Example #1
0
        public void Train(IUserItemRelation data)
        {
            var deviationsMatrix = data.Secondary.Select(item => CreateVector(item, data))
                                   .CrossPairwise((vector1, vector2) => ComputeDeviations(vector1, vector2))
                                   .ToMatrix(t => t.Item1, t => t.Item2, t => t.Item3);

            throw new NotImplementedException();
        }
Example #2
0
        private NamedVector <NamedValue> CreateVector(Item item, IUserItemRelation data)
        {
            var associated = data.Association
                             .Where(jr => item.Name.Equals(jr.Second.Name));

            return(new NamedVector <NamedValue>(item.Name,
                                                associated.Select(jr => new NamedValue(jr.First.Name, jr.Value))
                                                .ToList()));
        }
        public Matrix <double> BuildSimilarityMatrix(IUserItemRelation data)
        {
            var userAverages = data.Primary.ToDictionary(u => u.Name,
                                                         u => data.Association.GetRecords(u).Average(jr => jr.Value));

            return(data.Secondary.Select(item => CreateVector(item, data))
                   .CrossPairwise((vector1, vector2) => ComputeSimilarity(vector1, vector2, userAverages))
                   .ToMatrix());
        }
        public void Train(IUserItemRelation data)
        {
            _correlationLookup = ConvertToVectors(data)
                                 .CrossPairwise((vector1, vector2) => _algorithm.ComputeCorrelation(vector1, vector2))
                                 .ToCorrelationLookup();

            _bundledItems = data.Primary.Select(u => CreateBundledItem(u, data.Association))
                            .ToDictionary(b => b.Item.Name);

            IsTrained = true;
        }
 public void Train(IUserItemRelation data)
 {
     _items            = data.Secondary.ToDictionary(i => i.Name);
     _similarityMatrix = _algorithm.BuildSimilarityMatrix(data);
     IsTrained         = true;
 }