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Comments about recent Semantic Gang Podcast
[
Kingsley Uyi Idehen
]
After listening to the latest Semantic Web Gang podcast, I found myself agreeing with some of the points made by Alex Iskold, specifically:
-- Business exploitation of Linked Data on the Web will certainly be driven by the correlation of opportunity costs (which is more than likely what Alex meant by "use cases") associated with the lack of URIs originating from the domain of a given business (Tom Heath: also effectively alluded to this via his BBC and URI land grab anecdotes; same applies Georgi's examples)
-- History is a great tutor, answers to many of today's problems always lie somewhere in plain sight of the past.
Of course, I also believe that Linked Data serves Web Data Integration across the Internet very well too, and the fact that it will be beneficial to businesses in a big way. No individual or organization is an island, I think the Internet and Web have done a good job of demonstrating that thus far :-) We're all data nodes in a Giant Global Graph.
Daniel lewis did shed light on the read-write aspects of the Linked Data Web, which is actually very close to the callout for a Wikipedia for Data. TimBL has been working on this via Tabulator (see Tabulator Editing Screencast), Bengamin Nowack also added similar functionality to ARC, and of course we support the same SPARQL UPDATE into an RDF information resource via the RDF Sink feature of our WebDAV and ODS-Briefcase implementations.
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05/02/2008 21:44 GMT
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Modified:
05/05/2008 20:06 GMT
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In Perpetual Pursuit of Context
[
Kingsley Uyi Idehen
]
I've always been of the opinion that concise value proposition articulation shouldn't be the achilles of the Semantic Web. As the Linked Data wave climbs up the "value Appreciation and Comprehension chain", it's getting clearer by the second that "Context" is a point of confluence for Semantic Web Technologies and easy to comprehend value, from the perspectives of those outside the core community.
In today's primarily Document centric Web, the pursuit of Context is akin to pursuing a mirage in a desert of user generated content. The quest is labor intensive, and you ultimaely end up without water at the end of the pursuit :-)
Listening to the Christine Connor's podcast interview with Talis simply reinforces my strong belief that "Context, Context, Context" is the Semantic Web's equivalent of Real Estate's "Location, Location, Location" (ignore the subprime loans mess for now). The critical thing to note is that you cannot unravel "Context" from existing Web content without incorporating powerful disambiguation technology into an "Entity Extraction" process. Of course, you cannot even consider seriously pursing any entity extraction and disambiguation endeavor without a lookup backbone that exposes "Named Entities" and their relationships to "Subject matter Concepts" (BTW - this is what UMBEL is all about). Thus, when looking at the broad subject of the Semantic Web, we can also look at "Context" as the vital point of confluence for the Data oriented (Linked Data) and the "Linguistic Meaning" oriented perspectives.
I am even inclined to state publicly that "Context" may ultimately be the foundation for 4th "Web Interaction Dimension" where practical use of AI leverages a Linked Data Web substrate en route to exposing new kinds of value :-)
"Context" may also be the focal point of concise value proposition articulation to VCs as in: "My solution offers the ability to discover and exploit "Context" iteratively, at the rate of $X.XX per iteration, across a variety of market segments :-)
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05/02/2008 19:18 GMT
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Modified:
05/03/2008 15:07 GMT
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XTech Talks covering Linked Data
[
Kingsley Uyi Idehen
]
Courtesy a post by Chris Bizer to the LOD community mailing list, here is a list of Linked Data oriented talks at the upcoming XTech 2008 event (also see the XTech 2008 Schedule which is Linked Data friendly). Of course, I am posting this to my Blog Data Space with the sole purpose of adding data to the rapidly growing Giant Global Graph of Linked Data, basically adding to my collection of live Linked Data utility demos :-)
Here is the list:
-
Linked Data Deployment (Daniel Lewis, OpenLink Software)
-
The Programmes Ontology (Tom Scott, BBC and all)
-
SemWebbing the London Gazette (Jeni Tennison, The Stationery Office)
-
Searching, publishing and remixing a Web of Semantic Data (Richard Cyganiak, DERI Galway)
-
Building a Semantic Web Search Engine: Challenges and Solutions (Aidan Hogan, DERI Galway)
- 'That's not what you said yesterday!' - evolving your Web API (Ian Davis, Talis)
-
Representing, indexing and mining scientific data using XML and RDF: Golem and CrystalEye (Andrew Walkingshaw,
University of Cambridge)
For the time challenged (i.e. those unable to view this post using it's permalink / URI as a data source via the OpenLink RDF Browser, Zitgist Data Viewer, DISCO Hyperdata Browser, or Tabulator), the benefits of this post are as follows:
- automatic URI generation for all linked items in this post
- automatic propagation of tags to del.icio.us, Technorati, and PingTheSemanticWeb
- automatic association of formal meanings to my Tags using the MOAT Ontology
- automatic collation and generation of statistical data about my tags using the SCOT Ontology (*missing link is a callout to SCOT Tag Ontology folks to sort the project's home page URL at the very least*)
- explicit typing of my Tags as SKOS Concepts.
Put differently, I cost-effectively contribute to the GGG across all Web interaction dimensions (1.0, 2.0, 3.0) :-)
|
05/02/2008 14:53 GMT
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Modified:
05/05/2008 17:07 GMT
|
SPARQL at WWW 2008
[
Virtuso Data Space Bot
]
SPARQL at WWW 2008
Andy Seaborne and Eric Prud'hommeaux, editors of the SPARQL recommendation, convened a SPARQL birds of a feather session at WWW 2008. The administrative outcome was that implementors could now
experiment with extensions, hopefully keeping each other current about their efforts and that towards the end of 2008, a new W3C working group might begin formalizing the experiences into a new SPARQL spec.
The session drew a good crowd, including many users and developers. The wishes were largely as expected, with a few new ones added. Many of the wishes already had diverse implementations, however most often without interop. I will below give some comments on the main issues discussed.
SPARQL Update - This is likely the most universally agreed upon extension. Implementations exist, largely along the lines of Andy Seaborne's SPARUL spec, which is also likely material for a W3C member submission. The issue is without much controversy; transactions fall outside the scope, which is reasonable enough. With triple stores, we can define things as combinations of inserts and deletes, and isolation we just leave aside. If anything, operating on a transactional platform such as Virtuoso, one wishes to disable transactions for any operations such as bulk loads and long-running inserts and deletes. Transactionality has pretty much no overhead for a few hundred rows, but for a few hundred million rows the cost of locking and rollback is prohibitive. With Virtuoso, we have a row auto-commit mode which we recommend for use with RDF: It commits by itself now and then, optionally keeping a roll forward log, and is transactional enough not to leave half triples around, i.e., inserted in one index but not another.
As far as we are concerned, updating physical triples along the SPARUL lines is pretty much a done deal.
The matter of updating relational data mapped to RDF is a whole other kettle of fish. On this, I should say that RDF has no special virtues for expressing transactions but rather has a special genius for integration. Updating is best left to web service interfaces that use SQL on the inside. Anyway, updating union views, which most mappings will be, is complicated. Besides, for transactions, one usually knows exactly what one wishes to update.
Full Text - Many people expressed a desire for full text access. Here we run into a deplorable confusion with regexps. The closest SPARQL has to full text in its native form is regexps, but these are not really mappable to full text except in rare special cases and I would despair of explaining to an end user what exactly these cases are. So, in principle, some regexps are equivalent to full text but in practice I find it much preferable to keep these entirely separate.
It was noted that what the users want is a text box for search words. This is a front end to the CONTAINS predicate of most SQL implementations. Ours is MS SQL Server compatible and has a SPARQL version called bif:contains. One must still declare which triples one wants indexed for full text, though. This admin overhead seems inevitable, as text indexing is a large overhead and not needed by all applications.
Also, text hits are not boolean; usually they come with a hit score. Thus, a SPARQL extension for this could look like
select * where { ?thing has_description ?d . ?d ftcontains "gizmo" ftand "widget" score ?score . }
This would return all the subjects, descriptions, and scores, from subjects with a has_description property containing widget and gizmo. Extending the basic pattern is better than having the match in a filter, since the match binds a variable.
The XQuery/XPath groups have recently come up with a full-text spec, so I used their style of syntax above. We already have a full-text extension, as do some others. but for standardization, it is probably most appropriate to take the XQuery work as a basis. The XQuery full-text spec is quite complex, but I would expect most uses to get by with a small subset, and the structure seems better thought out, at first glance, than the more ad-hoc implementations in diverse SQLs.
Again, declaring any text index to support the search, as well as its timeliness or transactionality, are best left to implementations.
Federation - This is a tricky matter. ARQ has a SPARQL extension for sending a nested set of triple patterns to a specific end-point. The DARQ project has something more, including a selectivity model for SPARQL.
With federated SQL, life is simpler since after the views are expanded, we have a query where each table is at a known server and has more or less known statistics. Generally, execution plans where as much work as possible is pushed to the remote servers are preferred, and modeling the latencies is not overly hard. With SPARQL, each triple pattern could in principle come from any of the federated servers. Associating a specific end-point to a fragment of the query just passes the problem to the user. It is my guess that this is the best we can do without getting very elaborate, and possibly buggy, end-point content descriptions for routing federated queries.
Having said this, there remains the problem of join order. I suggested that we enhance the protocol by allowing asking an end-point for the query cost for a given SPARQL query. Since they all must have a cost model for optimization, this should not be an impossible request. A time cost and estimated cardinality would be enough. Making statistics available à la DARQ was also discussed. Being able to declare cardinalities expected of a remote end-point is probably necessary anyway, since not all will implement the cost model interface. For standardization, agreeing on what is a proper description of content and cardinality and how fine grained this must be will be so difficult that I would not wait for it. A cost model interface would nicely hide this within the end-point itself.
With Virtuoso, we do not have a federated SPARQL scheme but we could have the ARQ-like service construct. We'd use our own cost model with explicit declarations of cardinalities of the remote data for guessing a join order. Still, this is a bit of work. We'll see.
For practicality, the service construct coupled with join order hints is the best short term bet. Making this pretty enough for standardization is not self-evident, as it requires end-point description and/or cost model hooks for things to stay declarative.
End-point description - This question has been around for a while; I have blogged about it earlier, but we are not really at a point where there would be even rough consensus about an end-point ontology. We should probably do something on our own to demonstrate some application of this, as we host lots of linked open data sets.
SQL equivalence - There were many requests for aggregation, some for subqueries and nesting, expressions in select, negation, existence and so on. I would call these all SQL equivalence. One use case was taking all the teams in the database and for all with over 5 members, add the big_team class and a property for member count.
With Virtuoso, we could write this as --
construct { ?team a big_team . ?team member_count ?ct } from ... where {?team a team . { select ?team2 count (*) as ?ct where { ?m member_of ?team2 } . filter (?team = ?team2 and ? ct > 5) }}
We have pretty much all the SQL equivalence features, as we have been working for some time at translating the TPC-H workload into SPARQL.
The usefulness of these things is uncontested but standardization could be hard as there are subtle questions about variable scope and the like.
Inference - The SPARQL spec does not deal with transitivity or such matters because it is assumed that these are handled by an underlying inference layer. This is however most often not so. There was interest in more fine grained control of inference, for example declaring that just one property in a query would be transitive or that subclasses should be taken into account in only one triple pattern. As far as I am concerned, this is very reasonable, and we even offer extensions for this sort of thing in Virtuoso's SPARQL. This however only makes sense if the inference is done at query time and pattern by pattern. For instance, if forward chaining is used, this no longer makes sense. Specifying that some forward chaining ought to be done at query time is impractical, as the operation can be very large and time consuming and it is the DBA's task to determine what should be stored and for how long, how changes should be propagated, and so on. All these are application dependent and standardizing will be difficult.
Support for RDF features like lists and bags would all fall into the functions an underlying inference layer should perform. These things are of special interest when querying OWL models, for example.
Path expressions - Path expressions were requested by a few people. We have implemented some, as in
?product+?has_supplier+>s_name = "Gizmos, Inc.".
This means that one supplier of product has name "Gizmo, Inc.". This is a nice shorthand but we run into problems if we start supporting repetitive steps, optional steps, and the like.
In conclusion, update, full text, and basic counting and grouping would seem straightforward at this point. Nesting queries, value subqueries, views, and the like should not be too hard if an agreement is reached on scope rules. Inference and federation will probably need more experimentation but a lot can be had already with very simple fine grained control of backward chaining, if such applies, or with explicit end-point references and explicit join order. These are practical but not pretty enough for committee consensus, would be my guess. Anyway, it will be a few months before anything formal will happen.
|
04/30/2008 12:28 GMT
|
Modified:
04/30/2008 13:48 GMT
|
SPARQL at WWW 2008
[
Orri Erling
]
Andy Seaborne and Eric Prud'hommeaux, editors of the SPARQL
recommendation, convened a SPARQL birds of a feather session at WWW
2008. The administrative outcome was that implementors could now
experiement with extensions, hopefully keeping each other current
about their efforts and that towards the end of 2008, a new W3C
working group might begin formalizing the experiences into a new
SPARQL spec.
The session drew a good crowd, including many users and developers.
The wishes were largely as expected, with a few new ones added. Many
of the wishes already had diverse implementations, however most often
without interop. I will below give some comments on the main issues discussed.
- SPARQL Update - This is likely the most universally agreed upon
extension. Implementations exist, largely along the lines of Andy
Seaborne's SPARUL spec, which is also likely material for a W3C
member submission. The issue is without much controverse,
transactions fall outside the scope, which is reasonable enough.
With triple stores, we can define things as combinations of inserts
and deletes and isolation we just leave aside. If anything,
operating on a transactional platform such as Virtuoso, one wishes
to disable transactions for any operations such as bulk loads and
long running inserts and deletes. Transactionality has pretty much
no overhead for a few hundred rows but for a few hundred million
rows the cost of locking and rollback is prohibitive. With
Virtuoso, we have a row autocommit mode which we recommend for use
with RDF: It commits by itself now and then, optionally keeping a roll forward log and is transactional
enough not to leave half triples around,i.e. inserted in one index
but not another.
As far as we are concerned, updating physical triples along the SPARUL lines is pretty much a done deal.
The matter of updating relational data mapped to RDF is a whole other
kettle of fish. On this, I should say that RDF has no special virtues
for expressing transactions but rather has a special genius for
integration. Updating is best left to web service interfaces that use
SQL on the inside. Anyway, updating union views, which most mappings will be, is complicated. Besides, for transactions, one usually knows exactly what one wishes to update.
Full Text - Many people expressed a desire for full text access. Here
we run into a deplorable confusion with regexps. The closest SPARQL
has to full text in its native form is regexps, but these are not
really mappable to full text except in rare special cases and I would
despair of explaining to an end user what exactly these cases are.
So, in principle, some regexps are equivalent to full text but in practice I find it much preferrable to keep these entirely separate.
It was noted that what the users want is a text box for search words.
This is a front end to the CONTAINS predicate of most SQL
implementations. Ours is MS SQL Server compatible and has a SPARQL
version called bif:contains. One must still declare which triples one
wants indexed for full text, though. This admin overhead seems
inevitable, as text indexing is a large overhead and not needed by all
applications.
Also, text hits are not boolean, usually they come with a hit score. Thus, aa SPARQL extension for this could look like
select * where { ?thing has_description ?d . ?d ftcontains "gizmo" ftand "widget" score ?score . }
This would return all the subjects, descriptions and scores from subjects with a has_description property containing widget and gizmo. Extending the basic pattern is better than having the match in a filter, since the match binds a variable.
The XQuery/ XPATH groups have recently come up with a full text spec,
so I used their style of syntax above. We already have a full text
extension, as do some others. but for standardization, it is probably
most appropriate to take the XQuery work as a basis. The XQuery full
text spec is quite complex but I would expect most uses to get by with
a small subset and the structure seems better thought out, at first
glance, than the more ad hoc implementations in diverse SQL's.
Again, declaring any text index to support the search, as well as its timeliness or transactionality, are best left to implementations.
Federation - This is a tricky matter. ARQ has a SPARQL extension for
sending a nested set of triple patterns to a specific end point. The
DARQ project has something more, including a selectivity model for
SPARQL.
With federated SQL, life is simpler since after the views are
expanded, we have a query where each table is at a known server and
has more or less known statistics. Generally, execution plans where as
much work as possible is pushed to the remote servers are preferred
and modeling the latencies is not overly hard. With SPARQL, each
triple pattern could in principle come from any of the federated
servers. Associating a specific end point to a fragment of the query
just passes the problem to the user. It is my guess that this is the
best we can do without getting very elaborate, and possibly buggy, end
point content descriptions for routing federated queries.
Having said this, there remains the problem of join order. I
suggested that we enhance the protocol by allowing asking an end point
for the query cost for a given SPARQL query. Since they all must have
a cost model for optimization, this should not be an imposssible
request. A time cost and estimated cardinality would be enough.
Making statistics available a la DARQ was also discussed. Being able
to declare cardinalities expected of a remote end point is probably
necessary anyway, since not all will implement the cost model
interface. For standardization, agreeing of what is a proper
description of content and cardinality and how fine grained this
must be will be so difficult that I would not wait for it. A cost model interface would nicely hide this within the end point itself.
With Virtuoso, we do not have a federated SPARQL scheme but we could
have the ARQ-like service construct. We'd use our own
cost model with explicit declarations of cardinalities of the remote
data for guessing a join order. Still, this is a bit of work. We'll see.
For practicality, the service construct coupled with join order hints is the best short term bet. Making this pretty enough for standardization is not self-evident, as it requires end point description and/or cost model hooks for things to stay declarative.
- End point description - This question has been around for a while, I
have blogged about it earlier but we are not really at a point where
there would be even rough consensus about an end point ontology. We
should probably do something on our own to demonstrate some
application of this, as we host lots of linked open data sets.
- SQL equivalence - There were many requests for aggregation, some for
subqueries and nesting, expressions in select, negation, existence
and so on. I would call these all SQL equivalence. One use case
was taking all the teams in the database and for all with over 5
members, add the big_team class and a property for member count.
With Virtuoso, we could write this as
construct { ?team a big_team . ?team member_count ?ct } from ... where {?team a team . { select ?team2 count (*) as ?ct where { ?m member_of ?team2 } . filter (?team = ?team2 and ? ct > 5) }}
We have pretty much all the SQL equivalence features, as we have been working for some time at translating the TPC H workload into SPARQL.
The usefulness of these things is uncontested but standardization could be hard as there are subtle questions about variable scope and the like.
- Inference - The SPARQLL spec does not deal with transitivity or such
matters because it is assumed that these are handled by an
underlying inference layer. This is however most often not so.
There was interest in more fine grained control of
inference, for example declaring that just one property in a query
would be transitive or that subclasses should be taken into account
in only one triple pattern. As far as I am concerned, this is very
reasonable and we even offer extensions for this sort of thing in
Virtuoso's SPARQL. This however only makes sense if the inference
is done at query time and pattern by pattern. For instance, if
forward chaining is used, this no longer makes sense. Specifying
that some forward chaining ought to be done at query time is
impractical, as the operation can be very large and time consuming
and it is the dba's task to determine what should be stored and for
how long, how changes should be propagated and so on. All these are application dependent and standardizing will be difficult.
Support for RDF features like lists and bags would all fall under the functions an underlying inference layer should perform. These thiings are of special interest when querying OWL models, for example.
Path expressions - Path expressions were requested by a few people.
We have implemented some, as in ?product+?has_supplier+>s_name =
"Gizmos, Inc.". This means that one supplier of product has name
"Gizmo, Inc.". This is a nice shorthand but we run into problems if
we start supporting repetitive steps, optional steps and the like.
In conclusion, update, full text and basic counting and grouping would
seem straightforward at this point. Nesting queries, value
subqueries, views and the like should not be too hard if an agreement
is reached on scope rules. Inference and federation will probably
need more experimentation but a lot can be had already with very
simple fine grained control of backward chaining, if such applies or
with explicit end point refernces and explicit join order. These are
practical butr not pretty enough for committee consensus, would be my
guess. Anyway, it will be a few months before anything formal will
happen.
|
04/30/2008 15:59 GMT
|
Modified:
04/30/2008 12:28 GMT
|
Linked Data enters state of Evoluation
[
Kingsley Uyi Idehen
]
During a brief chat with Michael Hausenblas about a new Linked Data project he is championing called: LForum, I made a freudian slip, in the form of the typo: Evoluation, which at the time was supposed to have been: Evolution. Anyway, we had a chuckle and realized we were on to something, so I proceeded to formalize the definition:
Evoluation is evolution devoid of the randomness of mutation. A state of being in which it is possible to evaluate and choose evolutionary paths.
Evoluation actually describes where we are today in relation to the World Wide Web; to the Linking Open Data community (LOD), it's taking the path towards becoming a Giant Global Graph of Linked Data; to the Web 2.0 community, it's simply a collection of Web Services and associated APIs; and to many others, it remains an opaque collection of interlinked documents.
The great thing about the Web is that it allows netizens to explore a plethora of paths without adversely affecting the paths of others. That said, controlling one's path may take mutation out of evolution, but we are still left with the requirement to adapt and eventually survive in a competitive environment. Thus, although we can evaluate and choose from the many paths the Web's evolution offers us, the path that delivers the most benefits ultimately dominates. :-)
|
04/29/2008 19:56 GMT
|
Modified:
04/29/2008 16:25 GMT
|
Linked Data and Information Architecture
[
Virtuso Data Space Bot
]
Linked Data and Information Architecture
We had a workshop on Linked Open Data (LOD) last week in Beijing. You can see the papers in the program. The event was a success with plenty of good talks and animated conversation. I will not go into every paper here but will comment a little on the conversation and draw some technology requirements going forward.
Tim Berners-Lee showed a read-write version of Tabulator. This raises the question of updating on the Data Web. The consensus was that one could assert what one wanted in one's own space but that others' spaces would be read-only. What spaces one considered relevant would be the user's or developer's business, as in the document web.
It seems to me that a significant use case of LOD is an open-web situation where the user picks a broad read-only "data wallpaper" or backdrop of assertions, and then uses this combined with a much smaller, local, writable data set. This is certainly the case when editing data for publishing, as in Tim's demo. This will also be the case when developing mesh-ups combining multiple distinct data sets bound together by sets of SameAs assertions, for example. Questions like, "What is the minimum subset of n data sets needed for deriving the result?" will be common. This will also be the case in applications using proprietary data combined with open data.
This means that databases will have to deal with queries that specify large lists of included graphs, all graphs in the store or all graphs with an exclusion list. All this is quite possible but again should be considered when architecting systems for an open linked data web.
"There is data but what can we really do with it? How far can we trust it, and what can we confidently decide based on it?"
As an answer to this question, Zitgist has compiled the UMBEL taxonomy using SKOS. This draws on Wikipedia, Open CYC, Wordnet, and YAGO, hence the acronym WOWY. UMBEL is both a taxononmy and a set of instance data, containing a large set of named entities, including persons, organizations, geopolitical entities, and so forth. By extracting references to this set of named entities from documents and correlating this to the taxonomy, one gets a good idea of what a document (or part thereof) is about.
Kingsley presented this in the Zitgist demo. This is our answer to the criticism about DBpedia having errors in classification. DBpedia, as a bootstrap stage, is about giving names to all things. Subsequent efforts like UMBEL are about refining the relationships.
"Should there be a global URI dictionary?"
There was a talk by Paolo Bouquet about Entity Name System, a a sort of data DNS, with the purpose of associating some description and rough classification to URIs. This would allow discovering URIs for reuse. I'd say that this is good if it can cut down on the SameAs proliferation and if this can be widely distributed and replicated for resilience, à la DNS. On the other hand, it was pointed out that this was not quite in the LOD spirit, where parties would mint their own dereferenceable URIs, in their own domains. We'll see.
"What to do when identity expires?"
Giovanni of Sindice said that a document should be removed from search if it was no longer available. Kingsley pointed out that resilience of reference requires some way to recover data. The data web cannot be less resilient than the document web, an |