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/**
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*
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*Basic confidence score should be computed and returned for each item in the results.
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* The score should range between 0-1, and take into consideration as many factors as possible.
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*
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* Some factors to consider:
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*
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* - number of results from ES
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* - score of item within the range of highest-lowest scores from ES (within the returned set)
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* - linguistic match of query
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* - detection (or specification) of query type. i.e. an address shouldn't match an admin address.
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*/
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var stats = require('stats-lite');
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var logger = require('pelias-logger').get('api');
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var RELATIVE_SCORES = true;
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function setup(peliasConfig) {
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RELATIVE_SCORES = peliasConfig.hasOwnProperty('relativeScores') ? peliasConfig.relativeScores : true;
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return computeScores;
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}
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function computeScores(req, res, next) {
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// do nothing if no result data set
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if (!req.results || !req.results.data || !req.results.meta) {
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return next();
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}
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// compute standard deviation and mean from all scores
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var scores = req.results.meta.scores;
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var stdev = computeStandardDeviation(scores);
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var mean = stats.mean(scores);
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// loop through data items and determine confidence scores
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req.results.data = req.results.data.map(computeConfidenceScore.bind(null, req, mean, stdev));
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next();
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}
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/**
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* Check all types of things to determine how confident we are that this result
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* is correct. Score is based on overall score distribution in the result set
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* as well as how closely the result matches the text parameters.
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*
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* @param {object} req
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* @param {number} mean
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* @param {number} stdev
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* @param {object} hit
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* @returns {object}
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*/
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function computeConfidenceScore(req, mean, stdev, hit) {
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var dealBreakers = checkForDealBreakers(req, hit);
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if (dealBreakers) {
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hit.confidence = 0.5;
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return hit;
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}
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var checkCount = 3;
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hit.confidence = 0;
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if (RELATIVE_SCORES) {
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checkCount += 2;
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hit.confidence += checkDistanceFromMean(hit._score, mean, stdev);
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hit.confidence += computeZScore(hit._score, mean, stdev);
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}
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hit.confidence += checkName(req.clean.text, req.clean.parsed_text, hit);
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hit.confidence += checkQueryType(req.clean.parsed_text, hit);
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hit.confidence += checkAddress(req.clean.parsed_text, hit);
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// TODO: look at categories and location
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hit.confidence /= checkCount;
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logger.debug('[confidence]:', hit.confidence, hit.name.default);
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return hit;
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}
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function checkForDealBreakers(req, hit) {
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if (!req.clean.parsed_text) {
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return false;
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}
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if (req.clean.parsed_text.state && req.clean.parsed_text.state !== hit.admin1_abbr) {
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logger.debug('[confidence][deal-breaker]: state !== admin1_abbr');
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return true;
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}
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if (req.clean.parsed_text.postalcode && req.clean.parsed_text.postalcode !== hit.zip) {
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logger.debug('[confidence][deal-breaker]: postalcode !== zip');
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return true;
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}
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}
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/**
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* Check how statistically significant the score of this result is
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* given mean and standard deviation
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*
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* @param {number} score
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* @param {number} mean
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* @param {number} stdev
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* @returns {number}
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*/
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function checkDistanceFromMean(score, mean, stdev) {
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return (score - mean) > stdev ? 1 : 0;
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}
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/**
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* Compare text string or name component of parsed_text against
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* default name in result
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*
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* @param {string} text
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* @param {object|undefined} parsed_text
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* @param {object} hit
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* @returns {number}
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*/
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function checkName(text, parsed_text, hit) {
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// parsed_text name should take precedence if available since it's the cleaner name property
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if (parsed_text && parsed_text.name && hit.name.default.toLowerCase() === parsed_text.name.toLowerCase()) {
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return 1;
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}
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// if no parsed_text check the text value as provided against result's default name
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if (hit.name.default.toLowerCase() === text.toLowerCase()) {
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return 1;
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}
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// if no matches detected, don't judge too harshly since it was a longshot anyway
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return 0.7;
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}
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/**
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* text being set indicates the query was for an address
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* check if house number was specified and found in result
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*
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* @param {object|undefined} text
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* @param {object} hit
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* @returns {number}
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*/
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function checkQueryType(text, hit) {
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if (!!text.number && (!hit.address || (hit.address && !hit.address.number))) {
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return 0;
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}
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return 1;
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}
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/**
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* Determine the quality of the property match
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*
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* @param {string|number|undefined|null} textProp
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* @param {string|number|undefined|null} hitProp
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* @param {boolean} expectEnriched
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* @returns {number}
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*/
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function propMatch(textProp, hitProp, expectEnriched) {
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// both missing, but expect to have enriched value in result => BAD
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if (!textProp && !hitProp && expectEnriched) { return 0; }
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// both missing, and no enrichment expected => GOOD
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if (!textProp && !hitProp) { return 1; }
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// text has it, result doesn't => BAD
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if (textProp && !hitProp) { return 0; }
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// text missing, result has it, and enrichment is expected => GOOD
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if (!textProp && hitProp && expectEnriched) { return 1; }
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// text missing, result has it, enrichment not desired => 50/50
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if (!textProp && hitProp) { return 0.5; }
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// both present, values match => GREAT
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if (textProp && hitProp && textProp.toString().toLowerCase() === hitProp.toString().toLowerCase()) { return 1; }
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// ¯\_(ツ)_/¯
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return 0.7;
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}
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/**
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* Check various parts of the parsed text address
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* against the results
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*
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* @param {object} text
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* @param {string|number} [text.number]
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* @param {string} [text.street]
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* @param {string} [text.postalcode]
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* @param {string} [text.state]
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* @param {string} [text.country]
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* @param {object} hit
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* @param {object} [hit.address]
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* @param {string|number} [hit.address.number]
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* @param {string} [hit.address.street]
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* @param {string|number} [hit.zip]
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* @param {string} [hit.admin1_abbr]
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* @param {string} [hit.alpha3]
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* @returns {number}
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*/
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function checkAddress(text, hit) {
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var checkCount = 5;
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var res = 0;
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if (text && text.number && text.street) {
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res += propMatch(text.number, (hit.address ? hit.address.number : null), false);
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res += propMatch(text.street, (hit.address ? hit.address.street : null), false);
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res += propMatch(text.postalcode, (hit.address ? hit.address.zip: null), true);
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res += propMatch(text.state, hit.admin1_abbr, true);
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res += propMatch(text.country, hit.alpha3, true);
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res /= checkCount;
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}
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else {
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res = 1;
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}
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return res;
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}
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/**
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|
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* z-scores have an effective range of -3.00 to +3.00.
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* An average z-score is ZERO.
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* A negative z-score indicates that the item/element is below
|
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* average and a positive z-score means that the item/element
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* in above average. When teachers say they are going to "curve"
|
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|
|
* the test, they do this by computing z-scores for the students' test scores.
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*
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* @param {number} score
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* @param {number} mean
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* @param {number} stdev
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* @returns {number}
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*/
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function computeZScore(score, mean, stdev) {
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if (stdev < 0.01) {
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return 0;
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}
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// because the effective range of z-scores is -3.00 to +3.00
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// add 10 to ensure a positive value, and then divide by 10+3+3
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|
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// to further normalize to %-like result
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return (((score - mean) / (stdev)) + 10) / 16;
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}
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/**
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* Computes standard deviation given an array of values
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*
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* @param {Array} scores
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* @returns {number}
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*/
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function computeStandardDeviation(scores) {
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var stdev = stats.stdev(scores);
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// if stdev is low, just consider it 0
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return (stdev < 0.01) ? 0 : stdev;
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}
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module.exports = setup;
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