case class LogNormal(mu: Double, sigma: Double)(implicit rand: RandBasis) extends ContinuousDistr[Double] with Moments[Double, Double] with HasCdf with HasInverseCdf with Product with Serializable
A log normal distribution is distributed such that log X ~ Normal(\mu, \sigma)
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- def apply(x: Double): Double
Returns the unnormalized value of the measure
Returns the unnormalized value of the measure
- Definition Classes
- ContinuousDistr → Density
- final def asInstanceOf[T0]: T0
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- def cdf(x: Double): Double
Computes the cumulative density function of the value x.
- def clone(): AnyRef
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- protected[lang]
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- @throws(classOf[java.lang.CloneNotSupportedException]) @native() @IntrinsicCandidate()
- def condition(p: (Double) => Boolean): Rand[Double]
- Definition Classes
- Rand
- def draw(): Double
Gets one sample from the distribution.
- def drawOpt(): Option[Double]
Overridden by filter/map/flatmap for monadic invocations.
Overridden by filter/map/flatmap for monadic invocations. Basically, rejeciton samplers will return None here
- Definition Classes
- Rand
- def entropy: Double
- final def eq(arg0: AnyRef): Boolean
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- def filter(p: (Double) => Boolean): Rand[Double]
- Definition Classes
- Rand
- def flatMap[E](f: (Double) => Rand[E]): Rand[E]
Converts a random sampler of one type to a random sampler of another type.
Converts a random sampler of one type to a random sampler of another type. Examples: randInt(10).flatMap(x => randInt(3 * x.asInstanceOf[Int]) gives a Rand[Int] in the range [0,30] Equivalently, for(x <- randInt(10); y <- randInt(30 *x)) yield y
- f
the transform to apply to the sampled value.
- Definition Classes
- Rand
- def foreach(f: (Double) => Unit): Unit
Samples one element and qpplies the provided function to it.
Samples one element and qpplies the provided function to it. Despite the name, the function is applied once. Sample usage:
for(x <- Rand.uniform) { println(x) }
- f
the function to be applied
- Definition Classes
- Rand
- def get(): Double
- Definition Classes
- Rand
- final def getClass(): Class[_ <: AnyRef]
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- @native() @IntrinsicCandidate()
- def inverseCdf(p: Double): Double
Computes the inverse cdf of the p-value for this gaussian.
Computes the inverse cdf of the p-value for this gaussian.
- returns
x s.t. cdf(x) = numYes
- Definition Classes
- LogNormal → HasInverseCdf
- final def isInstanceOf[T0]: Boolean
- Definition Classes
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- def logApply(x: Double): Double
Returns the log unnormalized value of the measure
Returns the log unnormalized value of the measure
- Definition Classes
- ContinuousDistr → Density
- lazy val logNormalizer: Double
- Definition Classes
- LogNormal → ContinuousDistr
- def logPdf(x: Double): Double
- Definition Classes
- ContinuousDistr
- def map[E](f: (Double) => E): Rand[E]
Converts a random sampler of one type to a random sampler of another type.
Converts a random sampler of one type to a random sampler of another type. Examples: uniform.map(_*2) gives a Rand[Double] in the range [0,2] Equivalently, for(x <- uniform) yield 2*x
- f
the transform to apply to the sampled value.
- Definition Classes
- Rand
- def mean: Double
- def mode: Double
- val mu: Double
- final def ne(arg0: AnyRef): Boolean
- Definition Classes
- AnyRef
- lazy val normalizer: Double
- Definition Classes
- ContinuousDistr
- final def notify(): Unit
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- final def notifyAll(): Unit
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- def pdf(x: Double): Double
Returns the probability density function at that point.
Returns the probability density function at that point.
- Definition Classes
- ContinuousDistr
- def probability(x: Double, y: Double): Double
- def productElementNames: Iterator[String]
- Definition Classes
- Product
- def sample(n: Int): IndexedSeq[Double]
Gets n samples from the distribution.
Gets n samples from the distribution.
- Definition Classes
- Rand
- def sample(): Double
Gets one sample from the distribution.
Gets one sample from the distribution. Equivalent to get()
- Definition Classes
- Rand
- def samples: Iterator[Double]
An infinitely long iterator that samples repeatedly from the Rand
An infinitely long iterator that samples repeatedly from the Rand
- returns
an iterator that repeatedly samples
- Definition Classes
- Rand
- def samplesVector[U >: Double](size: Int)(implicit m: ClassTag[U]): DenseVector[U]
Return a vector of samples.
Return a vector of samples.
- Definition Classes
- Rand
- val sigma: Double
- final def synchronized[T0](arg0: => T0): T0
- Definition Classes
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- def toString(): String
- Definition Classes
- LogNormal → AnyRef → Any
- def unnormalizedLogPdf(x: Double): Double
- Definition Classes
- LogNormal → ContinuousDistr
- def unnormalizedPdf(x: Double): Double
Returns the probability density function up to a constant at that point.
Returns the probability density function up to a constant at that point.
- Definition Classes
- ContinuousDistr
- def variance: Double
- final def wait(arg0: Long, arg1: Int): Unit
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- @throws(classOf[java.lang.InterruptedException])
- final def wait(arg0: Long): Unit
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- @throws(classOf[java.lang.InterruptedException]) @native()
- final def wait(): Unit
- Definition Classes
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- @throws(classOf[java.lang.InterruptedException])
- def withFilter(p: (Double) => Boolean): Rand[Double]
- Definition Classes
- Rand