Re: [Spark ML] Positive-Only Training Classification in Scala
If I try to use LogisticRegression with only positive training it always gives me positive results: Positive Only private def positiveOnly(): Unit = {val training = spark.createDataFrame(Seq( (1.0, Vectors.dense(0.0, 1.1, 0.1)), (1.0, Vectors.dense(0.0, 1.0, -1.0)), (1.0, Vectors.dense(0.2, 1.3, 1.0)), (1.0, Vectors.dense(0.1, 1.2, -0.5)))).toDF("label", "features")val lr = new LogisticRegression() lr.setMaxIter(10).setRegParam(0.01)val model = lr.fit(training)val test = spark.createDataFrame(Seq( (1.0, Vectors.dense(-1.0, 1.5, 1.3)), (0.0, Vectors.dense(3.0, 2.0, -0.1)), (1.0, Vectors.dense(0.0, 2.2, -1.5)) )).toDF("label", "features")model.transform(test) .select("features", "label", "probability", "prediction") .collect() .foreach { case Row(features: Vector, label: Double, prob: Vector, prediction: Double) =>println(s"($features, $label) -> prob=$prob, prediction=$prediction") } } Not using Mixmax yet? The results look like this: [info] ([-1.0,1.5,1.3], 1.0) -> prob=[0.0,1.0], prediction=1.0[info] ([3.0,2.0,-0.1], 0.0) -> prob=[0.0,1.0], prediction=1.0[info] ([0.0,2.2,-1.5], 1.0) -> prob=[0.0,1.0], prediction=1.0 On Tue, Jan 16, 2018 8:51 AM, Matt Hicks m...@outr.com wrote: Hi Hari, I'm not sure I understand. I apologize, I'm still pretty new to Spark and Spark ML. Can you point me to some example code or documentation that would more fully represent this? Thanks On Tue, Jan 16, 2018 2:54 AM, hosur narahari hnr1...@gmail.com wrote: You can make use of probability vector from spark classification.When you run spark classification model for prediction, along with classifying into its class spark also gives probability vector(what's the probability that this could belong to each individual class) . So just take the probability corresponding to the donor class. And it'll be same as what's the probability the a person will become donor. Best Regards,Hari On 15 Jan 2018 11:51 p.m., "Matt Hicks"wrote: I'm attempting to create a training classification, but only have positive information. Specifically in this case it is a donor list of users, but I want to use it as training in order to determine classification for new contacts to give probabilities that they will donate. Any insights or links are appreciated. I've gone through the documentation but have been unable to find any references to how I might do this. Thanks --- Matt Hicks Chief Technology Officer 405.283.6887 | http://outr.com
Re: [Spark ML] Positive-Only Training Classification in Scala
Hi Hari, I'm not sure I understand. I apologize, I'm still pretty new to Spark and Spark ML. Can you point me to some example code or documentation that would more fully represent this? Thanks On Tue, Jan 16, 2018 2:54 AM, hosur narahari hnr1...@gmail.com wrote: You can make use of probability vector from spark classification.When you run spark classification model for prediction, along with classifying into its class spark also gives probability vector(what's the probability that this could belong to each individual class) . So just take the probability corresponding to the donor class. And it'll be same as what's the probability the a person will become donor. Best Regards,Hari On 15 Jan 2018 11:51 p.m., "Matt Hicks"wrote: I'm attempting to create a training classification, but only have positive information. Specifically in this case it is a donor list of users, but I want to use it as training in order to determine classification for new contacts to give probabilities that they will donate. Any insights or links are appreciated. I've gone through the documentation but have been unable to find any references to how I might do this. Thanks --- Matt Hicks Chief Technology Officer 405.283.6887 | http://outr.com
Re: [Spark ML] Positive-Only Training Classification in Scala
You can make use of probability vector from spark classification. When you run spark classification model for prediction, along with classifying into its class spark also gives probability vector(what's the probability that this could belong to each individual class) . So just take the probability corresponding to the donor class. And it'll be same as what's the probability the a person will become donor. Best Regards, Hari On 15 Jan 2018 11:51 p.m., "Matt Hicks"wrote: > I'm attempting to create a training classification, but only have positive > information. Specifically in this case it is a donor list of users, but I > want to use it as training in order to determine classification for new > contacts to give probabilities that they will donate. > > Any insights or links are appreciated. I've gone through the documentation > but have been unable to find any references to how I might do this. > > Thanks > > ---*Matt Hicks* > > *Chief Technology Officer* > > 405.283.6887 | http://outr.com > > [image: logo 2 small.png] > >
Re: [Spark ML] Positive-Only Training Classification in Scala
I do not know that module, but in literature PUL is the exact term you should look for. Matt Hicksschrieb am Mo., 15. Jan. 2018 um 20:56 Uhr: > Is it fair to assume this is what I need? > https://github.com/ispras/pu4spark > > > > On Mon, Jan 15, 2018 1:55 PM, Georg Heiler georg.kf.hei...@gmail.com > wrote: > >> As far as I know spark does not implement such algorithms. In case the >> dataset is small >> http://scikit-learn.org/stable/modules/generated/sklearn.svm.OneClassSVM.html >> might >> be of interest to you. >> >> Jörn Franke schrieb am Mo., 15. Jan. 2018 um >> 20:04 Uhr: >> >> I think you look more for algorithms for unsupervised learning, eg >> clustering. >> >> Depending on the characteristics different clusters might be created , eg >> donor or non-donor. Most likely you may find also more clusters (eg would >> donate but has a disease preventing it or too old). You can verify which >> clusters make sense for your approach so I recommend not only try two >> clusters but multiple and see which number is more statistically >> significant . >> >> On 15. Jan 2018, at 19:21, Matt Hicks wrote: >> >> I'm attempting to create a training classification, but only have >> positive information. Specifically in this case it is a donor list of >> users, but I want to use it as training in order to determine >> classification for new contacts to give probabilities that they will donate. >> >> Any insights or links are appreciated. I've gone through the >> documentation but have been unable to find any references to how I might do >> this. >> >> Thanks >> >> ---*Matt Hicks* >> >> *Chief Technology Officer* >> >> 405.283.6887 <(405)%20283-6887> | http://outr.com >> >> >> >>
Re: [Spark ML] Positive-Only Training Classification in Scala
Is it fair to assume this is what I need? https://github.com/ispras/pu4spark On Mon, Jan 15, 2018 1:55 PM, Georg Heiler georg.kf.hei...@gmail.com wrote: As far as I know spark does not implement such algorithms. In case the dataset is small http://scikit-learn.org/stable/modules/generated/sklearn.svm.OneClassSVM.html might be of interest to you. Jörn Frankeschrieb am Mo., 15. Jan. 2018 um 20:04 Uhr: I think you look more for algorithms for unsupervised learning, eg clustering. Depending on the characteristics different clusters might be created , eg donor or non-donor. Most likely you may find also more clusters (eg would donate but has a disease preventing it or too old). You can verify which clusters make sense for your approach so I recommend not only try two clusters but multiple and see which number is more statistically significant . On 15. Jan 2018, at 19:21, Matt Hicks wrote: I'm attempting to create a training classification, but only have positive information. Specifically in this case it is a donor list of users, but I want to use it as training in order to determine classification for new contacts to give probabilities that they will donate. Any insights or links are appreciated. I've gone through the documentation but have been unable to find any references to how I might do this. Thanks --- Matt Hicks Chief Technology Officer 405.283.6887 | http://outr.com
Re: [Spark ML] Positive-Only Training Classification in Scala
As far as I know spark does not implement such algorithms. In case the dataset is small http://scikit-learn.org/stable/modules/generated/sklearn.svm.OneClassSVM.html might be of interest to you. Jörn Frankeschrieb am Mo., 15. Jan. 2018 um 20:04 Uhr: > I think you look more for algorithms for unsupervised learning, eg > clustering. > > Depending on the characteristics different clusters might be created , eg > donor or non-donor. Most likely you may find also more clusters (eg would > donate but has a disease preventing it or too old). You can verify which > clusters make sense for your approach so I recommend not only try two > clusters but multiple and see which number is more statistically > significant . > > On 15. Jan 2018, at 19:21, Matt Hicks wrote: > > I'm attempting to create a training classification, but only have positive > information. Specifically in this case it is a donor list of users, but I > want to use it as training in order to determine classification for new > contacts to give probabilities that they will donate. > > Any insights or links are appreciated. I've gone through the documentation > but have been unable to find any references to how I might do this. > > Thanks > > ---*Matt Hicks* > > *Chief Technology Officer* > > 405.283.6887 <(405)%20283-6887> | http://outr.com > > > >
Re: [Spark ML] Positive-Only Training Classification in Scala
I think you look more for algorithms for unsupervised learning, eg clustering. Depending on the characteristics different clusters might be created , eg donor or non-donor. Most likely you may find also more clusters (eg would donate but has a disease preventing it or too old). You can verify which clusters make sense for your approach so I recommend not only try two clusters but multiple and see which number is more statistically significant . > On 15. Jan 2018, at 19:21, Matt Hickswrote: > > > I'm attempting to create a training classification, but only have positive > information. Specifically in this case it is a donor list of users, but I > want to use it as training in order to determine classification for new > contacts to give probabilities that they will donate. > > Any insights or links are appreciated. I've gone through the documentation > but have been unable to find any references to how I might do this. > > Thanks > > --- > Matt Hicks > Chief Technology Officer > 405.283.6887 | http://outr.com >