HİKÂYE ANLATICISININ YOLU-1-





Üzerine düşündüğüm, tefekküre daldığım bir konu var. Şöyle ki;  HİKÂYE ANLATICILIĞI NEDİR?
 
Her tefekkür bana bu konunun başka bir yönünü açıyor. “Ben” değiştikçe bu yönlerde değişiyor. Keşfettiğim bu hâlleri defterlerime yazıyorum uzun zamandır. Heyecanlarımı, keşiflerimi ve yüksek sesli düşünmelerimi bu alana ilgi duyan diğer insanlara da açsam ne olur acaba diye düşünüyorum öte yandan. Yani yüksek sesle düşünsem, sesime ses gelir belki uzaklardan. Belki benim hiç uğramadığım diyarlardan gelmiş biri bana oraları anlatır. Düşünce aleminin gitmediğim topraklarını getirir bana. Toprağım zenginleşir. Böylece bir MUHABBET başlar belki. Ya da hiçbir şey olmaz. Bilmiyorum. Sadece soruyu soruyorum ve yüksek sesle düşünmeye cesaret ediyorum. Hadi bakalım, hayırlısı :) Öyleyse başlasın yolculuğumuz :)

Hikaye anlatıcılığı; anlatıcı, dinleyici ve hikâye üçgeninde  icra edilen bir sanattır. Bir anlatıcı anlatmak istediği bir hikâyeyi onu dinlemeye gönüllü en az birine anlatmaya başladığında orada hikâye anlatıcılığı sanatı gerçekleşmeye başlar. Anadolu’daki kadim bilgelik bunu gökten düşen üç elma ile çok güzel anlatıyor. Biz anlatıcılar hikâyenin sonunda şöyle diyoruz: “Gökten üç elma düşmüş. Bu elmalardan biri dinleyiciye, biri hikâyeye, biri de anlatıcıya gitsin.” Elmalardan payını alan her bir bileşen bu sanatın gerçekleşmesi için çok önemli. Anlatıcı, anlatacağı hikâyesiyle tek başına olduğunda bu sanat gerçekleşmiyor. Bunun oluşabilmesi için dinleyenin kulaklarına, kalbine, zihnine ve ruhuna ihtiyaç var. Anlatıcı çiftçi gibidir kanımca. Çiftçi o sene hangi bitkiyi ekmek istiyorsa, bitkinin tohumlarını arar ve bulur. En iyi tohumları arar hep. Tohumlar anlatıcının hikâyesidir. Çiftçi tohumun can bulabilmesi için onu ekebileceği toprağa ihtiyaç duyar. İşte bu toprak dinleyicidir. Hikâyeler dinleycinin kulak  ve göz kapısından girer ve ruhunun tarlasına ekilir. Bu tarlaya ekilen tohumlar hayatın bağrında filizlenip, can bulabilir mi? Filizlense bile nasıl bir şeye dönüşür? Bunu anlatıcı bilemez. Yaşamın tohumları dinleyenin ruhunda bir CAN a duracaksa buna ancak hayat karar verir. İşte bu tohumun tarla ile buluşma dansı bir muhabbettir aslında. Çiftçinin tohum ile toprak ile muhabbeti. Anlatıcının hikâye ile, dinleyen ile, kendisi ile, nihâyetinde mutlâk hakikât ile muhabbeti…

Peki nedir bu MUHABBET? Sözcüğün etimolojik anlamına bakalım biraz.
“Arapça ḥbb2 kökünden gelen maḥabbatمحبّة "dost olma, sevme, ahbaplık" sözcüğünden alıntıdır[1].” 

Muhabbet sevgi ile yapılabilecek bir dostluk çemberidir. Anlatma sanatı özü itibariyle MUHABBET sanatıdır. O zaman hikâye anlatmak ve dinlemek ancak sevgi ile yapılabilecek bir eylemdir diyebiliriz. Muhabbet sevgi ve dostluk varsa gerçekleşir. Anlatım sanatı sevginin olduğu yerde yeşerir. Anlatıcı kendini sever, hikâyesini sever, insanı severse bu yolculukta rehber olabilir. Muhabbet edebilir.

Bu; çocukluktan çocukluğa, hafızanın derinlerinde yatan imgeleri uyandıran bir muhabbettir. İmgelerle bağlantılı olan duyguları, düşünceleri ve insan hâllerini uyandıran bir sohbet. Geçmiş ve geleceğin o “an” da bir olduğu, cennetin zamanını yaşadığımız bir muhabbet. Anlatan ve dinleyenin “aynı” hikâyenin dünyasında buluştuğu; hem bir arada olduğu hem de tek başına olduğu bir hâl. Tayyi-mekân ve tayyi zamanı yaşadığımız BİR olma hâli. Yani aynı anda bir çok mekânda ve birçok zamanda olabileceğimiz bir yolculuk. 

Muhabbet edebilmek için kimliklerin ortadan kalkması, ben ve sen ayrımının olmaması gerekir. Kendi iç dünyamız ile dış dünyamız arasında duran kocaman ZANlarımızın ortadan kalkabilmesi de bunun ön koşullarından birisidir. Böylesi bir muhabbet bir şeyleri açıklamaz, bir şeyleri bildirmez, sadece ANLATIR. Zaten bildiğimiz bir şeyleri bize hatırlatır bu anlatı, bizi “oldurur”. Hâlden hâle sokar. Anlatının efsunu da burada gizli kanımca. Bizi; yaşımızdan, dini inancımızdan, siyasi görüşümüzden, etnik kökenimizden ve bize verilmiş veya sonradan oluşturduğumuz tüm kimliklerden arındırarak bir hikâyenin dünyasında buluşturur. Oradaki tek kimliğimiz İNSAN olmamızdır. İnsan varoluşumuzda şu koskoca  evrenin orta yerinde durmuş ve bir hikâyede buluşmuş oluruz. 

Peki ama kendimize dair edindiğimiz bu zanlarımızı nasıl ortadan kaldıracağız? Ben cesurum, ben güzelim, ben içime kapanık biriyim, ben aslında o kadar da güzel değilim ve sevilmeye değer değilim, bakın ne kadar iyi anlatıyorum değil mi? Yok yok ben aslında anlatamıyorum. Ben bu iş için doğmuşum. Ooo şurdaki dinleyici bana öyle bir bakıyor ki, galiba bana aşık oldu. Ben insanların gözüne bakamam. Ben hayal kuramam. Böyle uzayıp giden bir liste bu. Hep dışarından nasıl göründüğümüzle ilgilenen, hep toplumdaki yerini sağlamlaştırmaya çalışan bir ses. Benim kendi iç alemlerimden çok iyi tanıdığım bir ses.  Öte yandan bu ses bir “dert” ise, bana Şah Hatayi’nin o güzel ifadesini hatırlatan bir dert. “Bir derdim var bin dermana değişmem.” Bana rehber olan bu ses şu soruyu da sordurtuyor. Hepimizin kulağına sürekli bir şeyler fısıldayan bu ses ne zaman susar? Ki insanlarla "gerçekten" bulaşabileyim?

Çocukları izleyelim bir vakit. Onları gözlemleyelim. Böylece  görürüz ki onlarda bu zanlar gelişmemiştir. Nasılsa öyledirler. Varoluşlarında bir yarılma söz konusu değildir onların. Barışıktırlar. Nasılsa öyledirler ve bu da böyle güzeldir. 2 dakika önce tanıştığı bir çocukla oyun oynamaya başlar, güler, koşar ve kendilerini birlikte yere atarlar. An’ın çocuğudur onlar. An’ın varoluşunda yaşarlar. Anlatıcı da an’ın çocuğu olabildiğinde zanlarından kurtulur. 

Ne güzel söylemiş Yunus Emre : “Çekil aradan, kalsın yaradan.” Aradan çekilen ego, aradan çekilen zanlar bizi çocukluk cennetimize ulaştırır. Nasıl ki anlatıcı bir rehberdir, kendisi aradan çekildiğinde dinleyicisi de ona teslim olur. Onun zanları da aradan çekilmeye başlar. Anlatıcı kendi hallerini yayar atmosfere. Heyecanlı ise dinleyicisi de heyecanlanır, nefesi sıkışmışsa dinleyici de onunla birlikte sıkışır, rahatsa, aradan çekilmişse ve çocukluğun krallığında gezinebiliyorsa dinleyici de onunla birlikte bu krallıkta yolculuğa çıkar. Bilim dünyası bunu ayna nöronları ile açıklıyor. Çok merak edenler google amcaya ayna nöronlarını sorabilirler :)

Nihayetinde geldiğim yer şu oluyor. Hikâye anlatıcısının yolu çocukluk cennetinden geçiyor.Kanımca  cennet bahçesini yeniden keşfetmemiş bir anlatıcı AN’ın çocuğu olamıyor ve hikayesini hissederek, eğlenerek ve etkileyici bir şekilde anlatamıyor. Peki ama neden? Bu konu üzerine bir sonraki yazımda yüksek sesle düşüneyim…











[1] http://www.etimolojiturkce.com/kelime/muhabbet

Karamsar









Ben seldim durulmadan  gittiğim yeri bilmeden aktığım,

Sen settin  en olmadık yerde yüreğime bentler attığın

Tırnaklarımı batırsamda bağrına izim kalmadı

 Gezinsemde sevda çöllerinde   tozum kalmadı

 Akıtsamda uğrunda gözyaşımı, toprağın bile ıslanmadı

 Ben bağlandıkça sana sarmaşıklar dolandı  elime ayağıma,
 ey hayat

 Ayrık otu gibi dolanmak zorunda kaldım, kendine hayrı olmayan virane duvarlara...









Statistical Reform.....or Safe-harbor Treadmill Science?

We have recently commented on the flap in statistics circles about the misleading use of significance test results (p-values) rather than a more complete and forthright presentation of the nature of the results and their importance (three posts, starting here).  There has been a lot of criticism of what boils down to misrepresentative headlines publicizing what are in essence very minor results.  The American Statistical Association recently published a statement about this, urging clearer presentation of results.  But one may ask about this and the practice in general. Our recent set of posts discussed the science.  But what about the science politics in all of this?

The ASA is a trade organization whose job it is, in essence, to advance the cause and use of statistical approaches in science.  The statistics industry is not a trivial one.  There are many companies who make and market statistical analytic software.  Then there are the statisticians themselves and their departments and jobs.  So one has to ask is the ASA statement and the other hand-wringing sincere and profound or, or to what extent, is this a vested interest protecting its interests?  Is it a matter of finding a safe harbor in a storm?

Statistical analysis can be very appropriate and sophisticated in science, but it is also easily mis- or over-applied.  Without it, it's fair to say that many academic and applied fields would be in deep trouble; sociopolitical sciences and many biomedical sciences as well fall into this category.  Without statistical methods to compare and contrast sampled groups, these areas rest on rather weak theory.  Statistical 'significance' can be used to mask what is really low level informativeness or low importance under a patina of very high quantitative sophistication.  Causation is the object of science, but statistical methods too often do little more than describe some particular sample.

When a problem arises, as here, there are several possible reactions.  One is to stop and realize that it's time for deeper thinking: that current theory, methods, or approaches are not adequately addressing the questions that are being asked.  Another reaction is to do public hand-wringing and say that what this shows is that our samples have been too small, or our presentations not clear enough, and we'll now reform.  

But if the effects being found are, as is the case in this controversy, typically very weak and hence not very important to society, then the enterprise and the promised reform seem rather hollow. The reform statements have had almost no component that suggests that re-thinking is what's in order. In that sense, what's going on is a stalling tactic, a circling of wagons, or perhaps worse, a manufactured excuse to demand even larger budgets and longer-term studies, that is to demand more--much more--of the same.

The treadmill problem

If that is what happens, it will keep scientists and software outfits and so on, on the same treadmill they've been on, that has led to the problem.  It will also be contrary to good science.  Good science should be forced by its 'negative' results, to re-think its questions. This is, in general, how major discoveries and theoretical transformations have occurred.  But with the corporatization of academic professions, both commercial and in the sense of trade-unions, we have an inertial factor that may actually impede real progress.  Of course, those dependent on the business will vigorously resist or resent such a suggestion. That's normal and can be expected, but it won't help unless a spirited attack on the problems at hand goes beyond more-of-the-same.




Is it going to simulate real new thinking, or mainly just strategized thinking for grants and so on?

So is the public worrying about this a holding action or a strategy? Or will we see real rather than just symbolic, pro forma, reform? The likelihood is not, based on the way things work these days.

There is a real bind here. Everyone depends on the treadmill and keeping it in operation. The labs need their funding and publication treadmills, because staff need jobs and professors need tenure and nice salaries. But if by far most findings in this arena are weak at best, then what journals will want to publish them? They have to publish something and keep their treadmill going. What news media will want to trumpet them, to feed their treadmill? How will professors keep their jobs or research-gear outfits sell their wares?

There is fault here, but it's widespread, a kind of silent conspiracy and not everyone is even aware of it. It's been built up gradually over the past few decades, like the frog in slowly heating water who does't realize he's about to be boiled alive. We wear the chains we've forged in our careers. It's not just a costly matter, and one of understandable careerism. It's a threat to the integrity of the enterprise itself.
We have known many researchers who have said they have to be committed to a genetic point of view because that's what you have to do to get funded, to keep your lab going, to get papers in the major journals or have a prominent influential career. One person applying for a gene mapping study to find even lesser genomic factors than the few that were already well-established said, when it was suggested that rather than find still more genes, perhaps the known genes might now be investigated instead, "But, mapping is what I do!".  Many a conversation I've heard is a quiet boasting about applying for funding for work that's already been done, so one can try something else (that's not being proposed for reviewers to judge).

If this sort of 'soft' dishonesty is part of the game (and if you think it's 'soft'), and yet science depends centrally on honesty, why do we think we can trust what's in the journals?  How many seriously negating details are not reported, or buried in huge 'supplemental' files, or not visible because of intricate data manipulation? Gaming the system undermines the very core of science: its integrity.  Laughing about gaming the system adds insult to injury.  But gaming the system is being taught to graduate students early in their careers (it's called 'grantsmanship').


We have personally encountered this sort of attitude, expressed only in private of course, again and again in the last couple of decades during which big studies and genetic studies have become the standard operating mode in universities, especially biomedical science (it's rife in other areas like space research, too, of course).  


There's no bitter personal axe being ground here.  I've retired, had plenty of funding through the laboratory years, our work was published and recognized.  The problem is of science not personal.  The challenge to understand genetics, development, causation and so forth is manifestly not an easy one, or these issues would not have arisen.  

It's only human, perhaps, given that the last couple of generations of scientists systematically built up an inflated research community, and the industries that serve it, much of which depends on research grant funding, largely at the public trough, with jobs and labs at stake.  The members of the profession know this, but are perhaps too deeply immersed to do anything major to change it, unless some sort of crisis forces that upon us. People well-heeled in the system don't like these thoughts being expressed, but all but the proverbial 1%-ers, cruising along just fine in elite schools with political clout and resources, know there's a problem and know they dare not say too much about it.


The statistical issues are not the cause.  The problem is a combination of the complexity of biological organisms as they have evolved, and the simplicity of human desires to understand (and not to get disease).  We are pressured not just to understand, but to translate that into dramatically better public and individual health.  Sometimes it works very well, but we naturally press the boundaries, as science should.  But in our current system we can't afford to be patient.  So, we're on a treadmill, but it's largely a treadmill of our own making.

Hayallerim



Hayallerim vardı  
Öyle çokta abartılı değil, 
bir sevdiceğim 
birde  gülücüklerimiz olacaktı.
Ama Öyle olsun deyince olmuyor işte 
hadi yağmur yağsında altında koşalım 
bir ağaca kadar sen kovala beni  
koşarken saçlarım savrulsun 
 fularım uçuşsun kalbim güm güm atsın 
sonra   tam ağaca dayandığımda yakala beni 
ayağımı yerden kes,

Hayallerim gerçeğe dönüşsün...




Happy Easter!


Happy Easter everyone!
It's very hard in our modern world when daily news bulletins tell us of war and death and cruelty to remember that there is so much good in the world too; everywhere people are doing little random acts of kindness towards others. Even the smallest act of kindness can be enough to plant the seed of hope in someone in need.
xxx

Komşunun horozu beni gagaladı


Canavar horozumuz:))


Halen kendime gülmekteyim, Tuhaf bir günümdeyim sabahın körü zannederken saatlerin ileri alınmış olmasından ve gece yarılarına kadar filmdi,sohbetti derken  geç yatmaktan dolayı benim sabah körü dediğim, alt kata taşınmaya çalışan komşumun akşam oluyor dediği bir vakit . Kadıncağız yerleşmeye uğraşıyor onun için zaman önemli,  eşi hastanede yatıyormuş ameliyat olacakmış, bir arkadaşı gelmiş eve çekyatları  kapılardan geçiremiyorlarmış dan dunn bir sesler   ee olmayınca kavgada cabası dır dır kadın kavgasıda bir komik ben üst kattan şiştim artık...
 Kuğunun el atması lazım indim alt kata   çekyatı   olduğu gibi  kapıdan geçirmeye çalışıyorlar  ben çok bilmiş edalarla sanki nakliyeciydim önceden ''aa olmaz bu böyle durun açalım  yan çevirelim'' dedim  öylede oldu.  Onlar üç saat uğraşmış hep duvarlar kazınmış kadın bir sevindi bir sevindi  üç tavuk birde horozu var dün bahçeye  küçük bir kümes yaptılar,   ''kahvaltı etmediysen git kümesten kendine yumurta al'' dedi
ben bir sevindim   aslında evde yumurta var ama  folluktan tazecik yumurta almanın zevkini tadacaktım heee tattım    kadın bana ''kümese girince içeriden kapa kaçmasın tavuklar'' dedi kapamaz olaydım horoz, horoz değil canavar  bir taruza geçti  savaşta mübarek  ben cırlıyorum  tekmeledim ki bende iyi dövdüm onu (yalannn) yetişti hemen komşu kurtardı beni:)) saç baş her şey dağıldı bende ayaklarımda bir sürü çürük oluştu   küçük bir horoz ne yaparki demeyin   üzerimde sarı eşofmanlarım vardı hep kan içinde olmuş umarım çıkar hemen suya bastım hem ayaklarıyla hem gagasıyla saldırdı hain horoz beni haremine alamadı:)))  Meğerse horoz yabancı ayırıyormuş kadına bir şey yapmıyormuş  ben kadının söylemesine fırsat vermeden atladım sanırım kümese:) daha öncede küçük bir çocuğu yaralamış hemde ciddi bir biçimde  canavar horoz. kadın horoza diyor ki ''bu son bir daha saldırırsan birine seni yeni aldığım düdüklüyle tanıştıracağım'':))








Kaybolurdum



O kadar uzak 

O kadar yakındık ki 

Bir kelime de buluşurduk seninle

İki ayrı hece olarak 

Kokun burnum da 

O kadar tam 

O kadar yarım 

Gözlerinin derinliğinde kaybolurdum.


Böbrek!


Bu işte bir terslik var bazıları hafta içi hastalanır işe gitmez ben hafta sonları hastalanıp dışarıya çıkamamam 
 Alışverişi abartıp  çok Harcarım diye beynim kendi kendini hastamı yapıyor?  Bilemiyorum ama bu gün böbreklerim çok ağrıyor .
Hani ''öpünce geçer'' derler ya  böbreklerimi öper mi siniz?


İnsanın neresi ağrıyorsa  canı orada atıyor sanki!





Herkesi hayata bağlayan bir şeyleri vardır <3

Mavi kelebeklerdik biz





 Beynimdeki dehlizlerde  kayboluyorum

Siyah gölgelerde uçuşan  mavi kelebeklerdik

Üstümüze yağan katrana aldırış etmezdik

kaç geceye sığdırabilirim ki seni

böyle severken kaç heceye sığdırabilirim

Aklım ermiyor sensizliğe, sessizliğin bile kahrı çekiliyor

sensizlik  ağır geliyor.


Özlemek çok zormuş




Çok zormuş , uzaktaki sevdiğinin  söyleyeceği kelimeyi bile bile   sormak ,nasılsın ? demek...
Sana söylediği İyiyim kelimesine inanmayı istemek , inanmak zorunda kalmak ,üstelik iyi olmadığını bile bile...

Çok zormuş  aynı anda defalarca karşılıklı bu yalanı söylemek.
 Çok özlediğin halde  onunda burnunun direği sızlar diye  özlediğini söyleyememek , hıçkıra hıçkıra ağlarken o da  hissetmiş çesine  seni aradığında  ,titreyen sesini  anlamasın diye  saçma bir konu bulup kahkahalar atmak  çok zormuş.
 Özlemek çok zormuş...
 Gece zihnin  dua ile uyku arasında gidip gelirken  göz yaşlarının yastığını ıslatması çok zormuş ...


 

Playing the Big Fiddle while Rome burns?

We've seemed to have forgotten the trust-busting era that was necessary to control monopolistic acquisition of resources.  That was over a century ago, and now we're again allowing already huge companies to merge and coalesce.  It's rationalized in various ways, naturally, by those on the gain.  It's the spirit and the power structure of our times, for whatever reason.  Maybe that explains why the same thing is happening in science as universities coo over their adoption of 'the business model'.

We're inundated in jargonized ways of advertising to co-opt research resources, with our  'omics' and 'Big Data' labeling.  Like it or not, this is how the system is working in our media and self-promotional age.  One is tempted to say that, as with old Nero, it may take a catastrophic fire to force us to change.  Unfortunately, that imagery is apparently quite wrong.  There were no fiddles in Nero's time, and if he did anything about the fire it was to help sponsor various relief efforts for those harmed by it.  But whatever imagery you want, our current obsession with scaling up to find more and more that explains less and less is obvious. Every generation has its resource competition games, always labeled as for some greater good, and this is how our particular game is played.  But there is a fire starting, and at least some have begun smelling the smoke.

Nero plucks away.  Sourcc: Wikipedia images, public domain
The smolder threatens to become an urgent fire, truly, and not just as a branding exercise.  It is a problem recognized not just by nay-saying cranks like us who object to how money is being burnt to support fiddling with more-of-the-same-not-much-new research.  It is an area where a major application of funds could have enormously positive impact on millions of people, and where causation seems to be quite tractable and understandable enough that you could even find it with a slide rule.

We refer to the serious, perhaps acute, problem with antibiotic resistance.  Different bugs are being discovered to be major threats, or to have evolved to become so, both for us and for the plants and animals who sacrifice their lives to feed us. Normal evolutionary dynamics, complemented with our agricultural practices, our population density and movement, and perhaps other aspects of our changing of local ecologies, is opening space for the spread of new or newly resistant pathogens.

This is a legitimate and perhaps imminent threat of a potentially catastrophic scale.  Such language is not an exercise in self-promotional rhetoric by those warning us of the problem. There is plenty of evidence that epidemic or even potentially pandemic shadows loom.  Ebola, zika, MRSA, persistent evolving malaria, and more should make the point and we have history to show that epidemic catastrophes can be very real indeed.

Addressing this problem rather than a lot of the wheel-spinning, money-burning activities now afoot in the medical sciences would be where properly constrained research warrants public investment.  The problem involves the ecology of the pathogens, our vulnerabilities as hosts, weaknesses in the current science, and problems in the economics of such things as antibacterial drugs or vaccinations.  These problems are tractable, with potentially huge benefit.

For a quick discussion, here is a link to a program by the statistical watchdog BBC Radio program MoreOrLess on antibiotic resistance  Of course there are many other papers and discussions as well.  We're caught between urgently increasing need, and the logistics, ecology, and economics that threaten to make the problem resistant to any easy fixes.

There's plenty of productive science that can be done that is targeted to individual causes that merit our attention, and for which technical solutions of the kind humans are so good at might be possible. We shouldn't wait to take antibiotic resistance seriously, but clearing away the logjam of resource commitments in genetic and epidemiological research to large weakly statistical efforts well into diminishing returns, or research based on rosy promises where we know there are few flowers, will not be easy...but we are in danger of fiddling around detecting risk factors with ever-decreasing effect sizes until the fire spreads to our doorsteps.

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Maundy Thursday, Good Friday, Saturday, Easter Sunday, Bank Holiday Monday:
OPEN 10.30am - 5pm

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Doğu ve Karadeniz 3

   En son Giresun'a doğru yola çıkmış idik. İlk kez gittiğim bu şehir gece vaktine rast geldi. 
   Çarşısında yürüdük, apaçi gençler gibi yol ortasında taburede çay içtik.
(Apaçi gençlerin bir de dansı vardı, onu yapmadık tabi. Müzik hemen çınladı kulağınızda değil mi..)
Dışardan bakınca pek efkarlı bir tablö evet. 

 Velhasıl Giresun, seyyah günlüğümüze, sokaklarında volta attığımız şehir olarak geçti. 


  Geliyoruz Samsun'a. Büyük ve güzel bir şehir. 
  Özellikle sahilini çok seviyorum. Parkları bol, temiz ve özenli bir yer. 
  Rivâyete göre Amazonlar orada yaşamış. Amazing! 



Meşhur Amisos tepesinde kahve keyfi.
 (Ey gülüm bu anların da fotoğrafı vardı da telefonun hafızası yalvaran gözlerle bakınca bazılarını sildim. Konuşmaktan çok fotoğraf için kullanıyorum ben bu aleti. Allah seni inandırsın nazenin blogumu bile telefonda açtım).



  Samsun polisevi deniz kenarında. Sabah denize vuran güneş ışığıyla terasında kahvaltı pek güzeldi.
  Bu arada biz yatılı kaldığımız her şehirde polisevinde konakladık. Sebebi ise vakt-i zamanında lüks otellere doyduğumdan, (Doymak kelimesini gerçek anlamda kullandım. Zira o kadar para verince hunharca yemeden duramıyor insan), artık tatil felsefemi değiştirdim. Ucuza kal, doya doya gez mantığı favorim. (Bak gene doymak dedim. Amaaan hayat yiyince güzel).


 Sinop'a doğru yola çıkıyoruz. Buram buram deniz kokan bir şehir. Balıkçı tekneleri, ağları... 
   Seyyid İbrahim Bilal Hz. türbesini ziyaret ettik. Tekfurla savaşında başı kesiliyor ve kesik başıyla defnedildiği yere kadar gelince tekfur şoklar içinde hata ettiğini anlayıp, ölünce onun türbesinin eşiğine gömülmeyi, gelenlerin ona basıp geçmesini ve böylece affedilmesini istiyor. 
  Dediği yere gömülüyor. İşte neler neler olmuş azizim, biz bir markete gitmeye üşeniyoruz...




"Gölge etme başka ihsan istemem" diyen Diyojen'in heykeli de burada. 


   Kastamonu var sırada. Sebepsiz sevdiğim şehirlerden. 
(Benim öyle sebepsiz sevmelerim olur.) 
Samimi, tarihi, güvercinli bir şehir. 
  Aşıklı Sultan türbesi ile meşhur.  Önceki gelişimde ayakları görünüyordu. Şimdi kapatmışlar. 
  Cesedi çürümemiş bir Allah dostu mu, mumyalanmış bir naaş mı bilemiyorum.          Çeşitli rivâyetler varmış. Çıkan bir yangını mezardan ayağı ile söndürmüş yahut bir komutanmış, mezarında yangın olduğunu rüya ile haber vermiş yahut bir devlet büyüğü olduğundan mumyalanma geleneği ile saklanmış... İşte Allah bilir gayrı. 


 Dönüşte Boyabat'ta kebap molası. Merkezden uzakta, dere kenarında şirin bir mekandı. Kebap güzeldi de pilavı da çok eyiydi. Aklımda kalan hoş bir aroması vardı.




  İşte bir yiye yiye Anadolu turunun daha sonuna geldik. 
  Gündüz vakti çıktığımız geziden gece yarısı eve dönüş, çılgınlar gibi aldığımız peynir yığınlarıyla yüzleşme, bakır kaplarla pazara dönen mutfak, basım basım bastıran uykuya yenik düşüş ve tatlı rüyalar...


  Gezmeler, görmeler, keyifler devam ediyor. İnşallah paylaşımlar da devam edecek. 

  Ben bir çay daha alayım. Kalk sen de bir çay koy azizim...

♥ ♥ ♥ 






The statistics of Promissory Science. Part II: The problem may be much deeper than acknowledged

Yesterday, I discussed current issues related to statistical studies of things like genetic or other disease risk factors.  Recent discussion has criticized the misuse of statistical methods, including a statement on p-values by the American Statistical Association.  As many have said, the over-reliance on p-values can give a misleading sense that significance means importance of a tested risk factor.  Many touted claims are not replicated in subsequent studies, and analysis has shown this may preferentially apply to the 'major' journals.  Critics have suggested that p-values not be reported at all, or only if other information like confidence intervals (CIs) and risk factor effect sizes be included (I would say prominently included). Strict adherence will likely undermine what even expensive major studies can claim to have found, and it will become clear that many purported genetic, dietary, etc., risk factors are trivial, unimportant, or largely uninformative.

However, today I want to go farther, and question whether even making these correctives doesn't go far enough, and would perhaps serve as a convenient smokescreen for far more serious implications of the same issue. There is reason to believe the problem with statistical studies is more fundamental and broad than has been acknowledged.

Is reporting p-values really the problem?
Yesterday I said that statistical inference is only as good as the correspondence between the mathematical assumptions of the methods and what is being tested in the real world.  I think the issues at stake rest on a deep disparity between them.  Worse, we don't and often cannot know which assumptions are violated, or how seriously.  We can make guesses and do all auxiliary tests and the like, but as decades of experience in the social, behavioral, biomedical, epidemiological, and even evolutionary and ecological worlds show us, we typically have no serious way to check these things.

The problem is not just that significance is not the same as importance. A somewhat different problem with standard p-value cutoff criteria is that many of the studies in question involve many test variables, such as complex epidemiological investigations based on long questionnaires, or genomewide association studies (GWAS) of disease. Normally, p=0.05 means that by chance one test in 20 will seem to be significant, even if there's nothing causal going on in the data (e.g., if no genetic variant actually contributes to the trait).  If you do hundreds or even many thousands of 0.05 tests (e.g., of sequence variants across the genome), even if some of the variables really are causative, you'll get so many false positive results that follow-up will be impossible.  A standard way to avoid that is to correct for multiple testing by using only p-values that would be achieved by chance only once in 20 times of doing a whole multivariable (e.g., whole genome) scan.  That is a good, conservative approach, but means that to avoid a litter of weak, false positives, you only claim those 'hits' that pass that standard.

You know you're only accounting for a fraction of the truly causal elements you're searching for, but they're the litter of weakly associated variables that you're willing to ignore to identify the mostly likely true ones.  This is good conservative science, but if your problem is to understand the beach, you are forced to ignore all the sand, though you know it's there.  The beach cannot really be understood by noting its few detectable big stones.

Sandy beach; Wikipedia, Lewis Clark

But even this sensible play-it-conservative strategy has deeper problems.

How 'accurate' are even these preferred estimates?
The metrics like CIs and effect sizes that critics are properly insisting be (clearly) presented along with or instead of p-values face exactly the same issues as the p-value: the degree to which what is modeled fits the underlying mathematical assumptions on which test statistics rest.

To illustrate this point, the Pythagorean Theorem in plane geometry applies exactly and universally to right triangles. But in the real world there are no right triangles!  There are approximations to right triangles, and the value of the Theorem is that the more carefully we construct our triangle the closer the square of the hypotenuse is to the sum of the squares of the other sides.  If your result doesn't fit, then you know something is wrong and you have ideas of what to check (e.g., you might be on a curved surface).

Right triangle; Wikipedia

In our statistical study case, knowing an estimated effect size and how unusual it is seems to be meaningful, but we should ask how accurate these estimates are.  But that question often has almost no testable meaning: accurate relative to what?  If we were testing a truth derived from a rigorous causal theory, we could ask by how many decimal places our answers differ from that truth.  We could replicate samples and increase accuracy, because the signal to noise ratio would systematically improve.  Were that to fail, we would know something was amiss, in our theory or our instrumentation, and have ideas how to find out what that was.  But we are far, indeed unknowably far, from that situation.  That is because we don't have such an externally derived theory, no analog to the Pythagorean Theorem, in important areas where statistical study techniques are being used.

In the absence of adequate theory, we have to concoct a kind of data that rests almost entirely on internal comparison to reveal whether 'something' of interest (often that we don't or cannot specify) is going on.  We compare data such as cases vs controls, which forces us to make statistical assumptions such as that, other than (say) exposure to coffee, our sample of diseased vs normal subjects differ only in their coffee consumption, or that the distribution of other variation in unmeasured variables is random with regard to coffee consumption among our cases and controls subjects. This is one reason, for example, that even statistically significant correlation does not imply causation or importance. The underlying, often unstated assumptions are often impossible to evaluate. The same problem relates to replicability: for example, in genetics, you can't assume that some other population is the same as the population you first studied.   Failure to replicate in this situation does not undermine a first positive study.  For example, a result of a genetic study in Finland cannot be replicated properly elsewhere because there's only one Finland!  Even another study sample within Finland won't necessarily replicate the original sample.  In my opinion, the need for internally based comparison is the core problem, and a major reason why theory-poor fields often do so poorly.

The problem is subtle
When we compare cases and controls and insist on a study-wide 5% significance level to avoid a slew of false-positive associations, we know we're being conservative as described above, but at least those variables that do pass the adjusted test criterion are really causal with their effect strengths accurately estimated.  Right?  No!

When you do gobs of tests, some very weak causal factor may by good luck pass your test. But of those many contributing causal factors, the estimated effect size of the lucky one that passes the conservative test is something of a fluke.  The estimated effect size may well be inflated, as experience in follow-up studies often or even typically shows.

In this sense it's not just p-values that are the problem, and providing ancillary values like CIs and effect sizes in study reports is something of a false pretense of openness, because all of these values are vulnerable to similar problems.  The promise to require these other data is a stopgap, or even a strategy to avoid adequate scrutiny of the statistical inference enterprise itself.

It is nobody's fault if we don't have adequate theory.  The fault, dear Brutus, is in ourselves, for using Promissory Science, and feigning far deeper knowledge than we actually have.  We do that rather than come clean about the seriousness of the problems.  Perhaps we are reaching a point where the let-down from over-claiming is so common that the secret can't be kept in the bag, and the paying public may get restless.  Leaking out a few bits of recognition and promising reform is very different from letting all it all out and facing the problem bluntly and directly.  The core problem is not whether a reported association is strong or meaningful, but, more importantly, that we don't know or know how to know.

This can be seen in a different way.   If all studies including negative ones were reported in the literature, then it would be only right that the major journals should carry those findings that are most likely true, positive, and important.  That's the actionable knowledge we want, and a top journal is where the most important results should appear.  But the first occurrence of a finding, even if it turns out later to be a lucky fluke, is after all a new finding!  So shouldn't investigators report it, even though lots of other similar studies haven't yet been done?  That could take many years or, as in the example of Finnish studies, be impossible.  We should expect negative results should be far more numerous and less interesting in themselves, if we just tested every variable we could think of willy-nilly, but in fact we usually have at least some reason to look, so it is far from clear what fraction of negative results would undermine the traditional way of doing business.  Should we wait for years before publishing anything? That's not realistic.

If the big-name journals are still seen as the place to publish, and their every press conference and issue announcement is covered by the splashy press, why should they change?  Investigators may feel that if they don't stretch things to get into these journals, or just publish negative results, they'll be thought to have wasted their time or done poorly designed studies.  Besides normal human vanity, the risk is that they will not be able to get grants or tenure.  That feeling is the fault of the research, reputation, university, and granting systems, not the investigator.  Everyone knows the game we're playing. As it is, investigators and their labs have champagne celebrations when they get a paper in one of these journals, like winning a yacht race, which is a reflection of what one could call the bourgeois nature of the profession these days.

How serious is the problem?  Is it appropriate to characterize what's going on as fraud, hoax, or silent conspiracy?  Probably in some senses yes; at least there is certainly culpability among those who do understand the epistemological nature of statistics and their application.  Plow ahead anyway is not a legitimate response to fundamental problems.

When reality is closely enough approximated by statistical assumptions, causation can be identified, and we don't need to worry about the details.  Many biomedical and genetic, and probably even some sociological problems are like that.  The methods work very well in those cases.  But this doesn't gainsay the accusation that there is widespread over-claiming taking place and that the problem is a deep lack of sufficient theoretical understanding of our fields of interest, and a rush to do more of the same year after year.

It's all understandable, but it needs fixing.  To be properly addressed, an entrenched problem requires more criticism even than this one has been getting recently.  Until better approaches come along, we will continue wasting a lot of money in the rather socialistic support of research establishments that keep on doing science that has well-known problems.

Or maybe the problem isn't the statistics, after all?
The world really does, after all, seem to involve causation and at its basis seems to be law-like. There is truth to be discovered.  We know this because when causation is simple or strong enough to be really important, anyone can find it, so to speak, without big samples or costly gear and software. Under those conditions, numerous details that modify the effect are minor by comparison to the major signals.  Hundreds or even thousands of clear, mainly single-gene based disorders are known, for example.  What is needed is remediation, hard-core engineering to do something about the known causation.

However, these are not the areas where the p-value and related problems have arisen.  That happens when very large and SASsy studies seem to be needed, and the reason is that there causal factors are weak and/or so complex.  Along with trying to root out misrepresentation and failure to report the truth adequately, we should ask whether, perhaps, the results showing frustrating complexity are correct.

Maybe there is not a need for better theory after all.  In a sense the defining aspect of life is that it evolves not by the application of external forces as in physics, but by internal comparison--which is just what survey methods assess.  Life is the result of billions of years of differential reproduction, by chance and various forms of selection--that is, continual relative comparison by local natural circumstances.  'Differential' is the key word here.  It is the relative success among peers today that determines the genomes and their effects that will be here tomorrow.  In a way, in effect and if often unwittingly and for lack of better ideas, that's just the sort of comparison made in statistical studies.

From that point of view, the problem is that we don't want to face up to the resulting truth, which is that a plethora of changeable, individually trivial causal factors is what we find because that's what exists.  That we don't like that, don't report it cleanly, and want strong individual causation is our problem, not Nature's.

Dua zinciri



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Rare Disease Day and the promises of personalized medicine

O ur daughter Ellen wrote the post that I republish below 3 years ago, and we've reposted it in commemoration of Rare Disease Day, Febru...