Presentation is loading. Please wait.

Presentation is loading. Please wait.

Collaborative Information Retrieval - Collaborative Filtering systems - Recommender systems - Information Filtering Why do we need CIR? - IR system augmentation.

Similar presentations


Presentation on theme: "Collaborative Information Retrieval - Collaborative Filtering systems - Recommender systems - Information Filtering Why do we need CIR? - IR system augmentation."— Presentation transcript:

1 Collaborative Information Retrieval - Collaborative Filtering systems - Recommender systems - Information Filtering Why do we need CIR? - IR system augmentation - Filtering Focusing on the user - People-centric view of data - Linking users by interests

2 Recommender Systems Broader term than CF, may not be explicitly collaborating We get recommendations every day Types of recommendations - Implicit - Explicit Properties of recommendations - Identity - Experts Use of recommendations - Aggregation from data - Leveraging naturally occurring factors

3 Recommendation Issues How do you get people to cooperate? How good can the recommendations be? - Find things you’d never find? - Step savings, information navigation Volume of recommendations vs. number of recommendable items? How accurate can the recommendations be? - Initially - Overall - Over time What about changing interests?

4 Social Issues Who controls the sharing? Who controls the controls? “Give to get” systems Anonymity vs. Community - Community of “friends” - People as data points Free riders Logrolling and Over-rating

5 Information Filtering & IR How about filtering, without the collaboration? - Individual preferences - Implicit and Explicit Text is analyzed - Feature extraction - Recall & precision measures Vector space identified Relevance Feedback - Matched with user or rating - Attributes are matched or added to queries

6 Two sides of the same coin? Filtering is removing data, IR is finding data Dynamic datasets Profile-based - preferences Repeated use of the system, long term interests Precision & Recall of profiles, not info? Different needs & motivations Less interactive than (Web) IR?

7 Community Centered CF What is a community? Helping people find new information Mapping community (prefs?) Rating Web pages Recommended Web pages - Measuring recommendation quantity? - Measuring recommendation use Constant status

8 Community CF Community CF “Personal relationships are not necessary” What does this miss? If you knew about the user, would that help with the cold start problem? Advisors & Trust Ratings - Population wide - Advisors - Weighted sum How would an organization use this?

9 Contexts for Implicit Ratings - Who - When - What - How (discovery) Web Browsing RSS Reading Blog posting Newsgroup- listserv use

10 Social Affordance & Implicit How can you not use ratings? Read wear, clicks, dwell time, chatter Not all resources are as identifiable - Granular- Web pages - Items - commercial products Web is a shared informaiton space without much sharing How do incent people to contribute? - Social norms - Rewards

11 Contexts for Explicit Ratings Movies Books (Junk) mail eBay transactions Other content

12 PHOAKS Wider group of people (anyone?) Usenet link mining for Web resources Raters & Users Precision (88%) - belong in category Recall (87%) - rules classify as category What counts as a recommendation? - More than one mention? - Positive & negative? Fair and balanced for a Community How do you rank resources? - Weights - Topics

13 Fab Beyond “black box” content Combining recommendations & content Tastes in the past & future likes Identifies “emerging interests” - Group awareness - Communication (feedback) Profiles of content analysis compared - Users’ own profile can recommend - Relation between users can recommend User profile = multiple interests Content profile = static interest Both may change Items are continually presented to users

14 Future Issues in Collab IR It may be more interesting to find a like mind than a resource recommendation - Social Networking - Ad hoc group discussions Allowing users control over their profile of interests - Over time - Privacy - Difficult to capture interests Working with diverse content or user interests Visualization of recommendations & areas

15 Collaboration How important is it to be able to collaborate? - Add to your own intelligence - Know about other things you don’t know about What are the best scenarios for collaboration for Information Retrieval? - Privacy - Commerce - Consistency

16 Is Filtering a Necessary Evil? What are the Costs of Content Filtering? Do you want filtering? - What kind of filters? - Who should control them? What is the importance of accuracy for filtering? - Metadata - Usage and appropriate content (not just for childern) Sharing filtering?

17 Bonus Work Up to 4 points on your final course average - Size of the project - Quality of project work Individual work Bibliography building & highlight reviews - Collaborative Filtering since 1998 - Information Seeking in Financial Environments - IR & Agents since 1999 IR resources organization & taxonomy


Download ppt "Collaborative Information Retrieval - Collaborative Filtering systems - Recommender systems - Information Filtering Why do we need CIR? - IR system augmentation."

Similar presentations


Ads by Google