In this work we study the validity of the so-called curse of dimensionality for indexing of databases for similarity search. We perform an asymptotic analysis, with a test model based on a sequence of metric spaces $(\Omega_d)$ from which we pick datasets $X_d$ in an i.i.d. fashion. We call the subscript $d$ the dimension of the space $\Omega_d$ (e.g. for $\mathbb{R}^d$ the dimension is just the usual one) and we allow the size of the dataset $n=n_d$ to be such that $d$ is superlogarithmic but subpolynomial in $n$. We study the asymptotic performance of pivot-based indexing schemes where the number of pivots is $o(n/d)$. We pick the relatively simple cost model of similarity search where we count each distance calculation as a single comput...
This paper presents a data structure based on Sparse Spatial Selection (SSS) for similarity searchin...
This paper presents a data structure based on Sparse Spatial Selection (SSS) for similarity searchin...
Similarity search using metric indexing techniques is largely a solved problem in low-dimensional sp...
In this work we study the validity of the so-called curse of dimensionality for indexing of database...
Abstract. Data structures for similarity search are commonly evalu-ated on data in vector spaces, bu...
To enable efficient similarity search in large databases, many indexing techniques use a linear tran...
AbstractDistance-based indexing exploits only the triangle inequality to answer similarity queries i...
The metric search paradigm has been to this day successfully applied to several real-world problems,...
The metric search paradigm has been to this day successfully applied to several real-world problems,...
This work is an attempt at exploring distances, in the context of Similarity Search (SS), where an a...
none2The metric search paradigm has been to this day successfully applied to several real-world prob...
Abstract—Metric-space indexing is a general method for similarity queries of complex data. The quali...
Similarity search usually encounters a serious problem in the high-dimensional space, known as the "...
Similarity search using metric indexing techniques is largely a solved problem in low-dimensional sp...
Similarity search using metric indexing techniques is largely a solved problem in low-dimensional sp...
This paper presents a data structure based on Sparse Spatial Selection (SSS) for similarity searchin...
This paper presents a data structure based on Sparse Spatial Selection (SSS) for similarity searchin...
Similarity search using metric indexing techniques is largely a solved problem in low-dimensional sp...
In this work we study the validity of the so-called curse of dimensionality for indexing of database...
Abstract. Data structures for similarity search are commonly evalu-ated on data in vector spaces, bu...
To enable efficient similarity search in large databases, many indexing techniques use a linear tran...
AbstractDistance-based indexing exploits only the triangle inequality to answer similarity queries i...
The metric search paradigm has been to this day successfully applied to several real-world problems,...
The metric search paradigm has been to this day successfully applied to several real-world problems,...
This work is an attempt at exploring distances, in the context of Similarity Search (SS), where an a...
none2The metric search paradigm has been to this day successfully applied to several real-world prob...
Abstract—Metric-space indexing is a general method for similarity queries of complex data. The quali...
Similarity search usually encounters a serious problem in the high-dimensional space, known as the "...
Similarity search using metric indexing techniques is largely a solved problem in low-dimensional sp...
Similarity search using metric indexing techniques is largely a solved problem in low-dimensional sp...
This paper presents a data structure based on Sparse Spatial Selection (SSS) for similarity searchin...
This paper presents a data structure based on Sparse Spatial Selection (SSS) for similarity searchin...
Similarity search using metric indexing techniques is largely a solved problem in low-dimensional sp...