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DisplayFunction -> Identity, Axes -> True,
AxesLabel -> {None, None, None}, BoxRatios -> {1, 1, 0.4},
DisplayFunction :> Identity, FaceGridsStyle -> Automatic,
Method -> {"DefaultBoundaryStyle" -> Directive[
GrayLevel[0.3]], "RotationControl" -> "Globe"},
PlotRange -> {{0, 1}, {0, 1}, {-1.0467337245970607`, 4.876206797316548}},
PlotRangePadding -> {
Scaled[0.02],
Scaled[0.02],
Scaled[0.02]}, Ticks -> {Automatic, Automatic, Automatic}}],FormBox[
FormBox[
TemplateBox[{"\"Original Function\"", "\"Predictor Function\""},
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StyleBox[
StyleBox[
PaneBox[
TagBox[
GridBox[{{
TagBox[
GridBox[{{
GraphicsBox[
InsetBox[
Graphics3DBox[
SphereBox[{0, 0, 0}], ViewPoint -> {0, 0,
DirectedInfinity[1]},
PlotRange -> {{-0.7, 0.7}, {-0.7, 0.7}, All},
ImagePadding -> 0, {DefaultBaseStyle -> {"Graphics3D",
Directive[
EdgeForm[
Directive[
Opacity[0.3],
GrayLevel[0]]],
PointSize[0.5],
AbsoluteThickness[1.6],
Specularity[
GrayLevel[1], 3],
RGBColor[0.880722, 0.611041, 0.142051],
Lighting -> {{"Ambient",
RGBColor[
0.30100577, 0.22414668499999998`, 0.090484535]}, {
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RGBColor[
0.2642166, 0.18331229999999998`, 0.04261530000000001],
ImageScaled[{0, 2, 2}]}, {"Directional",
RGBColor[
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ImageScaled[{2, 2, 2}]}, {"Directional",
RGBColor[
0.2642166, 0.18331229999999998`, 0.04261530000000001],
ImageScaled[{2, 0, 2}]}}]}, Lighting -> {{"Ambient",
RGBColor[
0.30100577, 0.22414668499999998`, 0.090484535]}, {
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RGBColor[
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ImageScaled[{0, 2, 2}]}, {"Directional",
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ImageScaled[{2, 2, 2}]}, {"Directional",
RGBColor[
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ImageScaled[{2, 0, 2}]}}, ImageSize -> {12, 12}, BoxStyle ->
Directive[
Opacity[0.3],
GrayLevel[0]]}], Center, Center,
ImageScaled[{1, 1}]], AspectRatio -> Full,
ImageSize -> {12, 12}, PlotRangePadding -> None,
ImagePadding -> Automatic,
BaselinePosition -> (Scaled[0.16666666666666669`] ->
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GraphicsBox[
InsetBox[
Graphics3DBox[
SphereBox[{0, 0, 0}], ViewPoint -> {0, 0,
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ImagePadding -> 0, {DefaultBaseStyle -> {"Graphics3D",
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EdgeForm[
Directive[
Opacity[0.3],
GrayLevel[0]]],
PointSize[0.5],
AbsoluteThickness[1.6],
Specularity[
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RGBColor[0.368417, 0.506779, 0.709798],
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RGBColor[
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GrayLevel[0]]}], Center, Center,
ImageScaled[{1, 1}]], AspectRatio -> Full,
ImageSize -> {12, 12}, PlotRangePadding -> None,
ImagePadding -> Automatic,
BaselinePosition -> (Scaled[0.16666666666666669`] ->
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GridBoxAlignment -> {
"Columns" -> {Center, Left}, "Rows" -> {{Baseline}}},
AutoDelete -> False,
GridBoxDividers -> {
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GridBoxItemSize -> {"Columns" -> {{All}}, "Rows" -> {{All}}},
GridBoxSpacings -> {
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GridBoxAlignment -> {"Columns" -> {{Left}}, "Rows" -> {{Top}}},
AutoDelete -> False,
GridBoxItemSize -> {
"Columns" -> {{Automatic}}, "Rows" -> {{Automatic}}},
GridBoxSpacings -> {"Columns" -> {{1}}, "Rows" -> {{0}}}],
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ImageMargins -> {{5, 5}, {5, 5}}, ImageSizeAction ->
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FontFamily -> "Arial"}, Background -> Automatic, StripOnInput ->
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InterpretationFunction :> (RowBox[{"SwatchLegend", "[",
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RowBox[{"{",
RowBox[{
RowBox[{"Directive", "[",
RowBox[{
RowBox[{"Specularity", "[",
RowBox[{
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ButtonBox[
TooltipBox[
GraphicsBox[{{
GrayLevel[0],
RectangleBox[{0, 0}]}, {
GrayLevel[0],
RectangleBox[{1, -1}]}, {
GrayLevel[1],
RectangleBox[{0, -1}, {2, 1}]}}, AspectRatio -> 1, Frame ->
True, FrameStyle -> GrayLevel[0.6666666666666666],
FrameTicks -> None, PlotRangePadding -> None, ImageSize ->
Dynamic[{Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}]], "GrayLevel[1]"],
Appearance -> None, BaseStyle -> {}, BaselinePosition ->
Baseline, DefaultBaseStyle -> {}, ButtonFunction :>
With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
GrayLevel[1];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["GrayLevelColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator ->
Automatic, Method -> "Preemptive"],
GrayLevel[1], Editable -> False, Selectable -> False],
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InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{{
GrayLevel[0],
RectangleBox[{0, 0}]}, {
GrayLevel[0],
RectangleBox[{1, -1}]}, {
RGBColor[0.880722, 0.611041, 0.142051],
RectangleBox[{0, -1}, {2, 1}]}}, AspectRatio -> 1, Frame ->
True, FrameStyle ->
RGBColor[
0.587148, 0.40736066666666665`, 0.09470066666666668],
FrameTicks -> None, PlotRangePadding -> None, ImageSize ->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}]],
"RGBColor[0.880722, 0.611041, 0.142051]"], Appearance ->
None, BaseStyle -> {}, BaselinePosition -> Baseline,
DefaultBaseStyle -> {}, ButtonFunction :>
With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[0.880722, 0.611041, 0.142051];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator ->
Automatic, Method -> "Preemptive"],
RGBColor[0.880722, 0.611041, 0.142051], Editable -> False,
Selectable -> False], ",",
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RowBox[{"\"Ambient\"", ",",
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GrayLevel[0],
RectangleBox[{0, 0}]}, {
GrayLevel[0],
RectangleBox[{1, -1}]}, {
RGBColor[0.30100577, 0.22414668499999998`, 0.090484535],
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True, FrameStyle ->
RGBColor[0.20067051333333336`, 0.14943112333333333`,
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PlotRangePadding -> None, ImageSize ->
Dynamic[{Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}]],
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Appearance -> None, BaseStyle -> {}, BaselinePosition ->
Baseline, DefaultBaseStyle -> {}, ButtonFunction :>
With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[0.30100577, 0.22414668499999998`, 0.090484535];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator ->
Automatic, Method -> "Preemptive"],
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RowBox[{"{",
RowBox[{"\"Directional\"", ",",
InterpretationBox[
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GrayLevel[0],
RectangleBox[{0, 0}]}, {
GrayLevel[0],
RectangleBox[{1, -1}]}, {
RGBColor[
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RectangleBox[{0, -1}, {2, 1}]}}, AspectRatio -> 1, Frame ->
True, FrameStyle ->
RGBColor[0.17614440000000003`, 0.12220819999999999`,
0.028410200000000007`], FrameTicks -> None,
PlotRangePadding -> None, ImageSize ->
Dynamic[{Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}]],
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0.04261530000000001]"], Appearance -> None, BaseStyle -> {}, BaselinePosition ->
Baseline, DefaultBaseStyle -> {}, ButtonFunction :>
With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[0.2642166, 0.18331229999999998`,
0.04261530000000001];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
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