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Systems and Users in Intelligent Information Retrieval: Who does What? prof. dr. L. Schomaker I 2 RP Symposium 3/2/2003, Delft
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I 2 RP 2 Overview Who? Intelligent Information Retrieval and Presentation ( I 2 RP): The Challenge The future I 2 RP
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3 Persons & Institutes Supervisors: –prof. Lynda Hardman (CWI) –prof. Jaap van den Herik (UM) –prof. Gerard Kempen/Crit Cremers (UL) –dr. N. Taatgen (RuG) Coordinator –prof. Lambert Schomaker (RuG) I 2 RP
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4 Persons & Institutes (continued…) Researchers: –Stefano Bocconi (oio,CWI) –Yulia Bachvarova (oio,CWI) –Boban Arsenijevic (oio,UL) –Floris Wiesman (postdoc, UM) –Judith Grob (oio,RuG) I 2 RP
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5 Intelligent Information Retrieval and Presentation ( I 2 RP): The Challenge Observations: CPU power is ever increasing, but… “Current systems in Information Retrieval are violating the essential rules for an intelligent dialogue” I 2 RP
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10 A mutually cooperative dialogue? Grice (1975): the rules for a mutually cooperative dialogue are:
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I 2 RP 11 Grice (1975) Maxims of quantity: –Make your contribution as informative as required –Do not make your contribution more informative than required
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I 2 RP 12 Grice (1975) Maxims of quality: –Do not say what you believe to be false –Do not say that for which you lack evidence
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I 2 RP 13 Maxims of Grice (1975) Maxim of relation: –Be relevant
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I 2 RP 14 Maxims of Grice (1975) Maxim of manner: –Avoid obscure expressions –Avoid ambiguity –Be orderly –Be brief
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I 2 RP 15 Example: Quantity “when did Napoleon die?”
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I 2 RP 16 Example: Quantity “when did Napoleon die?” 72800 documents found
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I 2 RP 17 How to design systems that obey the Maxims of Grice? Use Knowledge! Use the User! Use language! Starting point: The “user in context”
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I 2 RP 18 (1) Knowledge Use Knowledge! What Knowledge? Who specifies it? How to relate knowledge from heterogeneous data bases?
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I 2 RP 19 (2) The User Use the User! Will they be motivated? What type of user? Skilled / newbie? What does the user WANT? Can we predict user actions? How to reason like the current user?
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I 2 RP 20 Example: Relevance Feedback in Image Search Machine Learning may give us a free ride on Moore’s Law ( f cpu increases each year)
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I 2 RP 21 Example: Relevance Feedback in Image Search Machine Learning may give us a free ride on Moore’s Law ( f cpu increases each year) But: Pattern classification needs examples (ground truth values) given by users
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I 2 RP 22 Example: Relevance Feedback in Image Search Machine Learning may give us a free ride on Moore’s Law ( f cpu increases each year) But: Pattern classification needs examples (ground truth values) given by users In Information Retrieval, this is implemented as “relevance feedback”, given by the user, on quality of items in a hit list
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Relevance Feedback in Image Search …
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Relevance Feedback in Image Search
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users are lazy, especially if the perceived benefits are low…
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The machine may find structure… (Kohonen self- organized map of scanned handwritten characters)
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The machine may find structure… But human ground truth labels are still necessary!
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I 2 RP 28 … the user … Knowledge on user skill development is essential. What is annoying at start may be easy later (and vice versa). What is the user’s goal? How do users maintain their “goal stack”?
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I 2 RP 29 (3) Language Use language! Can the system parse input sentences? Can the system generate text answers from non-linguistic data and knowledge bases? How to generate a narrative from a sequence of facts?
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I 2 RP 30 Project: Floris Wiesman (UM) “Instance vs Term-based Ontology Mappings” Given two ontologies from the cultural heritage, how can the knowledge be shared? (manual translation? X) Try to find correspondences in naming schemes, as if the mapping problem were an Information Retrieval problem in itself.
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I 2 RP 31 Ontology Mapping (Wiesman) Try to find correspondences in naming schemes, as if the mapping problem were an Information Retrieval problem in itself. Example: Ontology “museum-A”: Document->Book->Author->Name Ontology “library-B”: Document->Book->Writer->Name
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I 2 RP 32 Ontology Mapping (Wiesman POSTER) Try to find correspondences in naming schemes, as if the mapping problem were an Information Retrieval problem in itself. Example: Ontology “museum-A”: Document->Book->Author->Name Ontology “library-B”: Document->Book->Writer->Name
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I 2 RP 33 Projects: Stefano Bocconi (CWI) How to develop discourse models: system response user’s question –Narrative(“Tell me about…”) –Description(“What is …?”) –Explanation(“Why is…?”) –Argument (“Why should …?”) Experimental environment: “Rembrandt’s World” Ontology
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I 2 RP 34 Projects: Stefano Bocconi (CWI) How to develop discourse models: system response user’s question –Narrative(“Tell me about…”) –Description(“What is …?”) –Explanation(“Why is…?”) –Argument (“Why should …?”) Experimental environment: “Rembrandt’s World” Ontology POSTER
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I 2 RP 35 Projects: Boban Arsenijevic (UL) How to Parse & Generate using an intermediate semantic processing stage? Input sentence parsing “Aggregate Semantic Material generator Output sentences Goal: explore how different phrasings still pertain to the semantic core
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I 2 RP 36 Projects: Boban Arsenijevic (UL) How to Parse & Generate using an intermediate semantic processing stage? Input sentence parsing “Aggregate Semantic Material generator Output sentences Goal: explore how different phrasings still pertain to the semantic core POSTER + demo: parser/generator for Dutch
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I 2 RP 37 Projects: Judith Grob (RuG) How to develop an active user agent that learns from the user and behaves in a way which is acceptable and useful? Cognitive modeling (ACT-R), skill development and concept learning by humans “Instance-based” learning schemes are a method to find analogies between patterns
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I 2 RP 38 Projects: Judith Grob (RuG) (just started). An initial model concerns the modeling of learning a simple task with a quantitative target variable (“Sugar Factory”) ACT-R appears to be able to mimic human learning and ‘transfer’ A similar goal-oriented task in information retrieval will be developed
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I 2 RP 39 Projects: Judith Grob (RuG) (just started). An initial model concerns the modeling of learning a simple task with a quantitative target variable (“Sugar Factory”) ACT-R appears to be able to mimic human learning and ‘transfer’ A similar goal-oriented task in information retrieval will be developed POSTER
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I 2 RP 40 Future developments Partial overlap between projects is noted and exploited: –“Rembrandt’s World” is a useful example ontology –Goal: interoperability over the network –First: develop bilateral cooperation between partners cooperation yields co-publication and software combination
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I 2 RP 41 Conclusion I 2 RP represents a multi-faceted view on system and user in an information-retrieval context Multi-disciplinarity: CS,AI,Cognition,Language Still: a common ground starts to develop!
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