all metrics?

master
parent 597210c3a0
commit 923adaebed
  1. BIN
      __pycache__/run.cpython-37.pyc
  2. 173
      frontend/src/components/FeatureSpace2.vue
  3. 67
      run.py

Binary file not shown.

@ -1,6 +1,5 @@
<template>
<div class="column">
<svg class="chart"></svg>
<div id="FeatureGraph2"></div>
</div>
</template>
@ -51,13 +50,12 @@ export default {
},
graphVizualization () {
var svg = d3.select("#FeatureGraph2");
svg.selectAll("*").remove();
var width = 600;
var height = 500;
var chartWidth = 600;
var chartHeight = 60;
var margin = {left: 10, right: 10, top: 10, bottom: 40};
var numTicks = 200;
var selectedParams;
@ -65,36 +63,10 @@ export default {
var dispatch = d3.dispatch('layoutend');
var svg = d3.select("#FeatureGraph2").append("svg")
svg = d3.select("#FeatureGraph2").append("svg")
.attr("width", width)
.attr("height", height);
var chartSvg = d3.select('svg.chart')
.attr('width', chartWidth)
.attr('height', chartHeight)
.append('g')
.attr('transform', 'translate(' + margin.left + ',' + margin.top + ')');
chartWidth = chartWidth - margin.left - margin.right;
chartHeight = chartHeight - margin.top - margin.bottom;
var x = d3.scaleLinear()
.domain([0, 1])
.range([0, chartWidth]);
chartSvg.append('g')
.attr('transform', 'translate(0,' + chartHeight + ')')
.call(d3.axisBottom(x).ticks(7))
.append("text")
.attr("fill", "#000")
.attr('transform', 'translate(' + chartWidth/2 + ',' + 0 + ')')
.attr("y", chartHeight + 10)
.attr("dy", "0.71em")
.attr("text-anchor", "middle")
.text("Average readability score");
var readabilityCircles = chartSvg.append('g').selectAll('circle');
var graph = this.jsonData
var link = svg.append('g')
@ -110,21 +82,6 @@ export default {
.data(graph.nodes)
.enter().append('g')
var circles = node.append("circle")
.attr("r", 5);
console.log(node)
var labels = node.append("text")
.text(function(d) {
console.log(d)
return d.name;
})
.attr('x', 6)
.attr('y', 3);
node.append('title').text(function (d) { return d.name; });
var paramGroups = [
{name: 'chargeStrength', values: [-30, -80]},
{name: 'linkDistance', values: [30, -80]},
@ -152,33 +109,6 @@ export default {
.text(function (d) { return d + ' = ' + bestParams[d]; });
}
d3.select('.progress').text('Testing ' + (i + 1) + ' of ' + paramList.length + ' parameter settings');
// Plot the number line.
readabilityCircles = readabilityCircles
.data(readabilityCircles.data().concat(params))
.enter().append('circle')
.attr('cx', function (d) { return x(d.graphReadability); })
.attr('cy', 5)
.attr('r', 4)
.on('click', function (d) {
selectedParams = d;
readabilityCircles.classed('selected', false);
d3.select(this).classed('selected', true).raise();
bestSoFar
.data(d3.map(selectedParams).keys().filter(function (d) { return d !== 'positions' && d !== 'graphReadability'; }))
.text(function (d) { return d + ' = ' + selectedParams[d]; });
drawGraph();
})
.merge(readabilityCircles)
.classed('selected', function (d) { return d === selectedParams; });
readabilityCircles.filter(function (d) { return d === selectedParams; })
.raise();
drawGraph();
});
var i = 0;
@ -211,10 +141,77 @@ export default {
++i;
if (i >= paramList.length) {
var circles = node.append("circle")
.attr("r", 5);
var drag_handler = d3.drag()
.on("start", drag_start)
.on("drag", drag_drag)
.on("end", drag_end);
drag_handler(node);
var labels = node.append("text")
.text(function(d) {
return d.name;
})
.attr('x', 6)
.attr('y', 3);
node.append('title').text(function (d) { return d.name; });
//add zoom capabilities
var zoom_handler = d3.zoom()
.on("zoom", zoom_actions);
zoom_handler(svg);
drawGraph();
//Zoom functions
function zoom_actions(){
svg.attr("transform", d3.event.transform)
}
function drag_start(d) {
console.log(d)
if (!d3.event.active) forceSim.alphaTarget(0.3).restart();
d.fx = d.x;
d.fy = d.y;
}
//make sure you can't drag the circle outside the box
function drag_drag(d) {
d.fx = d3.event.x;
d.fy = d3.event.y;
tickActions();
}
function drag_end(d) {
if (!d3.event.active) forceSim.alphaTarget(0);
d.fx = null;
d.fy = null;
}
stepper.stop();
}
});
function tickActions() {
link
.attr('x1', function (d) { return d.source.x; })
.attr('x2', function (d) { return d.target.x; })
.attr('y1', function (d) { return d.source.y; })
.attr('y2', function (d) { return d.target.y; });
node
.attr("transform", function(d) {
return "translate(" + d.x + "," + d.y + ")";
})
};
function drawGraph () {
graph.nodes.forEach(function (n, i) {
n.x = selectedParams.positions[i].x;
@ -244,16 +241,7 @@ export default {
n.y = n.y + height/2 - yMid;
});
link
.attr('x1', function (d) { return d.source.x; })
.attr('x2', function (d) { return d.target.x; })
.attr('y1', function (d) { return d.source.y; })
.attr('y2', function (d) { return d.target.y; });
node
.attr("transform", function(d) {
return "translate(" + d.x + "," + d.y + ")";
})
tickActions();
}
function generateParams (paramGroups, paramList, currParam) {
@ -295,7 +283,7 @@ export default {
},
reset () {
var svg = d3.select("#FeatureSpaceVisual");
var svg = d3.select("#FeatureGraph2");
svg.selectAll("*").remove();
},
},
@ -328,21 +316,6 @@ svg {
stroke-width: 1px;
}
.chart circle {
fill: #aaa;
fill-opacity: 0.1;
stroke: #aaa;
stroke-opacity: 0.4;
cursor: pointer;
}
.chart circle.selected {
fill: #d30000;
fill-opacity: 0.6;
stroke: #d30000;
stroke-opacity: 0.8;
}
.column {
float: left;
margin: 0 10px;

@ -19,6 +19,7 @@ from bayes_opt import BayesianOptimization
from sklearn.model_selection import cross_validate
from sklearn.model_selection import cross_val_predict
from sklearn.preprocessing import OneHotEncoder
from sklearn.feature_selection import mutual_info_classif
from statsmodels.stats.outliers_influence import variance_inflation_factor
from statsmodels.tools.tools import add_constant
@ -466,7 +467,7 @@ def executeModel():
svc_bayesopt = BayesianOptimization(estimator, params)
svc_bayesopt.maximize(init_points=5, n_iter=25, acq='ucb')
bestParams = svc_bayesopt.max['params']
estimator = SVC(C=bestParams.get('C'), gamma=bestParams.get('gamma'), probability=True)
estimator = SVC(C=bestParams.get('C'), gamma=bestParams.get('gamma'), probability=True, random_state=RANDOM_SEED)
estimator.fit(XData, yData)
yPredict = estimator.predict(XData)
yPredictProb = cross_val_predict(estimator, XData, yData, cv=crossValidation, method='predict_proba')
@ -540,8 +541,19 @@ def Seperation():
concatDF1 = pd.concat([DataRows1, hotEncoderDF1], axis=1)
corrMatrixComb1 = concatDF1.corr()
corrMatrixComb1 = corrMatrixComb1.iloc[:,-len(uniqueTarget1):]
X1 = add_constant(DataRows1.dropna())
VIF1 = pd.Series([variance_inflation_factor(X1.values, i)
for i in range(X1.shape[1])],
index=X1.columns)
if (len(targetRows1Arr) > 2):
MI1 = mutual_info_classif(DataRows1, targetRows1Arr)
MI1List = MI1.tolist()
else:
MI1List = []
else:
corrMatrixComb1 = pd.DataFrame()
VIF1 = pd.Series()
MI1List = []
if (len(targetRows2Arr) > 0):
onehotEncoder2 = OneHotEncoder(sparse=False)
@ -551,8 +563,19 @@ def Seperation():
concatDF2 = pd.concat([DataRows2, hotEncoderDF2], axis=1)
corrMatrixComb2 = concatDF2.corr()
corrMatrixComb2 = corrMatrixComb2.iloc[:,-len(uniqueTarget2):]
X2 = add_constant(DataRows2.dropna())
VIF2 = pd.Series([variance_inflation_factor(X2.values, i)
for i in range(X2.shape[1])],
index=X2.columns)
if (len(targetRows2Arr) > 2):
MI2 = mutual_info_classif(DataRows2, targetRows2Arr)
MI2List = MI2.tolist()
else:
MI2List = []
else:
corrMatrixComb2 = pd.DataFrame()
VIF2 = pd.Series()
MI2List = []
if (len(targetRows3Arr) > 0):
onehotEncoder3 = OneHotEncoder(sparse=False)
@ -562,8 +585,21 @@ def Seperation():
concatDF3 = pd.concat([DataRows3, hotEncoderDF3], axis=1)
corrMatrixComb3 = concatDF3.corr()
corrMatrixComb3 = corrMatrixComb3.iloc[:,-len(uniqueTarget3):]
X3 = add_constant(DataRows3.dropna())
VIF3 = pd.Series([variance_inflation_factor(X3.values, i)
for i in range(X3.shape[1])],
index=X3.columns)
if (len(targetRows3Arr) > 2):
print(DataRows3)
print(targetRows3Arr)
MI3 = mutual_info_classif(DataRows3, targetRows3Arr)
MI3List = MI3.tolist()
else:
MI3List = []
else:
corrMatrixComb3 = pd.DataFrame()
VIF3 = pd.Series()
MI3List = []
if (len(targetRows4Arr) > 0):
onehotEncoder4 = OneHotEncoder(sparse=False)
@ -573,16 +609,19 @@ def Seperation():
concatDF4 = pd.concat([DataRows4, hotEncoderDF4], axis=1)
corrMatrixComb4 = concatDF4.corr()
corrMatrixComb4 = corrMatrixComb4.iloc[:,-len(uniqueTarget4):]
X4 = add_constant(DataRows4.dropna())
VIF4 = pd.Series([variance_inflation_factor(X4.values, i)
for i in range(X4.shape[1])],
index=X4.columns)
if (len(targetRows4Arr) > 2):
MI4 = mutual_info_classif(DataRows4, targetRows4Arr)
MI4List = MI4.tolist()
else:
MI4List = []
else:
corrMatrixComb4 = pd.DataFrame()
X1 = add_constant(DataRows1.dropna())
VIF1 = pd.Series([variance_inflation_factor(X1.values, i)
for i in range(X1.shape[1])],
index=X1.columns)
print(VIF1)
VIF4 = pd.Series()
MI4List = []
targetRows1ArrDF = pd.DataFrame(targetRows1Arr)
targetRows2ArrDF = pd.DataFrame(targetRows2Arr)
@ -630,6 +669,16 @@ def Seperation():
packCorr.append(json.dumps(uniqueTarget3))
packCorr.append(json.dumps(uniqueTarget4))
packCorr.append(VIF1.to_json())
packCorr.append(VIF2.to_json())
packCorr.append(VIF3.to_json())
packCorr.append(VIF4.to_json())
packCorr.append(json.dumps(MI1List))
packCorr.append(json.dumps(MI2List))
packCorr.append(json.dumps(MI3List))
packCorr.append(json.dumps(MI4List))
return 'Everything Okay'
@app.route('/data/returnCorrelations', methods=["GET", "POST"])

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