Nplot Examples
2021年11月21日Register here: http://gg.gg/wz5mw
Again, not sure why nplot’s site is not currently working but it is a somewhat popular plotting API that I’ve used in the past. I post it for your information and in case of the likely event nplot will be back up soon.
*Download source code and copy the nplot.dll file from the bin directory to some location. Now add a reference to this nplot.dll file. If you would like to use NPlot with the Windows.Forms designer within Visual Studio, you should add the NPlot.Windows.PlotSurface2D control to the Toolbox. To do this, right click the toolbox panel.
*Examples of hplot (upper) and nplot (lower). Note that if the second argument, the parallel vector of labels, is omitted, then nplot assumed all tokens to belong to a single class, and one normal curve for all tokens is plotted.
*In this lesson, we will explore the functions and examples of a line plot. Also in this lesson, we will learn to create a line plot, create questions, and interpret data from a line plot.
*C# (CSharp) NPlot - 19 examples found. These are the top rated real world C# (CSharp) examples of NPlot extracted from open source projects. You can rate examples to help us improve the quality of examples.Generic X-Y Plotting
Generic function for plotting of R objects. For more details about the graphical parameter arguments, see par.
For simple scatter plots, plot.default will be used. However, there are plot methods for many R objects, including functions, data.frames, density objects, etc. Use methods(plot) and the documentation for these.KeywordshplotUsageArgumentsx
the coordinates of points in the plot. Alternatively, a single plotting structure, function or any R object with a plot method can be provided.y
the y coordinates of points in the plot, optional if x is an appropriate structure.…
Arguments to be passed to methods, such as graphical parameters (see par). Many methods will accept the following arguments:type
what type of plot should be drawn. Possible types are
*
’p’ for points,
*
’l’ for lines,
*
’b’ for both,
*
’c’ for the lines part alone of ’b’,
*
’o’ for both ‘overplotted’,
*
’h’ for ‘histogram’ like (or ‘high-density’) vertical lines,
*
’s’ for stair steps,
*
’S’ for other steps, see ‘Details’ below,
*
’n’ for no plotting. All other types give a warning or an error; using, e.g., type = ’punkte’ being equivalent to type = ’p’ for S compatibility. Note that some methods, e.g.plot.factor, do not accept this.main
an overall title for the plot: see title.sub
a sub title for the plot: see title.xlabPlot Examples For Middle School
a title for the x axis: see title.ylab
Zeus casino free slot play. a title for the y axis: see title.asp
the (y/x) aspect ratio, see plot.window.Details
The two step types differ in their x-y preference: Going from ((x1,y1)) to ((x2,y2)) with (x1 < x2), type = ’s’ moves first horizontal, then vertical, whereas type = ’S’ moves the other way around.See Also
plot.default, plot.formula and other methods; points, lines, par. For thousands of points, consider using smoothScatter() instead of plot().
For X-Y-Z plotting see contour, persp and image.Aliases
*plotExampleslibrary(graphics)# NOT RUN {require(stats) # for lowess, rpois, rnormplot(cars)lines(lowess(cars))plot(sin, -pi, 2*pi) # see ?plot.function## Discrete Distribution Plot:plot(table(rpois(100, 5)), type = ’h’, col = ’red’, lwd = 10, main = ’rpois(100, lambda = 5)’)## Simple quantiles/ECDF, see ecdf() {library(stats)} for a better one:plot(x <- sort(rnorm(47)), type = ’s’, main = ’plot(x, type = ’s’)’)points(x, cex = .5, col = ’dark red’)# } Documentation reproduced from package graphics, version 3.6.2, License: Part of R 3.6.2 Community examplesPlot Examples Comic Striprdocumentationorg@mennovr.nl at Nov 17, 2020 graphics v3.6.2
```r # Plot with multiple lines in different color: plot(sin,-pi, 4*pi, col = ’red’) plot(cos,-pi, 4*pi, col = ’blue’, add = TRUE) ``` rdocumentationorg@mennovr.nl at Nov 17, 2020 graphics v3.6.2
```r ## Plot with multiple lines in different color: plot(sin,-pi, 4*pi, col = ’red’) plot(cos,-pi, 4*pi, col = ’blue’, add = TRUE) ``` Plot Examples With A Book
plot(basedata1$iq, basedata$read_ab, main=’Diagrama de Dispersión’, xlab = ’read_ab’, ylab = ’iq’) ltseiden@gmail.com at Dec 13, 2020 graphics v3.4.0
## Linear Regression ExamplePlot points and add linear regression model line:```rlinreg <- lm(dist ~ speed, cars)linreg_coeffs <- coef(linreg)lineq <- paste(’distance = ’, linreg_coeffs[2], ’ * speed + ’, linreg_coeffs[1])plot(cars, main = ’Car distance by speed’, sub = lineq, xlab = ’speed’, ylab = ’distance’, pch = 19)abline(linreg, col = ’blue’)``` Plot Examples Sentencesrichie@datacamp.com at Jan 17, 2017 graphics v3.3.2
Pass a numeric vector to the `x` and `y` arguments, and you get a scatter plot. The `main` argument provides a [`title()`](https://www.rdocumentation.org/packages/graphics/topics/title). ```{r} plot(1:100, (1:100) ^ 2, main = ’plot(1:100, (1:100) ^ 2)’) ``` If you only pass a single argument, it is interpreted as the `y` argument, and the `x` argument is the sequence from 1 to the length of `y`. ```{r} plot((1:100) ^ 2, main = ’plot((1:100) ^ 2)’) ``` `cex` (’character expansion’) controls the size of points. `lwd` controls the line width. `pch` controls the shape of points - you get 25 symbols to choose from, as well as alphabetic characters. `col` controls the color of the points. When `pch` is `21:25`, the points also get a background color which is set using `bg`. [`points()`](https://www.rdocumentation.org/packages/graphics/topics/points) for more on how to change the appearance of points in a scatter plot. ```{r} plot( 1:25, cex = 3, lwd = 3, pch = 1:25, col = rainbow(25), bg = c(rep(NA, 20), terrain.colors(5)), main = ’plot(1:25, pch = 1:25, ..)’ ) ``` If you specify `type = ’l’`, you get a line plot instead. See [`plot.default()`](https://www.rdocumentation.org/packages/graphics/topics/plot.default) for a demonstration of all the possible values for type. ```{r} plot( (1:100) ^ 2, type = ’l’, main = ’plot((1:100) ^ 2, type = ’l’)’ ) ``` `lty` controls the line type. `col` and `lwd` work in the same way as with points. [`lines()`](https://www.rdocumentation.org/packages/graphics/topics/lines) for more on how to change the appearance of lines in a line plot. ```{r} plot( (1:100) ^ 2, type = ’l’, lty = ’dashed’, lwd = 3, col = ’chocolate’, main = ’plot((1:100) ^ 2, type = ’l’, lty = ’dashed’, ..)’ ) ``` It is best practise to keep your `x` and `y` variables together, rather than as separate variables. ```{r} with( cars, plot(speed, dist, main = ’with(cars, plot(speed, dist))’) ) ``` The formula interface, similar to modeling functions like [`lm()`](https://www.rdocumentation.org/packages/stats/topics/lm), makes this convenient. See [`plot.formula()`](https://www.rdocumentation.org/packages/graphics/topics/plot.formula) for more information. ```{r} plot( dist ~ speed, data = cars, main = ’plot(dist ~ speed, data = cars)’ ) ``` If you pass a two column data frame or matrix then the columns are treated as the x and y values. So in this case, you can simply do: ```{r} plot(cars, main = ’plot(cars)’) ``` The [`lines()`](https://www.rdocumentation.org/packages/graphics/topics/lines), [`points()`](https://www.rdocumentation.org/packages/graphics/topics/points) and [`title()`](https://www.rdocumentation.org/packages/graphics/topics/title) functions add lines, points and titles respectively to an existing plot. ```{r} plot(cars) lines(lowess(cars)) title(’plot(cars); lines(lowess(cars))’) ``` If the `x` variable is categorical, `plot()` knows to draw a box plot instead of a scatter plot. See [`boxplot()`](https://www.rdocumentation.org/packages/graphics/topics/boxplot) for more information on drawing those. ```{r} with( sleep, plot(group, extra, main = ’with(sleep, plot(group, extra))’) ) ``` Again, the formula interface can be useful here. ```{r} plot(extra ~ group, sleep, main = ’plot(extra ~ group, sleep)’) ``` Axis limits can be set using `xlim` and `ylim`. ```{r} plot( (1:100) ^ 2, xlim = c(-100, 200), ylim = c(2500, 7500), main = ’plot((1:100) ^ 2, xlim = c(-100, 200), ylim = c(2500, 7500))’ ) ``` You can set log-scale axes using the `log` argument. ```{r} plot( exp(1:10), 2 ^ (1:10), main = ’plot(exp(1:10), 2 ^ (1:10))’ ) plot( exp(1:10), 2 ^ (1:10), log = ’x’, main = ’plot(exp(1:10), 2 ^ (1:10), log = ’x’)’ ) plot( exp(1:10), 2 ^ (1:10), log = ’y’, main = ’plot(exp(1:10), 2 ^ (1:10), log = ’y’)’ ) plot( exp(1:10), 2 ^ (1:10), log = ’xy’, main = ’plot(exp(1:10), 2 ^ (1:10), log = ’xy’)’ ) ``` If you pass a table of counts for a vector, `plot()` draws a simple histogram-like plot. See [`hist()`](https://www.rdocumentation.org/packages/graphics/topics/hist) for a more comprehensive histogram function. ```{r} plot( table(rpois(100, 5)), main = ’plot(table(rpois(100, 5)))’ ) ``` For multi-dimensional tables, you get a mosaic plot. See [`mosaicplot()`](https://www.rdocumentation.org/packages/graphics/topics/mosaicplot) for more information. ```{r} plot( table(X = rpois(100, 5), Y = rbinom(100, 10, 0.75)), main = ’plot(table(X = rpois(100, 5), Y = rbinom(100, 10, 0.75)))’ ) ``` You can also pass functions to plot. See [`curve()`](https://www.rdocumentation.org/packages/graphics/topics/curve) for more examples. ```{r} plot( sin, from = -pi, to = 2 * pi, main = ’plot(sin, from = -pi, to = 2 * pi)’ ) ``` Use the axis function to give fine control over how the axes are created. See [`axis()`](https://www.rdocumentation.org/packages/graphics/topics/axis) and [`Axis()`](https://www.rdocumentation.org/packages/graphics/topics/Axis) for more info. ```{r} plot( sin, from = -pi, to = 2 * pi, axes = FALSE, main = ’plot(sin, axes = FALSE, ..); axis(1, ..); axis(2)’ ) axis( 1, # bottom axis pi * (-1:2), c(expression(-pi), 0, expression(pi), expression(2 * pi)) ) axis(2) # left axis ``` Further graphical parameters can be set using [`par()`](https://www.rdocumentation.org/packages/graphics/topics/par). See [`with_par()`](https://www.rdocumentation.org/packages/withr/topics/with_par) for the best way to use `par()`. ```{r} old_pars <- par(las = 1) # horizontal axis labels plot((1:100) ^ 2, main = ’par(las = 1); plot((1:100) ^ 2)’) par(old_pars) # reset parameters ``` Plot Examples In English API documentation
Register here: http://gg.gg/wz5mw
https://diarynote.indered.space
Again, not sure why nplot’s site is not currently working but it is a somewhat popular plotting API that I’ve used in the past. I post it for your information and in case of the likely event nplot will be back up soon.
*Download source code and copy the nplot.dll file from the bin directory to some location. Now add a reference to this nplot.dll file. If you would like to use NPlot with the Windows.Forms designer within Visual Studio, you should add the NPlot.Windows.PlotSurface2D control to the Toolbox. To do this, right click the toolbox panel.
*Examples of hplot (upper) and nplot (lower). Note that if the second argument, the parallel vector of labels, is omitted, then nplot assumed all tokens to belong to a single class, and one normal curve for all tokens is plotted.
*In this lesson, we will explore the functions and examples of a line plot. Also in this lesson, we will learn to create a line plot, create questions, and interpret data from a line plot.
*C# (CSharp) NPlot - 19 examples found. These are the top rated real world C# (CSharp) examples of NPlot extracted from open source projects. You can rate examples to help us improve the quality of examples.Generic X-Y Plotting
Generic function for plotting of R objects. For more details about the graphical parameter arguments, see par.
For simple scatter plots, plot.default will be used. However, there are plot methods for many R objects, including functions, data.frames, density objects, etc. Use methods(plot) and the documentation for these.KeywordshplotUsageArgumentsx
the coordinates of points in the plot. Alternatively, a single plotting structure, function or any R object with a plot method can be provided.y
the y coordinates of points in the plot, optional if x is an appropriate structure.…
Arguments to be passed to methods, such as graphical parameters (see par). Many methods will accept the following arguments:type
what type of plot should be drawn. Possible types are
*
’p’ for points,
*
’l’ for lines,
*
’b’ for both,
*
’c’ for the lines part alone of ’b’,
*
’o’ for both ‘overplotted’,
*
’h’ for ‘histogram’ like (or ‘high-density’) vertical lines,
*
’s’ for stair steps,
*
’S’ for other steps, see ‘Details’ below,
*
’n’ for no plotting. All other types give a warning or an error; using, e.g., type = ’punkte’ being equivalent to type = ’p’ for S compatibility. Note that some methods, e.g.plot.factor, do not accept this.main
an overall title for the plot: see title.sub
a sub title for the plot: see title.xlabPlot Examples For Middle School
a title for the x axis: see title.ylab
Zeus casino free slot play. a title for the y axis: see title.asp
the (y/x) aspect ratio, see plot.window.Details
The two step types differ in their x-y preference: Going from ((x1,y1)) to ((x2,y2)) with (x1 < x2), type = ’s’ moves first horizontal, then vertical, whereas type = ’S’ moves the other way around.See Also
plot.default, plot.formula and other methods; points, lines, par. For thousands of points, consider using smoothScatter() instead of plot().
For X-Y-Z plotting see contour, persp and image.Aliases
*plotExampleslibrary(graphics)# NOT RUN {require(stats) # for lowess, rpois, rnormplot(cars)lines(lowess(cars))plot(sin, -pi, 2*pi) # see ?plot.function## Discrete Distribution Plot:plot(table(rpois(100, 5)), type = ’h’, col = ’red’, lwd = 10, main = ’rpois(100, lambda = 5)’)## Simple quantiles/ECDF, see ecdf() {library(stats)} for a better one:plot(x <- sort(rnorm(47)), type = ’s’, main = ’plot(x, type = ’s’)’)points(x, cex = .5, col = ’dark red’)# } Documentation reproduced from package graphics, version 3.6.2, License: Part of R 3.6.2 Community examplesPlot Examples Comic Striprdocumentationorg@mennovr.nl at Nov 17, 2020 graphics v3.6.2
```r # Plot with multiple lines in different color: plot(sin,-pi, 4*pi, col = ’red’) plot(cos,-pi, 4*pi, col = ’blue’, add = TRUE) ``` rdocumentationorg@mennovr.nl at Nov 17, 2020 graphics v3.6.2
```r ## Plot with multiple lines in different color: plot(sin,-pi, 4*pi, col = ’red’) plot(cos,-pi, 4*pi, col = ’blue’, add = TRUE) ``` Plot Examples With A Book
plot(basedata1$iq, basedata$read_ab, main=’Diagrama de Dispersión’, xlab = ’read_ab’, ylab = ’iq’) ltseiden@gmail.com at Dec 13, 2020 graphics v3.4.0
## Linear Regression ExamplePlot points and add linear regression model line:```rlinreg <- lm(dist ~ speed, cars)linreg_coeffs <- coef(linreg)lineq <- paste(’distance = ’, linreg_coeffs[2], ’ * speed + ’, linreg_coeffs[1])plot(cars, main = ’Car distance by speed’, sub = lineq, xlab = ’speed’, ylab = ’distance’, pch = 19)abline(linreg, col = ’blue’)``` Plot Examples Sentencesrichie@datacamp.com at Jan 17, 2017 graphics v3.3.2
Pass a numeric vector to the `x` and `y` arguments, and you get a scatter plot. The `main` argument provides a [`title()`](https://www.rdocumentation.org/packages/graphics/topics/title). ```{r} plot(1:100, (1:100) ^ 2, main = ’plot(1:100, (1:100) ^ 2)’) ``` If you only pass a single argument, it is interpreted as the `y` argument, and the `x` argument is the sequence from 1 to the length of `y`. ```{r} plot((1:100) ^ 2, main = ’plot((1:100) ^ 2)’) ``` `cex` (’character expansion’) controls the size of points. `lwd` controls the line width. `pch` controls the shape of points - you get 25 symbols to choose from, as well as alphabetic characters. `col` controls the color of the points. When `pch` is `21:25`, the points also get a background color which is set using `bg`. [`points()`](https://www.rdocumentation.org/packages/graphics/topics/points) for more on how to change the appearance of points in a scatter plot. ```{r} plot( 1:25, cex = 3, lwd = 3, pch = 1:25, col = rainbow(25), bg = c(rep(NA, 20), terrain.colors(5)), main = ’plot(1:25, pch = 1:25, ..)’ ) ``` If you specify `type = ’l’`, you get a line plot instead. See [`plot.default()`](https://www.rdocumentation.org/packages/graphics/topics/plot.default) for a demonstration of all the possible values for type. ```{r} plot( (1:100) ^ 2, type = ’l’, main = ’plot((1:100) ^ 2, type = ’l’)’ ) ``` `lty` controls the line type. `col` and `lwd` work in the same way as with points. [`lines()`](https://www.rdocumentation.org/packages/graphics/topics/lines) for more on how to change the appearance of lines in a line plot. ```{r} plot( (1:100) ^ 2, type = ’l’, lty = ’dashed’, lwd = 3, col = ’chocolate’, main = ’plot((1:100) ^ 2, type = ’l’, lty = ’dashed’, ..)’ ) ``` It is best practise to keep your `x` and `y` variables together, rather than as separate variables. ```{r} with( cars, plot(speed, dist, main = ’with(cars, plot(speed, dist))’) ) ``` The formula interface, similar to modeling functions like [`lm()`](https://www.rdocumentation.org/packages/stats/topics/lm), makes this convenient. See [`plot.formula()`](https://www.rdocumentation.org/packages/graphics/topics/plot.formula) for more information. ```{r} plot( dist ~ speed, data = cars, main = ’plot(dist ~ speed, data = cars)’ ) ``` If you pass a two column data frame or matrix then the columns are treated as the x and y values. So in this case, you can simply do: ```{r} plot(cars, main = ’plot(cars)’) ``` The [`lines()`](https://www.rdocumentation.org/packages/graphics/topics/lines), [`points()`](https://www.rdocumentation.org/packages/graphics/topics/points) and [`title()`](https://www.rdocumentation.org/packages/graphics/topics/title) functions add lines, points and titles respectively to an existing plot. ```{r} plot(cars) lines(lowess(cars)) title(’plot(cars); lines(lowess(cars))’) ``` If the `x` variable is categorical, `plot()` knows to draw a box plot instead of a scatter plot. See [`boxplot()`](https://www.rdocumentation.org/packages/graphics/topics/boxplot) for more information on drawing those. ```{r} with( sleep, plot(group, extra, main = ’with(sleep, plot(group, extra))’) ) ``` Again, the formula interface can be useful here. ```{r} plot(extra ~ group, sleep, main = ’plot(extra ~ group, sleep)’) ``` Axis limits can be set using `xlim` and `ylim`. ```{r} plot( (1:100) ^ 2, xlim = c(-100, 200), ylim = c(2500, 7500), main = ’plot((1:100) ^ 2, xlim = c(-100, 200), ylim = c(2500, 7500))’ ) ``` You can set log-scale axes using the `log` argument. ```{r} plot( exp(1:10), 2 ^ (1:10), main = ’plot(exp(1:10), 2 ^ (1:10))’ ) plot( exp(1:10), 2 ^ (1:10), log = ’x’, main = ’plot(exp(1:10), 2 ^ (1:10), log = ’x’)’ ) plot( exp(1:10), 2 ^ (1:10), log = ’y’, main = ’plot(exp(1:10), 2 ^ (1:10), log = ’y’)’ ) plot( exp(1:10), 2 ^ (1:10), log = ’xy’, main = ’plot(exp(1:10), 2 ^ (1:10), log = ’xy’)’ ) ``` If you pass a table of counts for a vector, `plot()` draws a simple histogram-like plot. See [`hist()`](https://www.rdocumentation.org/packages/graphics/topics/hist) for a more comprehensive histogram function. ```{r} plot( table(rpois(100, 5)), main = ’plot(table(rpois(100, 5)))’ ) ``` For multi-dimensional tables, you get a mosaic plot. See [`mosaicplot()`](https://www.rdocumentation.org/packages/graphics/topics/mosaicplot) for more information. ```{r} plot( table(X = rpois(100, 5), Y = rbinom(100, 10, 0.75)), main = ’plot(table(X = rpois(100, 5), Y = rbinom(100, 10, 0.75)))’ ) ``` You can also pass functions to plot. See [`curve()`](https://www.rdocumentation.org/packages/graphics/topics/curve) for more examples. ```{r} plot( sin, from = -pi, to = 2 * pi, main = ’plot(sin, from = -pi, to = 2 * pi)’ ) ``` Use the axis function to give fine control over how the axes are created. See [`axis()`](https://www.rdocumentation.org/packages/graphics/topics/axis) and [`Axis()`](https://www.rdocumentation.org/packages/graphics/topics/Axis) for more info. ```{r} plot( sin, from = -pi, to = 2 * pi, axes = FALSE, main = ’plot(sin, axes = FALSE, ..); axis(1, ..); axis(2)’ ) axis( 1, # bottom axis pi * (-1:2), c(expression(-pi), 0, expression(pi), expression(2 * pi)) ) axis(2) # left axis ``` Further graphical parameters can be set using [`par()`](https://www.rdocumentation.org/packages/graphics/topics/par). See [`with_par()`](https://www.rdocumentation.org/packages/withr/topics/with_par) for the best way to use `par()`. ```{r} old_pars <- par(las = 1) # horizontal axis labels plot((1:100) ^ 2, main = ’par(las = 1); plot((1:100) ^ 2)’) par(old_pars) # reset parameters ``` Plot Examples In English API documentation
Register here: http://gg.gg/wz5mw
https://diarynote.indered.space
コメント