PINE LIBRARY
Güncellendi MarkovChain

Library "MarkovChain"
Generic Markov Chain type functions.
---
A Markov chain or Markov process is a stochastic model describing a sequence of possible events in which the
probability of each event depends only on the state attained in the previous event.
---
reference:
Understanding Markov Chains, Examples and Applications. Second Edition. Book by Nicolas Privault.
en.wikipedia.org/wiki/Markov_chain
geeksforgeeks.org/finding-the-probability-of-a-state-at-a-given-time-in-a-markov-chain-set-2/
towardsdatascience.com/brief-introduction-to-markov-chains-2c8cab9c98ab
github.com/mxgmn/MarkovJunior
stats.stackexchange.com/questions/36099/estimating-markov-transition-probabilities-from-sequence-data
timeseriesreasoning.com/contents/hidden-markov-models/
ris-ai.com/markov-chain
github.com/coin-or/jMarkov/blob/master/src/jmarkov/MarkovProcess.java
gist.github.com/mschauer/4c81a0529220b21fdf819e097f570f06
github.com/rasmusab/bayes.js/blob/master/mcmc.js
gist.github.com/sathomas/cf526d6495811a8ca779946ef5558702
writings.stephenwolfram.com/2022/06/games-and-puzzles-as-multicomputational-systems/
kevingal.com/blog/boardgame.html
towardsdatascience.com/brief-introduction-to-markov-chains-2c8cab9c98ab
spedygiorgio.github.io/markovchain/reference/index.html
github.com/alexsosn/MarslandMLAlgo/blob/4277b24db88c4cb70d6b249921c5d21bc8f86eb4/Ch16/HMM.py
projectrhea.org/rhea/index.php/Introduction_to_Hidden_Markov_Chains
method to_string(this)
Translate a Markov Chain object to a string format.
Namespace types: MC
Parameters:
this (MC): `MC` . Markov Chain object.
Returns: string
method to_table(this, position, text_color, text_size)
Namespace types: MC
Parameters:
this (MC)
position (string)
text_color (color)
text_size (string)
method create_transition_matrix(this)
Namespace types: MC
Parameters:
this (MC)
method generate_transition_matrix(this)
Namespace types: MC
Parameters:
this (MC)
new_chain(states, name)
Parameters:
states (state[])
name (string)
from_data(data, name)
Parameters:
data (string[])
name (string)
method probability_at_step(this, target_step)
Namespace types: MC
Parameters:
this (MC)
target_step (int)
method state_at_step(this, start_state, target_state, target_step)
Namespace types: MC
Parameters:
this (MC)
start_state (int)
target_state (int)
target_step (int)
method forward(this, obs)
Namespace types: HMC
Parameters:
this (HMC)
obs (int[])
method backward(this, obs)
Namespace types: HMC
Parameters:
this (HMC)
obs (int[])
method viterbi(this, observations)
Namespace types: HMC
Parameters:
this (HMC)
observations (int[])
method baumwelch(this, observations)
Namespace types: HMC
Parameters:
this (HMC)
observations (int[])
Node
Target node.
Fields:
index (series int): . Key index of the node.
probability (series float): . Probability rate of activation.
state
State reference.
Fields:
name (series string): . Name of the state.
index (series int): . Key index of the state.
target_nodes (Node[]): . List of index references and probabilities to target states.
MC
Markov Chain reference object.
Fields:
name (series string): . Name of the chain.
states (state[]): . List of state nodes and its name, index, targets and transition probabilities.
size (series int): . Number of unique states
transitions (matrix<float>): . Transition matrix
HMC
Hidden Markov Chain reference object.
Fields:
name (series string): . Name of thehidden chain.
states_hidden (state[]): . List of state nodes and its name, index, targets and transition probabilities.
states_obs (state[]): . List of state nodes and its name, index, targets and transition probabilities.
transitions (matrix<float>): . Transition matrix
emissions (matrix<float>): . Emission matrix
initial_distribution (float[])
Generic Markov Chain type functions.
---
A Markov chain or Markov process is a stochastic model describing a sequence of possible events in which the
probability of each event depends only on the state attained in the previous event.
---
reference:
Understanding Markov Chains, Examples and Applications. Second Edition. Book by Nicolas Privault.
en.wikipedia.org/wiki/Markov_chain
geeksforgeeks.org/finding-the-probability-of-a-state-at-a-given-time-in-a-markov-chain-set-2/
towardsdatascience.com/brief-introduction-to-markov-chains-2c8cab9c98ab
github.com/mxgmn/MarkovJunior
stats.stackexchange.com/questions/36099/estimating-markov-transition-probabilities-from-sequence-data
timeseriesreasoning.com/contents/hidden-markov-models/
ris-ai.com/markov-chain
github.com/coin-or/jMarkov/blob/master/src/jmarkov/MarkovProcess.java
gist.github.com/mschauer/4c81a0529220b21fdf819e097f570f06
github.com/rasmusab/bayes.js/blob/master/mcmc.js
gist.github.com/sathomas/cf526d6495811a8ca779946ef5558702
writings.stephenwolfram.com/2022/06/games-and-puzzles-as-multicomputational-systems/
kevingal.com/blog/boardgame.html
towardsdatascience.com/brief-introduction-to-markov-chains-2c8cab9c98ab
spedygiorgio.github.io/markovchain/reference/index.html
github.com/alexsosn/MarslandMLAlgo/blob/4277b24db88c4cb70d6b249921c5d21bc8f86eb4/Ch16/HMM.py
projectrhea.org/rhea/index.php/Introduction_to_Hidden_Markov_Chains
method to_string(this)
Translate a Markov Chain object to a string format.
Namespace types: MC
Parameters:
this (MC): `MC` . Markov Chain object.
Returns: string
method to_table(this, position, text_color, text_size)
Namespace types: MC
Parameters:
this (MC)
position (string)
text_color (color)
text_size (string)
method create_transition_matrix(this)
Namespace types: MC
Parameters:
this (MC)
method generate_transition_matrix(this)
Namespace types: MC
Parameters:
this (MC)
new_chain(states, name)
Parameters:
states (state[])
name (string)
from_data(data, name)
Parameters:
data (string[])
name (string)
method probability_at_step(this, target_step)
Namespace types: MC
Parameters:
this (MC)
target_step (int)
method state_at_step(this, start_state, target_state, target_step)
Namespace types: MC
Parameters:
this (MC)
start_state (int)
target_state (int)
target_step (int)
method forward(this, obs)
Namespace types: HMC
Parameters:
this (HMC)
obs (int[])
method backward(this, obs)
Namespace types: HMC
Parameters:
this (HMC)
obs (int[])
method viterbi(this, observations)
Namespace types: HMC
Parameters:
this (HMC)
observations (int[])
method baumwelch(this, observations)
Namespace types: HMC
Parameters:
this (HMC)
observations (int[])
Node
Target node.
Fields:
index (series int): . Key index of the node.
probability (series float): . Probability rate of activation.
state
State reference.
Fields:
name (series string): . Name of the state.
index (series int): . Key index of the state.
target_nodes (Node[]): . List of index references and probabilities to target states.
MC
Markov Chain reference object.
Fields:
name (series string): . Name of the chain.
states (state[]): . List of state nodes and its name, index, targets and transition probabilities.
size (series int): . Number of unique states
transitions (matrix<float>): . Transition matrix
HMC
Hidden Markov Chain reference object.
Fields:
name (series string): . Name of thehidden chain.
states_hidden (state[]): . List of state nodes and its name, index, targets and transition probabilities.
states_obs (state[]): . List of state nodes and its name, index, targets and transition probabilities.
transitions (matrix<float>): . Transition matrix
emissions (matrix<float>): . Emission matrix
initial_distribution (float[])
Sürüm Notları
updated imported libraries to its most recent version.Sürüm Notları
v3 it now uses the builtin matrix.pow() function.Pine kitaplığı
Gerçek TradingView ruhuyla, yazar bu Pine kodunu açık kaynaklı bir kütüphane olarak yayınladı, böylece topluluğumuzdaki diğer Pine programcıları onu yeniden kullanabilir. Yazara saygı! Bu kütüphaneyi özel olarak veya diğer açık kaynaklı yayınlarda kullanabilirsiniz, ancak bu kodun bir yayında yeniden kullanımı Site Kuralları tarafından yönetilmektedir.
Feragatname
Bilgiler ve yayınlar, TradingView tarafından sağlanan veya onaylanan finansal, yatırım, işlem veya diğer türden tavsiye veya tavsiyeler anlamına gelmez ve teşkil etmez. Kullanım Şartları'nda daha fazlasını okuyun.
Pine kitaplığı
Gerçek TradingView ruhuyla, yazar bu Pine kodunu açık kaynaklı bir kütüphane olarak yayınladı, böylece topluluğumuzdaki diğer Pine programcıları onu yeniden kullanabilir. Yazara saygı! Bu kütüphaneyi özel olarak veya diğer açık kaynaklı yayınlarda kullanabilirsiniz, ancak bu kodun bir yayında yeniden kullanımı Site Kuralları tarafından yönetilmektedir.
Feragatname
Bilgiler ve yayınlar, TradingView tarafından sağlanan veya onaylanan finansal, yatırım, işlem veya diğer türden tavsiye veya tavsiyeler anlamına gelmez ve teşkil etmez. Kullanım Şartları'nda daha fazlasını okuyun.