/** * Licensed to the Apache Software Foundation (ASF) under one or more * contributor license agreements. See the NOTICE file distributed with * this work for additional information regarding copyright ownership. * The ASF licenses this file to You under the Apache License, Version 2.0 * (the "License"); you may not use this file except in compliance with * the License. You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ package org.apache.mahout.cf.taste.impl.similarity; import org.apache.mahout.cf.taste.common.TasteException; import org.apache.mahout.cf.taste.common.Weighting; import org.apache.mahout.cf.taste.model.DataModel; import org.apache.mahout.cf.taste.similarity.ItemSimilarity; import org.junit.Test; /** <p>Tests {@link EuclideanDistanceSimilarity}.</p> */ public final class EuclideanDistanceSimilarityTest extends SimilarityTestCase { @Test public void testFullCorrelation1() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {3.0, -2.0}, {3.0, -2.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).userSimilarity(1, 2); assertCorrelationEquals(1.0, correlation); } @Test public void testFullCorrelation1Weighted() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {3.0, -2.0}, {3.0, -2.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel, Weighting.WEIGHTED).userSimilarity(1, 2); assertCorrelationEquals(1.0, correlation); } @Test public void testFullCorrelation2() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {3.0, 3.0}, {3.0, 3.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).userSimilarity(1, 2); assertEquals(1.0, correlation, EPSILON); } @Test public void testNoCorrelation1() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {3.0, -2.0}, {-3.0, 2.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).userSimilarity(1, 2); assertCorrelationEquals(0.1639607805437114, correlation); } @Test public void testNoCorrelation1Weighted() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {3.0, -2.0}, {-3.0, 2.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel, Weighting.WEIGHTED).userSimilarity(1, 2); assertCorrelationEquals(0.7213202601812372, correlation); } @Test public void testNoCorrelation2() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {null, 1.0, null}, {null, null, 1.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).userSimilarity(1, 2); assertTrue(Double.isNaN(correlation)); } @Test public void testNoCorrelation3() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {90.0, 80.0, 70.0}, {70.0, 80.0, 90.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).userSimilarity(1, 2); assertCorrelationEquals(0.05770363219029305, correlation); } @Test public void testSimple() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {1.0, 2.0, 3.0}, {2.0, 5.0, 6.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).userSimilarity(1, 2); assertCorrelationEquals(0.2843646522044218, correlation); } @Test public void testSimpleWeighted() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {1.0, 2.0, 3.0}, {2.0, 5.0, 6.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel, Weighting.WEIGHTED).userSimilarity(1, 2); assertCorrelationEquals(0.8210911630511055, correlation); } @Test public void testFullItemCorrelation1() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {3.0, 3.0}, {-2.0, -2.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).itemSimilarity(0, 1); assertCorrelationEquals(1.0, correlation); } @Test public void testFullItemCorrelation2() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {3.0, 3.0}, {3.0, 3.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).itemSimilarity(0, 1); assertEquals(1.0, correlation, EPSILON); } @Test public void testNoItemCorrelation1() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {3.0, -3.0}, {-2.0, 2.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).itemSimilarity(0, 1); assertCorrelationEquals(0.1639607805437114, correlation); } @Test public void testNoItemCorrelation2() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2}, new Double[][] { {null, 1.0, null}, {null, null, 1.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).itemSimilarity(1, 2); assertTrue(Double.isNaN(correlation)); } @Test public void testNoItemCorrelation3() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2, 3}, new Double[][] { {90.0, 70.0}, {80.0, 80.0}, {70.0, 90.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).itemSimilarity(0, 1); assertCorrelationEquals(0.05770363219029305, correlation); } @Test public void testSimpleItem() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2, 3}, new Double[][] { {1.0, 2.0}, {2.0, 5.0}, {3.0, 6.0}, }); double correlation = new EuclideanDistanceSimilarity(dataModel).itemSimilarity(0, 1); assertCorrelationEquals(0.2843646522044218, correlation); } @Test public void testSimpleItemWeighted() throws Exception { DataModel dataModel = getDataModel( new long[] {1, 2, 3}, new Double[][] { {1.0, 2.0}, {2.0, 5.0}, {3.0, 6.0}, }); ItemSimilarity itemSimilarity = new EuclideanDistanceSimilarity(dataModel, Weighting.WEIGHTED); double correlation = itemSimilarity.itemSimilarity(0, 1); assertCorrelationEquals(0.8210911630511055, correlation); } @Test public void testRefresh() throws TasteException { // Make sure this doesn't throw an exception new EuclideanDistanceSimilarity(getDataModel()).refresh(null); } }