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ListLogLinearPlot [{y1,y2,}]

makes a log-linear plot of the yi, assumed to correspond to x coordinates 1, 2, .

ListLogLinearPlot [{{x1,y1},{x2,y2},}]

makes a log-linear plot of the specified list of x and y values.

ListLogLinearPlot [{list1,list2,}]

plots several lists of values.

ListLogLinearPlot [{,w[datai,],}]

plots datai with features defined by the symbolic wrapper w.

Details and Options
Details and Options Details and Options
Examples  
Basic Examples  
Scope  
General Data  
Special Data  
Tabular Data  
Data Wrappers  
Labeling and Legending  
Presentation  
Options  
ClippingStyle  
ColorFunction  
ColorFunctionScaling  
Show More Show More
DataRange  
Filling  
FillingStyle  
InterpolationOrder  
IntervalMarkers  
IntervalMarkersStyle  
Joined  
LabelingFunction  
LabelingSize  
LabelingTarget  
MaxPlotPoints  
Mesh  
MeshFunctions  
MeshShading  
MeshStyle  
PlotFit  
PlotFitElements  
PlotHighlighting  
PlotInteractivity  
PlotLabel  
PlotLabels  
PlotLayout  
PlotLegends  
PlotMarkers  
PlotRange  
PlotStyle  
PlotTheme  
ScalingFunctions  
See Also
Tech Notes
Related Guides
History
Cite this Page

ListLogLinearPlot [{y1,y2,}]

makes a log-linear plot of the yi, assumed to correspond to x coordinates 1, 2, .

ListLogLinearPlot [{{x1,y1},{x2,y2},}]

makes a log-linear plot of the specified list of x and y values.

ListLogLinearPlot [{list1,list2,}]

plots several lists of values.

ListLogLinearPlot [{,w[datai,],}]

plots datai with features defined by the symbolic wrapper w.

Details and Options

Examples

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Basic Examples  (4)

Make a plot with a logarithmic scale:

Join the points with a line:

Show multiple sets of data with a legend:

Label each curve:

Generate filled plots:

Scope  (54)

General Data  (9)

For regular data consisting of values, the data range is taken to be integer values:

Provide an explicit data range by using DataRange :

Plot multiple sets of regular data:

For irregular data consisting of , value pairs, the data range is inferred from data:

Plot multiple sets of irregular data:

Plot multiple sets of data, regular or irregular, using DataRange to map them to the same range:

Ranges where the data is nonpositive are excluded:

Use MaxPlotPoints to limit the number of points used:

PlotRange is selected automatically:

Use PlotRange to focus on areas of interest:

Special Data  (9)

Use Quantity to include units with the data:

Include different units for the and coordinates:

Plot data in a QuantityArray :

Specify the units used with TargetUnits :

Plot data with uncertainty:

Use intervals:

Specify strings to use as labels:

Specify a location for labels:

Numeric values in an Association are used as the coordinates:

Numeric keys and values in an Association are used as the and coordinates:

Plot TimeSeries directly:

Plot data in a SparseArray :

The weights in WeightedData are ignored:

Tabular Data  (1)

Get tabular data for countries around the world:

Plot the average internet speed of each country against its population:

Pivot the data so the download rates are split per continent:

Compare the data for countries in North and South America:

Data Wrappers  (6)

Use wrappers on individual data, datasets, or collections of datasets:

Wrappers can be nested:

Use the value of each point as a tooltip:

Use a specific label for all the points:

Labels points with automatically positioned text:

Use PopupWindow to provide additional drilldown information:

Button can be used to trigger any action:

Labeling and Legending  (16)

Label points with automatically positioned text:

Place the labels relative to the points:

Label data with Labeled :

Label data with PlotLabels :

Place the label near the points at an value:

Use a scaled position:

Specify the text position relative to the point:

Label data automatically with Callout :

Place a label with a specific location:

Specify label names with LabelingFunction :

Specify the maximum size of labels:

Use the full label:

For dense sets of points, some labels may be turned into tooltips by default:

Increasing the size of the plot will show more labels:

Include legends for each curve:

Use Legended to provide a legend for a specific dataset:

Use Placed to change the legend location:

Use association keys as labels:

Plots usually have interactive callouts showing the coordinates when you mouse over them:

Including specific wrappers or interactions, such as tooltips, turns off the interactive features:

Choose from multiple interactive highlighting effects:

Use Highlighted to emphasize specific points in a plot:

Highlight multiple points:

Presentation  (13)

Multiple datasets are automatically colored to be distinct:

Provide explicit styling to different sets:

Include legends for each curve:

Add labels:

Provide an interactive Tooltip for the data:

Create filled plots:

Use shapes to distinguish different datasets:

Use labels to distinguish different datasets:

Use Joined to connect datasets with lines:

Use InterpolationOrder to smooth joined data:

Use a theme with detailed frame ticks and grid lines:

Use a theme with a dark background and vibrant colors:

Plot the data in a stacked layout:

Plot the data as percentiles of the total of the values:

Use ScalingFunctions to scale the y axis on the plot:

Options  (138)

ClippingStyle  (6)

ClippingStyle only applies to Joined datasets:

Omit clipped regions of the plot:

Show clipped regions like the rest of the curve:

Show clipped regions with red lines:

Show clipped regions as red at the bottom and thick at the top:

Show clipped regions as red and thick:

ColorFunction  (6)

ColorFunction only applies to Joined datasets:

Color by scaled and coordinates:

Color with a named color scheme:

Fill with the color used for the curve:

ColorFunction has higher priority than PlotStyle for coloring the curve:

Use Automatic in MeshShading to use ColorFunction :

ColorFunctionScaling  (3)

ColorFunctionScaling only applies to Joined datasets:

Use no argument scaling on the left and automatic scaling on the right:

Scaling is done on a linear scale in the original coordinates:

Use a color function that is red at powers of 10:

DataRange  (5)

Lists of height values are displayed against the number of elements:

Rescale to the sampling space:

Each dataset is scaled to the same domain:

Pairs are interpreted as , coordinates:

Specifying DataRange in this case has no effect, since values are part of the data:

Force interpretation as multiple datasets:

Filling  (8)

Use symbolic or explicit values for "stem" filling:

Fill between corresponding points in two datasets:

Fill between datasets using a particular style:

Fill between datasets 1 and 2; use red when 1 is less than 2 and blue otherwise:

Fill to the axis for irregularly sampled data:

Use several irregular datasets, filling between them:

Joined datasets fill with solid areas:

The type of filling depends on whether the first set is joined:

FillingStyle  (4)

Fill with blue "stems":

Fill with dashed magenta "stems":

Fill with red below and blue above:

Filling is solid when Joined->True :

InterpolationOrder  (5)

Lines created with Joined can be interpolated:

By default, linear interpolation is used:

Use zero-order or piecewise-constant interpolation:

Use third-order spline interpolation:

Interpolation order 0 to 5:

IntervalMarkers  (3)

By default, uncertainties are capped:

Use bars to denote uncertainties without caps:

Use bands to represent uncertainties:

IntervalMarkersStyle  (2)

Uncertainties automatically inherit the plot style:

Specify the style for uncertainties:

Joined  (4)

Join the dataset with a line:

Join the first dataset with a line but use points for the second dataset:

Join the dataset with a line and show the original points:

The type of filling depends on whether the set is joined:

LabelingFunction  (6)

By default, points are automatically labeled with strings:

Use LabelingFunction->None to suppress the labels:

Put the labels above the points:

Put them in a tooltip:

Use callouts to label the points:

Label the points with their values:

Label the points with their indices:

LabelingSize  (4)

Textual labels are shown at their actual sizes:

Image labels are automatically resized:

Specify a maximum size for textual labels:

Specify a maximum size for image labels:

Show image labels at their natural sizes:

LabelingTarget  (7)

Labels are automatically placed to maximize readability:

Show all labels:

Use a denser layout for the labels:

Show the quarter of the labels that are easiest to read:

Only allow labels that are orthogonal to the points:

Only allow labels that are diagonal to the points:

Restrict labels to be above or to the right of the points:

Allow labels to obscure other points:

Allow labels to be clipped by the edges of the plot:

MaxPlotPoints  (3)

All points are included by default:

Uniformly spaced data is downsampled:

Nonuniform data is topologically subsampled to preserve features:

Mesh  (6)

Mesh only applies to Joined datasets:

The initial and final sampling meshes are typically the same:

Interpolated data may introduce points:

Use 20 mesh levels evenly spaced in the direction:

Use an explicit list of values for the mesh in the direction:

Use explicit styles at specific points:

MeshFunctions  (2)

MeshFunctions only applies to Joined datasets:

Use a mesh evenly spaced in the direction and unscaled in the direction:

MeshShading  (7)

MeshShading only applies to Joined datasets:

Alternate red and blue segments of equal width in the direction:

Use None to remove segments:

MeshShading can be used with PlotStyle :

MeshShading has higher priority than PlotStyle for styling the curve:

Use PlotStyle for some segments by setting MeshShading to Automatic :

MeshShading can be used with ColorFunction and has higher priority:

MeshStyle  (5)

MeshStyle only applies to Joined datasets:

Color the mesh the same color as the plot:

Use a red mesh in the direction:

Use a red mesh in the direction and a blue mesh in the direction:

Use big red mesh points in the direction:

PlotFit  (4)

Automatically fit a model to the data:

Fit a straight line to the data:

Fit a quadratic curve to the data:

Use KernelModelFit to approximate the data:

PlotFitElements  (3)

By default, the fitted model is shown with the data points:

Plot confidence bands for the data, with a default confidence level of 0.95:

Use a confidence level of 0.5 for the bands:

Show residual lines from the data points to the fitted curve:

Combine the original points with gray residual lines:

PlotHighlighting  (9)

Plots have interactive coordinate callouts with the default setting PlotHighlighting Automatic :

Use PlotHighlighting None to disable the highlighting for the entire plot:

Use Highlighted [,None ] to disable highlighting for a single set:

Move the mouse over a set of points to highlight it using arbitrary graphics directives:

Move the mouse over the points to highlight them with balls and labels:

Move the mouse over the curve to highlight it with a label and droplines to the axes:

Use a ball and label to highlight a specific point in the plot:

Move the mouse over the plot to highlight it with a slice showing values corresponding to the position:

Highlight a particular set of points at a fixed value:

Move the mouse over the plot to highlight it with a slice showing values corresponding to the position:

Use a component that shows the points on the plot closest to the position of the mouse cursor:

Specify the style for the points:

Use a component that shows the coordinates on the points closest to the mouse cursor:

Use Callout options to change the appearance of the label:

Combine components to create a custom effect:

PlotInteractivity  (3)

Plots have interactive highlighting by default:

Turn off all the interactive elements:

Allow provided interactive elements and disable automatic ones:

PlotLabel  (1)

Add an overall label to the plot:

PlotLabels  (5)

Specify text to label sets of points:

Place the labels above the points:

Use callouts to identify the points:

Use the keys from an Association as labels:

Use None to not add a label:

PlotLayout  (1)

By default, curves are overlaid on each other:

Plot the data in a stacked layout:

Plot the data as percentiles of the total of the values:

Place each curve in a separate panel using shared axes:

Use rows instead of columns:

PlotLegends  (6)

Generate a legend using labels:

Generate a legend using placeholders:

Legends use the same styles as the plot:

Use Placed to specify the legend placement:

Place the legend inside the plot:

Use PointLegend to change the legend appearance:

PlotMarkers  (8)

ListLogPlot normally uses distinct colors to distinguish different sets of data:

Automatically use colors and shapes to distinguish sets of data:

Use shapes only:

Change the size of the default plot markers:

Use arbitrary text for plot markers:

Use explicit graphics for plot markers:

Use the same symbol for all the sets of data:

Explicitly use a symbol and size:

PlotRange  (2)

PlotRange is automatically calculated:

Show the whole dataset:

PlotStyle  (7)

Use different style directives:

By default, different styles are chosen for multiple datasets:

Explicitly specify the style for different datasets:

PlotStyle applies to both lines and points:

PlotStyle can be combined with ColorFunction and has lower priority:

PlotStyle can be combined with MeshShading and has lower priority:

MeshStyle by default uses the same style as PlotStyle :

PlotTheme  (1)

Use a theme with simple ticks and plot markers in a bright color scheme:

Change the plot markers:

ScalingFunctions  (2)

By default ListLogLinearPlot uses a Log scale on the x axis and natural scale for y:

Use a scale whose values increase from top to bottom:

Reverse both sets of axes:

Tech Notes

Wolfram Research (2007), ListLogLinearPlot, Wolfram Language function, https://reference.wolfram.com/language/ref/ListLogLinearPlot.html (updated 2025).

Text

Wolfram Research (2007), ListLogLinearPlot, Wolfram Language function, https://reference.wolfram.com/language/ref/ListLogLinearPlot.html (updated 2025).

CMS

Wolfram Language. 2007. "ListLogLinearPlot." Wolfram Language & System Documentation Center. Wolfram Research. Last Modified 2025. https://reference.wolfram.com/language/ref/ListLogLinearPlot.html.

APA

Wolfram Language. (2007). ListLogLinearPlot. Wolfram Language & System Documentation Center. Retrieved from https://reference.wolfram.com/language/ref/ListLogLinearPlot.html

BibTeX

@misc{reference.wolfram_2025_listloglinearplot, author="Wolfram Research", title="{ListLogLinearPlot}", year="2025", howpublished="\url{https://reference.wolfram.com/language/ref/ListLogLinearPlot.html}", note=[Accessed: 24-November-2025]}

BibLaTeX

@online{reference.wolfram_2025_listloglinearplot, organization={Wolfram Research}, title={ListLogLinearPlot}, year={2025}, url={https://reference.wolfram.com/language/ref/ListLogLinearPlot.html}, note=[Accessed: 24-November-2025]}

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