KnowledgeMiner Changes and Updates
Changes in version 2.1
Changes in version 2.0
In KnowledgeMiner you deal with data like in spreadsheets and, through its built in model base, you are able to create and store time series models, input-output models and predictable systems of equations (networks of input-output models) for each variable in one document. It is possible, for example, to create a linear or nonlinear time series model, a multi-input/single-output model and a system of equations for 20 output variables in one document. These models are easy applicable to sets of new data (prediction, classification, diagnosis) within KnowledgeMiner immediately. There is no need to import them as C code into other applications or to do other efforts to get them run.
KnowledgeMiner does not only do some useful work for you autonomously but also lets you the freedom to get some other work done in the same time by sending the complete knowledge extraction process into the background of your computer. For example, while I'm just writing this text KnowledgeMiner works very hard in the background of my computer to create an excellent prediction model of the US economy for me, hopefully (you can review the results if you have downloaded the package). KnowledgeMiner not only assist me to sieve some important information out of data but also helps me extremly saving my resources twice: by using the fastest and most robust knowledge extraction technologies available today and by giving me the chance to do some other work while it does its job.
- spreasheet like handling of data including simple formulas and cell references
- several built-in mathematical functions for extending the data basis:
- xy, x(y/z), trigonometric, exponential and logarithmic functions, mean, sum and standard deviation, correlation analysis, random values, add uniform noise
- opens ASCII text files
- creates automatically
- linear or nonlinear static GMDH-models
- multi-input/single-output models as well as multi-input/multi-output models (system of equations) available analytically and graphically
- linear or nonlinear dynamic GMDH-models
- time series models, multi-input/single-output models as well as multi-input/multi-output models (predictable system of equations) available analytically and graphically
- for up to
- 50 input variables
- enables background modeling
- stores all created models in a model base dynamically
- all models can be used for status-quo or what-if predictions, classification or diagnosis problems within KnowledgeMiner
- GMDH-type Neural Networks that perform
- Active Neurons selecting their input variables themselves
- advanced network synthesis and model validation techniques to end up in a robust, optimal complex model
- creation of a best and autonomous system of equations (network of GMDH-type Neural Networks) which is ready for status-quo predictions of the complete system by default and which is available analytically and graphically (system graph) for results interpretation
- a model base to store all models and to keep connected information together
- Analog Complexing as a powerful pattern search technology to create predictions for fuzzy processes (the most market processes e.g.) which other methods may be not appropriate for.
- completely autonomous modeling process which can work as background process on computers saving your resources either by working simultaneously with the modeling process or, for larger problems, by running the process overnight and getting some work done while sleeping
System Requirements
Software
MacOS 7.0 or later, Apple Guide, and QuickTime
Hardware
68k based Macs: 8+MB RAM, 68020 or higher with FPU (for a version that requires no FPU, please call)
PPC based Macs: 16+MB RAM, PPC 601 or higher
- Contact:
- julian@sierra.net
- frank_lemke@magicvillage.de