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Fitting Markov Switching Models to data in R

I'm trying to fit two kinds of Markov Switching Models to a time series of log-returns using the package MSwM in R. The models I'm considering are a regression model with only an intercept, and an ...
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0answers
15 views

R package - Markov Switching- ARMA models? [on hold]

I was wondering if anyone know R packages for fitting Markov Switching ARMA (Ms-ARMA) models? There are packages for fitting MS-Autoregressive models, but can't seem to find one with ARMA models... ...
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1answer
17 views

Difference between Value iteration and Policy iteration | Reinforced learning | MDP

In reinforced machine learning, what is the difference between Policy Iteration and Value iteration. As much as i understand, in value iteration you use the Bellman equation to solve for the optimal ...
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1answer
30 views

Continuous-time finite-horizon MDP

Is there any algorithm for solving a finite-horizon semi-Markov-Decision-Process? I want to find the optimal policy for a sequential decision problem with a finite action space, a finite state space, ...
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2answers
37 views

Markov decision process: same action leading to different states

Last week I've read a paper suggesting MDP as an alternative solution for recommender systems, The core of that paper was representation of recommendation process in terms of MDP, i.e. states, ...
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1answer
26 views

Expectation vs. direct numerical optimization of likelihood function for estimating high-dimensional Markov-Switching /HMM model

I am currently estimating a Markov-switching model with many parameters using direct optimization of the log likelihood function (through the forward-backward algorithm). I do the numerical ...
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1answer
25 views

An intuitive markov networks (MRFs) tutarial?

I would like to know about basics of markov networks (MRFs). Does anyone know an intuitive tutorial about the subject. I just need to very basics information about undirected graphical models.For ...
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1answer
120 views

Markov Model descision process in Java

I'm writing an assisted learning algorithm in Java. I've run into a mathematical problem that I can probably solve, but because the processing will be heavy I need an optimum solution. That being ...
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1answer
295 views

Q learning vs Temporal Difference vs Model based reinforced learning

I'm in a course called 'Intelligent Machines' in the university. We were introduced with 3 methods of reinforced learning, and with those we were given the intuition of when to use them and i quote: ...
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12 views

How can you analyze text for “sense”? OR: How would you analyze all existing and possible knowledge?

Jonathan Bacille created the Library of Babel. Through a seeded random number generator transformed into text, he has created a resource that allows you to access every possible combination of 3,200 ...
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1answer
2k views

Replicating the example of Markov Switching Model of Hamilton using MSwM package in R

I'm trying to estimate the basic Markov Switching Model of Hamilton (1989) as is post in E-views webpage. This model is itself is an exact replication of the existing in RATS. This is the time ...
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1answer
39 views

proof of each row of self product of transition matrix sums to 1

I am unable to proof that the sum of each row of self product of a transition matrix is 1... Let A be a transition probability matrix which means that each row of A sums to 1, and let P=A*A. I want ...
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1answer
77 views

multiple transitions of Markov model

I'm trying to run a data frame through multiple transitions of a Markov model for a class. The data frame looks like this: df = pd.DataFrame({'Bull Market': [.9, .8, .5], 'Bear ...
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27 views

POMDP with Observation-dependent Transition Probabilities

Recall that a standard POMDP consists of the tuple (S,A,T,R,O,Q,d) where: S - set of states A - set of actions T - set of transition probabilities, dependent upon states and actions R - reward ...
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0answers
89 views

Markov Decision Process in R

I have a doubt in interpreting the result of mdp_bellman_operator function in the MDPToolbox. MDPToolbox package in R is for Markov decision making process. When I run mdp_bellman_operator function: ...
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0answers
137 views

Fitting of a Markov Switching Model

I'm using the package fMarkovSwitching in R to do what I was trying to do here: Fitting Markov Switching Models to data in R. However, I get another weird error message. I'm trying to replicate the ...
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0answers
227 views

markov first order text processing in python

I wrote codes for text generating from a given text file. I use markov first order model. First create dictionary from text file. In case of punctuation ('.','?','!') it key is '$'. After creating ...
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1answer
49 views

Markov chain - Likelihood of sample with “unseen” observations (probability 0)

I have a large Markov chain and a sample, for which I want to calculate the likelihood. The problem is that some obervations or transitions in the sample don't occur in the Markov chain, which makes ...
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1answer
270 views

Hidden Markov Model: Is it possible that the accuracy decreases as the number of states increases?

I constructed a couple of Hidden Markov Models using the Baum-Welch algorithm for an increasing number of states. I noticed that after 8 states, the validation score goes down for more than 8 states. ...
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0answers
216 views

markov decision process / stochastic optimal control solver c/c++

i am looking for solver for solver/optimizer for markov decision process / stochastic optimal control problem (see also Sequential Decision Making under Uncertainty. The problem is described by set ...
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1answer
49 views

Log likelihood of a markov network

I am having trouble understanding the following figure from Coursera class: From as far as I understand, the equation corresponds the factor table: And therefore the likelihood of a sample data ...
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0answers
54 views

Error: SemiMarkov model for illness-death model

I am trying to fit a multistate model using the 'semimarkov' package in r. Below are extract of my code the result and the error I could. id state.h state.j time1 LOC sex 102 ...
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2answers
470 views

How does Morkov Chain works and what is memorylessness?

How do Markov Chains work? I have read wikipedia for Markov Chain, But the thing I don't get is memorylessness. Memorylessness states that: The next state depends only on the current state and ...
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0answers
333 views

Markov Model - Random word/gibberish generator

My code works fine until the random word generating. Sometimes it creates words/gibberish and sometimes it doesn't (probably going through an infinite loop). However, whenever it does create ...
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0answers
320 views

n-gram markov chain transition table

I'm trying to build an n-gram markov model from a given piece of text, and then access the transition table for it so I can calculate the conditional entropy for each sequence of words of length n ...
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3answers
156 views

How to implement a simple Markov model to assign authors to anonymous texts?

Let's say I have harvested the posts from a forum. Then I removed all the usernames and signatures, so that now I only know what post was in which thread but not who posted what, or even how many ...
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1answer
290 views

Degree of Freedom of Markov Chains

I have a set of 5000 strings of length 4, where each character in the string can be either A, B, C, or D. 0-order Markov Chain (no dependency), makes a 4*1 array of columns A, B, C, D. 1-order ...
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2answers
2k views

Applying hidden Markov model to multiple simultaneous bit sequences

This excellent article on implementing a Hidden Markov Model in C# does a fair job of classifying a single bit sequence based on training data. How to modify the algorithm, or build it out (multiple ...
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1answer
34 views

Graph analysis using mcxquery

I am clustering and analysing graphs using mcl. I'm not familiar with graph theory and I read about the function mcxquery. It is said in the doc that: " The main use of mcxquery is to analyze a ...
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1answer
58 views

Graph analysis using mcl and helper programs

I am trying to cluster data using the implementation of the Markov Clustering (mcl) algorithm at micans.org . I read in a description of the algorithm that it was possible to assign one element to ...
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2answers
599 views

Computing Eigenvalues/Eigenvectors of a stochastic matrix

I have difficulties to determine the stationary distribution of a markov model. I start to understand the theory and connections: Given a stochastic matrix, to dermine the stationary distribution we ...
1
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1answer
198 views

SPSS Syntax - How to deal with missing values through SPSS Syntax

Im new in this forum. I have to do a presentation on how SPSS deals with missing values. Specificaly, our professor gave us the task to: 1) Find out if, besides the functions accesible through the ...
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0answers
394 views

simulating a second order Markov chain from a non square matrix

My TP for second order MC is like this BPBP IPBP SPBP BPIP IPIP SPIP BPSP IPSP SPSP BP 0.458 0.348 0.375 0.364 0.26 0.305 0.412 ...
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1answer
2k views

How to calculate the transition probability matrix of a second order Markov Chain

I have data like in form of this Broker.Position IP BP SP IP IP .. I would like to calculate the second order transition matrix like in this form BP IP SP BPBP SPSP IPIP BPSP ...
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1answer
16 views

Can I make an unchordal MRF equivalent to a chordal MRF?

Here BY equivalence I mean, will the distribution(Entire table) be made equal in both cases???
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0answers
226 views

gmrf model for images

Can anyone explain how the parameters of the GMRF model can be estimated for an image using MATLAB? I have tried the toolboxes like UGM.(http://www.di.ens.fr/~mschmidt/Software/UGM/trainMRF.html)
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4answers
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Hidden Markov Models [closed]

I want to get started on HMM's, but don't know how to go about it. Can people here, give me some basic pointers, where to look? More than just the theory, I like to do a lot of hands-on. So, would ...
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3answers
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Artificial neural networks and Markov Processes

I read a little about ANN and Markov process. Can someone please help me in understanding where exactly Markov process fits in with ANN and genetic algorithms. Or simply, what could be the role of ...
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2answers
2k views

Library for a Markov Decision Process in C#

I'm working on a project to create an AI engine, where a robot is exploring a 2D gridded world and has to decide what square to move to next. Are there existing Markov libraries that could be used ...
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1answer
145 views

Moving Between States in a Markov Model - How to Tell R?

I have been struggling with this problem for quite a while and any help would be much appreciated. I am trying to write a function to calculate a transition matrix from observed data for a markov ...
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2answers
256 views

Using Markov models to convert all-caps to mixed-case and related problems

I've been thinking about using Markov techniques to restore missing information to natural language text. Restore all-caps text to mixed-case. Restore accents / diacritics to languages which should ...
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1answer
385 views

What HMM (Hidden Markov Model) compression libraries available for .NET?

I am looking for a library that use Markov Models/Hidden Markov Models for data compression. I will need to use it from the .NET. I googled for MM/HMM compressors but didn't find any helpful reference ...
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1answer
933 views

Viterbi algorithm in linear time

I have a problem where given a Hidden Markov model and the states S I need to find an algorithm that returns the most probable path through the Hidden Markov model for a given sequence X in time ...
1
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1answer
204 views

Update Rule in Temporal difference

The update rule TD(0) Q-Learning: Q(t-1) = (1-alpha) * Q(t-1) + (alpha) * (Reward(t-1) + gamma* Max( Q(t) ) ) Then take either the current best action (to optimize) or a random action (to explorer) ...
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2answers
327 views

Reinforcement learning And POMDP

I am trying to use Multi-Layer NN to implement probability function in Partially Observable Markov Process.. I thought inputs to the NN would be: current state, selected action, result state; The ...
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2answers
883 views

Training Hidden Markov Models without Tagged Corpus Data

For a linguistics course we implemented Part of Speech (POS) tagging using a hidden markov model, where the hidden variables were the parts of speech. We trained the system on some tagged data, and ...