'],'min']=df['p1']
return df['min']
#return min(rank(decay_linear(((rank(self.open) + rank(self.low)) - (rank(self.high) + rank(self.close))).to_frame(),8).CLOSE), ts_rank(decay_linear(correlation(ts_rank(self.close, 8), ts_rank(adv60,20.6966), 8).to_frame(), 7).CLOSE, 3))
# Alpha#89 (Ts_Rank(decay_linear(correlation(((low * 0.967285) + (low * (1 - 0.967285))), adv10,6.94279), 5.51607), 3.79744) - Ts_Rank(decay_linear(delta(IndNeutralize(vwap,IndClass.industry), 3.48158), 10.1466), 15.3012))
# Alpha#90 ((rank((close - ts_max(close, 4.66719)))^Ts_Rank(correlation(IndNeutralize(adv40,IndClass.subindustry), low, 5.38375), 3.21856)) * -1)
# Alpha#91 ((Ts_Rank(decay_linear(decay_linear(correlation(IndNeutralize(close,IndClass.industry), volume, 9.74928), 16.398), 3.83219), 4.8667) -rank(decay_linear(correlation(vwap, adv30, 4.01303), 2.6809))) * -1)
# Alpha#92 min(Ts_Rank(decay_linear(((((high + low) / 2) + close) < (low + open)), 14.7221),18.8683), Ts_Rank(decay_linear(correlation(rank(low), rank(adv30), 7.58555), 6.94024),6.80584))
def alpha092(self):
adv30 = sma(self.volume, 30)
p1=ts_rank(decay_linear(((((self.high + self.low) / 2) + self.close) < (self.low + self.open)).to_frame(), 15).CLOSE,19)
p2=ts_rank(decay_linear(correlation(rank(self.low), rank(adv30), 8).to_frame(), 7).CLOSE,7)
df=pd.DataFrame({'p1':p1,'p2':p2})
df.at[df['p1']>=df['p2'],'min']=df['p2']
df.at[df['p2']>=df['p1'],'min']=df['p1']
return df['min']
#return min(ts_rank(decay_linear(((((self.high + self.low) / 2) + self.close) < (self.low + self.open)).to_frame(), 15).CLOSE,19), ts_rank(decay_linear(correlation(rank(self.low), rank(adv30), 8).to_frame(), 7).CLOSE,7))
# Alpha#93 (Ts_Rank(decay_linear(correlation(IndNeutralize(vwap, IndClass.industry), adv81,17.4193), 19.848), 7.54455) / rank(decay_linear(delta(((close * 0.524434) + (vwap * (1 -0.524434))), 2.77377), 16.2664)))
# Alpha#94 ((rank((vwap - ts_min(vwap, 11.5783)))^Ts_Rank(correlation(Ts_Rank(vwap,19.6462), Ts_Rank(adv60, 4.02992), 18.0926), 2.70756)) * -1)
def alpha094(self):
adv60 = sma(self.volume, 60)
return ((rank((self.vwap - ts_min(self.vwap, 12))).pow(ts_rank(correlation(ts_rank(self.vwap,20), ts_rank(adv60, 4), 18), 3)) * -1))
# Alpha#95 (rank((open - ts_min(open, 12.4105))) < Ts_Rank((rank(correlation(sum(((high + low)/ 2), 19.1351), sum(adv40, 19.1351), 12.8742))^5), 11.7584))
def alpha095(self):
adv40 = sma(self.volume, 40)
return (rank((self.open - ts_min(self.open, 12))) < ts_rank((rank(correlation(sma(((self.high + self.low)/ 2), 19), sma(adv40, 19), 13)).pow(5)), 12))
# Alpha#96 (max(Ts_Rank(decay_linear(correlation(rank(vwap), rank(volume), 3.83878),4.16783), 8.38151), Ts_Rank(decay_linear(Ts_ArgMax(correlation(Ts_Rank(close, 7.45404),Ts_Rank(adv60, 4.13242), 3.65459), 12.6556), 14.0365), 13.4143)) * -1)
def alpha096(self):
adv60 = sma(self.volume, 60)
p1=ts_rank(decay_linear(correlation(rank(self.vwap), rank(self.volume).to_frame(), 4),4).CLOSE, 8)
p2=ts_rank(decay_linear(ts_argmax(correlation(ts_rank(self.close, 7),ts_rank(adv60, 4), 4), 13).to_frame(), 14).CLOSE, 13)
df=pd.DataFrame({'p1':p1,'p2':p2})
df.at[df['p1']>=df['p2'],'max']=df['p1']
df.at[df['p2']>=df['p1'],'max']=df['p2']
return -1*df['max']
#return (max(ts_rank(decay_linear(correlation(rank(self.vwap), rank(self.volume).to_frame(), 4),4).CLOSE, 8), ts_rank(decay_linear(ts_argmax(correlation(ts_rank(self.close, 7),ts_rank(adv60, 4), 4), 13).to_frame(), 14).CLOSE, 13)) * -1)
# Alpha#97 ((rank(decay_linear(delta(IndNeutralize(((low * 0.721001) + (vwap * (1 - 0.721001))),IndClass.industry), 3.3705), 20.4523)) - Ts_Rank(decay_linear(Ts_Rank(correlation(Ts_Rank(low,7.87871), Ts_Rank(adv60, 17.255), 4.97547), 18.5925), 15.7152), 6.71659)) * -1)
# Alpha#98 (rank(decay_linear(correlation(vwap, sum(adv5, 26.4719), 4.58418), 7.18088)) -rank(decay_linear(Ts_Rank(Ts_ArgMin(correlation(rank(open), rank(adv15), 20.8187), 8.62571),6.95668), 8.07206)))
def alpha098(self):
adv5 = sma(self.volume, 5)
adv15 = sma(self.volume, 15)
return (rank(decay_linear(correlation(self.vwap, sma(adv5, 26), 5).to_frame(), 7).CLOSE) -rank(decay_linear(ts_rank(ts_argmin(correlation(rank(self.open), rank(adv15), 21), 9),7).to_frame(), 8).CLOSE))
# Alpha#99 ((rank(correlation(sum(((high + low) / 2), 19.8975), sum(adv60, 19.8975), 8.8136)) <rank(correlation(low, volume, 6.28259))) * -1)
def alpha099(self):
adv60 = sma(self.volume, 60)
return ((rank(correlation(ts_sum(((self.high + self.low) / 2), 20), ts_sum(adv60, 20), 9)) <rank(correlation(self.low, self.volume, 6))) * -1)
# Alpha#100 (0 - (1 * (((1.5 * scale(indneutralize(indneutralize(rank(((((close - low) - (high -close)) / (high - low)) * volume)), IndClass.subindustry), IndClass.subindustry))) -scale(indneutralize((correlation(close, rank(adv20), 5) - rank(ts_argmin(close, 30))),IndClass.subindustry))) * (volume / adv20))))
# Alpha#101 ((close - open) / ((high - low) + .001))
def alpha101(self):
return (self.close - self.open) /((self.high - self.low) + 0.001)