欧美三区_成人在线免费观看视频_欧美极品少妇xxxxⅹ免费视频_a级毛片免费播放_鲁一鲁中文字幕久久_亚洲一级特黄

ML| EM

系統(tǒng) 2297 0

What's xxx

The EM algorithm is used to find the maximum likelihood parameters of a statistical model in cases where the equations cannot be solved directly. Typically these models involve latent variables in addition to unknown parameters and known data observations. That is, either there are missing values among the data, or the model can be formulated more simply by assuming the existence of additional unobserved data points.?

The motivation is as follows. If we know the value of the parameters $\boldsymbol\theta$, we can usually find the value of the latent variables $\mathbf{Z}$ by maximizing the log-likelihood over all possible values of $\mathbf{Z}$, either simply by iterating over $\mathbf{Z}$ or through an algorithm such as the Viterbi algorithm for hidden Markov models. Conversely, if we know the value of the latent variables $\mathbf{Z}$, we can find an estimate of the parameters $\boldsymbol\theta$ fairly easily, typically by simply grouping the observed data points according to the value of the associated latent variable and averaging the values, or some function of the values, of the points in each group. This suggests an iterative algorithm, in the case where both $\boldsymbol\theta$ and $\mathbf{Z}$ are unknown:

  1. First, initialize the parameters $\boldsymbol\theta$ to some random values.
  2. Compute the best value for $\mathbf{Z}$ given these parameter values.
  3. Then, use the just-computed values of $\mathbf{Z}$ to compute a better estimate for the parameters $\boldsymbol\theta$. Parameters associated with a particular value of $\mathbf{Z}$ will use only those data points whose associated latent variable has that value.
  4. Iterate steps 2 and 3 until convergence.

The algorithm as just described monotonically approaches a local minimum of the cost function, and is commonly called hard EM . The k-means algorithm is an example of this class of algorithms.

However, we can do somewhat better by, rather than making a hard choice for $\mathbf{Z}$ given the current parameter values and averaging only over the set of data points associated with a particular value of $\mathbf{Z}$, instead determining the probability of each possible value of $\mathbf{Z}$ for each data point, and then using the probabilities associated with a particular value of $\mathbf{Z}$ to compute a weighted average over the entire set of data points. The resulting algorithm is commonly called soft EM, and is the type of algorithm normally associated with EM.?

With the ability to deal with missing data and observe unidentified variables, EM is becoming a useful tool to price and manage risk of a portfolio.

Algorithm

Given a statistical model consisting of a set $\mathbf{X}$ of observed data, a set of unobserved latent data or missing values $\mathbf{Z}$, and a vector of unknown parameters $\boldsymbol\theta$, along with a likelihood function $L(\boldsymbol\theta; \mathbf{X}, \mathbf{Z}) = p(\mathbf{X}, \mathbf{Z}|\boldsymbol\theta)$, the maximum likelihood estimate (MLE) of the unknown parameters is determined by the marginal likelihood of the observed data

$L(\boldsymbol\theta; \mathbf{X}) = p(\mathbf{X}|\boldsymbol\theta) = \sum_{\mathbf{Z}} p(\mathbf{X},\mathbf{Z}|\boldsymbol\theta) $
However, this quantity is often intractable (e.g. if $\mathbf{Z}$ is a sequence of events, so that the number of values grows exponentially with the sequence length, making the exact calculation of the sum extremely difficult).

The EM algorithm seeks to find the MLE of the marginal likelihood by iteratively applying the following two steps:

1. Expectation step (E step) : Calculate the expected value of the log likelihood function, with respect to the conditional distribution of $\mathbf{Z}$ given $\mathbf{X}$ under the current estimate of the parameters $\boldsymbol\theta^{(t)}$:
$Q(\boldsymbol\theta|\boldsymbol\theta^{(t)}) = \operatorname{E}_{\mathbf{Z}|\mathbf{X},\boldsymbol\theta^{(t)}}\left[ \log L (\boldsymbol\theta;\mathbf{X},\mathbf{Z}) \right] \,$
2. Maximization step (M step): Find the parameter that maximizes this quantity:
$\boldsymbol\theta^{(t+1)} = \underset{\boldsymbol\theta}{\operatorname{arg\,max}} \ Q(\boldsymbol\theta|\boldsymbol\theta^{(t)}) \, $
Note that in typical models to which EM is applied:

  • The observed data points $\mathbf{X}$ may be discrete (taking values in a finite or countably infinite set) or continuous (taking values in an uncountably infinite set). There may in fact be a vector of observations associated with each data point.
  • The missing values (aka latent variables) $\mathbf{Z}$ are discrete, drawn from a fixed number of values, and there is one latent variable per observed data point.
  • The parameters are continuous, and are of two kinds: Parameters that are associated with all data points, and parameters associated with a particular value of a latent variable (i.e. associated with all data points whose corresponding latent variable has a particular value).

ML| EM


更多文章、技術(shù)交流、商務(wù)合作、聯(lián)系博主

微信掃碼或搜索:z360901061

微信掃一掃加我為好友

QQ號(hào)聯(lián)系: 360901061

您的支持是博主寫(xiě)作最大的動(dòng)力,如果您喜歡我的文章,感覺(jué)我的文章對(duì)您有幫助,請(qǐng)用微信掃描下面二維碼支持博主2元、5元、10元、20元等您想捐的金額吧,狠狠點(diǎn)擊下面給點(diǎn)支持吧,站長(zhǎng)非常感激您!手機(jī)微信長(zhǎng)按不能支付解決辦法:請(qǐng)將微信支付二維碼保存到相冊(cè),切換到微信,然后點(diǎn)擊微信右上角掃一掃功能,選擇支付二維碼完成支付。

【本文對(duì)您有幫助就好】

您的支持是博主寫(xiě)作最大的動(dòng)力,如果您喜歡我的文章,感覺(jué)我的文章對(duì)您有幫助,請(qǐng)用微信掃描上面二維碼支持博主2元、5元、10元、自定義金額等您想捐的金額吧,站長(zhǎng)會(huì)非常 感謝您的哦!!!

發(fā)表我的評(píng)論
最新評(píng)論 總共0條評(píng)論
主站蜘蛛池模板: 欧美一级欧美三级 | 男女配种超爽免费视频 | 欧美国产激情二区三区 | 99re国产| 天天做天天爱天天操 | 男女xx00xx的视频免费观看 | 91精品国产综合久久久久蜜臀 | www天天操 | 一区二区三区国模大胆 | 国产美女福利视频福利 | 亚洲黑人在线观看 | 国产专区欧美 | 91亚洲国产精品 | 婷婷在线免费视频 | 精品视频久久 | 91精品综合久久久久久五月天 | 天天艹久久 | 久久久久久久99精品免费观看 | 一区二区三区不卡免费视频97 | 久久亚洲在线 | 天天影院在线观看 | 国产一起色一起爱 | 精品欧美乱码久久久久久1区2区 | 欧美日剧在线免费 | 久久99综合国产精品亚洲首页 | 国产偷国产偷亚洲高清在线 | 午夜免费 | 国产精品免费一区 | 亚洲偷图色综合色就色 | 久久激情av | 久在线视频 | 日韩在线免费 | 日本久久精品视频 | 国内精品一区二区2021在线 | 中文字幕在线免费看 | 欧美日韩中文 | 新封神榜杨戬电影免费动画在线观看国语 | 国产精品乱码在线观看 | 欧美成人在线免费观看 | 一级a级国产不卡毛片 | 久本草在线中文字幕亚洲欧美 |